M.S (M&6-*0&65) S*21 %*&4 P&3*4-"II A1&/95.5 - III &-4+75-
Dear Students, We welcome you as a student of the Second year M.Sc degree course. This paper deals with the subject BANAL'"I"
material
for
IIIC
this
.
The
paper
learning will
be
supplemented by contact lectures. In this book the first five units deal with Real analysis and the last five units deal with Measure Theory. Learning
through
Education
mode,
the as
you
Distance are
all
aware, involves self learning and self
assess ment and in this regard you are expected to put in disciplined and dedicated effort. As
our
part,
we
assure
guidance and support. With best wishes,
of
our
"'LLAB$" M.Sc., Second Year
P)8-: %II A6)4@;1; III
Unit
1: De fi ni ti on s an d ex is te nc e of Integral, Properties of the
th e
Integral,
In te gr at io n
an d
di ff er en ti at io n,
Integration
of
functions,
Rectifiable
vector
valued curves
(Chapter 6 : Sections 6,1 to 6.23)
Unit 2: Di sc us si on of th e ma in pr ob le m, uniform
convergence,
convergence
and
Uniform continuity,
uniform
convergence
int egr ati on,
uni for m
and
con ver gen ce
and Differentiation, Equi continuous families of functions, The Stone – Wei ers tra ss The ore m (Ch apt er 7: Sections 7.1 to 7.33)
Unit 3: Power series, The exponential and Logarithmic
functions,
The
trigonometric algebraic
Functions,
completeness
The
of
the
Compl ex fiel d, Four ier seri es, The Gamma
function
(Chapter
8:
Sections 8.1 to 8.22)
Unit 4: Linear
Transformations
Di ff er en tia tio n pr in ci pl e
-
–theorem
Th e
Th e
con tr ac tion
in ve rs e
(Chapter
fu nc ti on
9
relevant
sections)
Unit 5: The implicit fu nction theorem – T ra nk
theo re m
Derivatives
he
– Det er min ant s –
of
higher
order
–
Differentiation of integrals (Chapter 9 relevant sections)
Unit 6: Lebesgue
outer
measure –
Measurable sets – Regularity.
Unit 7: Meas ura ble fun cti ons – Bor el and Lebesgue measurability.
Unit 8: Integration
of
non-negative
functions – The general integral – Integration of series
Unit 9: Riemann and Lebesgue integrals – The four derivatives – Continuous non–differentia
ble functions.
Unit 10: Functions of bounded variations – Le bes gu e diff ere nti atio n theo re m – Differentiation
and
integration
–
The Lebesgue set
#-?< B773;:
1.
Principles
of
Mathematical
Analysis by Walter Rudin , Third Edition,
McGraw
International
Student
Hill
,
Edition,
1976 Chapters 6,7,8,9. 2.
Measure Theory and Integration by G. de Barra, Willey Eastern Ltd 2 edition 1991 Chapters 2,3 and 4
SCHEME OF LESSONS
ANALYSIS – III
".
#I#LE
N7
$6< 1
1.1:
Definitions
and
existence
of
the
1 Integral
2
1.2 : Properties of the Integral.
3
1.3 : Integration and differentiation
1.4
:
Integration
of
vector
valued
4 functions
5
1.5 : Rectifiable curves
$6< 2
6
2.1 : Discussion of the main problem
7
2.2: Uniform convergence
8
2. 3: Un if or m co nv er ge nc e an d co nt in ui ty
2.4:
uniform
convergence
and
convergence
and
9 integration
2.5:
uniform
10 Differentiation
11
2.6 : Equ i con tin uou s fam il ies of fun ct ion s
12
2. 7: Th e St on e – We ie rs tr as s Th eo re m
$61< 3
13
3.1: Power series
3. 2:
Th e ex po ne nt ia l an d Lo ga ri th mi c
14 functions
15
3. 3: Th e tr ig on om et ri c Fu nc ti on s
3.4: The algebraic completeness of the 16 Complex field
17
3.5: Fourier series
18
3.6: The Gamma function
$61< 4
19
4.1: Linear Transformations
20
4.2: Differentiation
21
4.3: The contraction principle.
22
4.4: The inverse function theorem
$61< 5
23
5.1: The implicit function theorem
24
5.2: The rank theorem
25
5.3: Determinants
26
5.4: Derivatives of Higher Order
27
5.5: Differentiation of integrals
$NI#-1
$6< "<:=+<=:
Section 1.1 : Definitions and existence of the Integral Section 1.2: Properties of the Integral. Section 1.3 : Integration and differentiation Section
1.4:
Integration
of
vector valued functions Section 1.5 : Rectifiable curves
I6<:7,=+<76
A satis facto ry discu ssion of the main concepts of analysis must be based on an accurately defined number
concept. In this unit we discuss the concept of Riemann-Stieltjes integral and its properties, some theorems of Integrati on of vector valued functions and Rectifiable curves.
SECION-1.1
DEFINIIONS &
E$ISENCE OF HE INEGRAL
D-.161<176:
Let [a,b] be a given interval, by a partition P of [a,b] we mean a finite set of points x 0 , x 1 , x 2 ,...,x n where a=x 0 ≤ x 1 ≤ x 2 ...≤x n = b We write .,n.
x i = x i – x i–1 for i = 1,2,..
Supp ose f is a boun ded real func tion defined on [a,b] corresponding to each partition P of [a,b] we put Mi = supf(x), ( xi-1 ≤ x ≤ xi), mi = inf f(x), ( xi-1 ≤ x ≤ xi), n
n
U(P,f) = ∑ MiΔ"i, L(P,f) = ∑ miΔ"i i
=1
i
=1
b
_
and finally put
∫fd" = inf U (P, f)
------------------(1)
a b
∫fd" =supL (P,f)
------------------(2)
¯ a
where the inf and sup are taken over all partitions P of [a,b]. The left members of (1) and (2) are called Upper and Lower Riemann integrals.If
the
upper
and
lower
integrals are equal, we say that f
is Riemann integrable on [a,b], we write f
F
common b
>
and we denote the
value
of
(1)
&
(2)
b
∫fd" or ∫f(")d" .This is the Riemann a
a
integral of f over [a,b]. Since f is bounded, there exist m and M such that m ≤ f(x) ≤ M (a≤x≤b). Hence, for every P, m(b – a) ≤
L(P,f)
≤ U(P,f) ≤ M(b – a), so that the numbers L(P,f) and U(P,f) form a bounded set. That is, the upper and lower integrals are defined for every bounded function f. D-.161<176:
Riemann-Stielties integral
Let
be monotonically increasing
function on [a,b]. Corresponding to each partition P of [a,b] we write Δα i =
(xi )–
(xi–1 ) for i = l,2,...,n.
Supp ose f is a boun ded real func tion on [a,b] we put n
n
U(P,f,α) = ∑ MiΔαi, L(P,f,α) = ∑ miΔαiand we define i
=1
i
=1
b
_
∫fd
= inf U(P,f,α)
-------------------(3)
a b
∫fd
= sup L(P,f,α)
-------------------(4)
¯ a
where inf and sup are taken over all partitions P of [a,b]. The left members of (3) and (4) are called the upper and lower Riemann-Stieltjes integral of f with respect to [a,b] and we write f
F >(
, over ).
If the left members of (3) and (4) are equal we say that f is RiemannStieltjes integrable with respect to
,
over [a,b]. !-5)3:
By taking
(x) = x, the Riemann
integral becomes a specia l ca se of Riemann-Stieltjes integral. D-.161<176:
We say that the partition P* is a refinement of P if P* Given two partitions P
P
P. 1
and P 2 we say
that P* is there common refinement if P* = P 1 K P 2 .
#0-7-5 1.1.1:
If P* is a_refinement of P then L(P,f,
) ≤ L(P*,f,
U(P,f,
).
) and U(P*,f,
) ≤
P77:
Let P = (a= x 0 , x 1 , x 2 ,..x n = b} be a partition of [a,b]. Let P* be a refinement of P. Then P* P P. Su ppose first that P* co ntains just one point more that P. Let
this
extra
point
be
x*
and
x i–1 ≤x*≤ x i where x i–1 and x i are two consecutive points of P. Put w1 = inf(f(x)), xi-1 ≤ x ≤ x* w2 = inf ( f(x)), x* ≤ x ≤ xi and mi = inf(f(x)), xi-1 ≤ x ≤ xi Now L(P*,f,α) − L(P,f,α)
=w1[α(x*) − α(xi-1)] + w2[α(xi) − α(xi-1)] =w1[α(x*) − α(xi-1)] + w2[α(xi) − α(x*)] -mi[α(xi) − α(xi-1) + α(x*) − α(x*)] = w1 − mi α(x*) − α xi-1
)[
(
≥0.
(
+ w2 − mi α xi − α(x*)
)] (
)[ ( )
]
(i.e)L(P*,f,α) − L(P,f,α) ≥ 0. L(P*,f,α) ≥ L(P,f,α) L(P*,f,α) ≤ L(P,f,α)
If P* contains k points more than P , we repeat this reasoning k times and arrive at a result L(P*,f
) ≥ L(P,f,
Similarly,
prove
U(P*,f,
we
) ≤ U(P,f,
can
that
).
#0-7-5 1.1.2: b
b
_
∫fdα ≤ ∫fdα ¯ a
a
P77:
Let P* be the common refinement of two partitions P 1 and P 2 .
).
Then
L(P 1 ,f,
U(P*,f,
)
≤
) ≤ U(P 2 ,f,
L(P*,f,
)
≤
).
Then L (P1,f,α) ≤ L(P,f,α) ≤ U(P*,f,α) ≤ U(P2,f,α) Hence L(P1, f,
------------(1) ) ≤ U(P2, f, ) If P 2 is fixed and supremum is taken
over all P 1 , (1) gives sup L(P 1 ,f, U(P 2 ,f,
)≤
).
sup L(P1, f,
) ≤ U(P2, f, )
b
∫fdα ≤ U(P , f,
(i.e)
2
)
-----------------(2)
¯ a
By taking inf over all P 2 in (2), we get b
∫fd
≤ infU(P2, f,
)
¯ a
b
L
b
∫fdα ≤ ∫fdα ¯ a
¯ a
#0-7-5 1.1.3:
( Necessary and Sufficient condition for Riemann-Stieltjes integrability)
f
F >(
) on [a,b] if and only if for
every
> 0, ther e exist a partition P
such that U(P,f,
) – L(P,f,
)<
P77.:
N-+-;;)@ C76,1<176: Let f F
>(
).
Then,
by
definition
b
_
b
∫fdα = ∫fd ¯
----------------(1)
a
a
b
Since
∫fd
is the supremum of
a ¯
L(P,f,
) over all partitions P , there
exist
a
partition
b
∫fdα < L(P , f, 1
¯ a
ε
)+ 2
P 1
such
that
b
_
Also , since
∫fd
is the infimum of
a
U(P,f,
) over all partitions P ,there
exist
a
partition
P 2
such
that
b
_
U(P 2 ,f,
)<
∫
fdα
+
ε 2
a
If P = P 1 K P 2 , then P is the common refinement of P 1 and P 2 Then, by definition of refinement, we have b
∫fdα < L(P,f,α) +
F
------------------(2)
2
¯ a b
_
and U(P,f,α) <
∫
F
fdα + 2
a
Adding (2) and (3), we get
------------ (3)
b
_
b
∫fdα + U(P,f,α) < L(P,f,α) + ∫fdα + ε ¯
a
a
By (1), we have U(P,f,α) < L(P,f,α) + ε
(i.e)U(P,f,α)-L(P,f,α)<ε "=..1+1-6< C76,1<176
Let U(P,f, For
) – L(P,f,
every
partition
we
have
_
∫fdα ≤ ∫fdα ≤ U(P,f,α) ¯
a
a
b _
P
.
b
b
L(P,f,α) ≤
)<
b _
∫fdα − ∫fdα ≤ U(P,f,α) − L(P,f,α) < ε a
a b
(i.e)
b
_
∫fdα − ∫fdα < ε ¯ a
a
This is true for
> 0, we have
b
_
b
∫fdα = ∫fdα. ¯
a
a
Hence f
F >(
) on [a,b].
#0-7-5 1.1.4:
a.
If U(P,f,
) – L(P,f,
) <
for some P and some inequality
holds
holds then the
for
every
refinement P. b.
If If U(P,f, for P = { x
) – L(P,f, 0,
)<
holds
x 1 x 2 ,..., x n } and
if s i ,t i are arbitrary points in [x i–1 ,x i ] then n
∑ |f(si) − f(ti)|Δαi < ε i=1
c.
If f
F >(
) and ti F [x i–1 ,x i ] then
n
b
∑ f(ti) Δαi − ∫fdα a
i=1
|
|
P77.:
a.
<ε
Let U(P,f,
) – L(P,f,
) <
some partition P and some
for > 0.
Let P* be the refinement of P. Then U(P*,f, L(P,f, L
) ≤ U(P,f,
) ≤ L(P*,f,
).
We have U(P*,f,
≤ U(P,f, L U(P*,f,
) and
) – L(P,f, ) – L(P*,f,
) – L(P*,f, )< )<
Hence the result holds good for every refinement of P. b.
Let s i ,t i he two arbitrary points in [x i–1 ,x i ].
)
Then |f(si) − f(ti)| ≤ Mi − mi n L
n
∑ |f(si) − f(ti)|Δαi ≤ ∑ (Mi − mi)Δαi i=1
i=1 n
n
≤ ∑ (MiΔαi) − ∑ (miΔαi) i=1
i=1
≤ U(P,f,α) − L(P,f,α) < ε n
(i.e)∑ |f(si) − f(ti)| Δαi < ε. i=1
Let t i F [xi-1, xi],
D
i=1,2,....,n
Then M i ≤ f(ti) ≤ mi n L
D
i=1,2,....,n
n
n
∑ miΔαi ≤ ∑ f(ti) Δαi ≤ ∑ MiΔαi i=1
i=1
i=1
n L
L(P,f,α) ≤ ∑ f(ti) Δαi ≤ U(P,f,α) ---------(1) i=1 b
_
b
c.
Also L (P,f,α) ≤
∫fdα ≤ ∫fdα ≤ U(P,f,α). a
¯ a b L
L(P,f,α) ≤
∫fd
≤ U(P,f,α)
------------(2)
a
From (1) and (2), we get
|
n
b
∑ f(ti)Δαi − ∫fdα i=1
a
|
≤ U(P,f,α) − L(P,f,α) < ε
#0-7- 1.1.5:
If f is continuous on [a,b] then f F >
(
) on [a,b].
P77:
Let
> 0 be given.
Choose
> 0 so that (
(b) –
(a))
< ε. Since f is continuous on [a,b] and [a,b]
is
compact,
f
is
uniformly
continuous. L
There exists a
F [a,b]
> 0 such that x,t
and
|x-t| < δ
B
| f ( x ) − f (t )| <
-------(1)
If P is any partition of [a,b] such that Δx i <
, D i, then (1) implies
Mi − mi < η n
L
n
U(P,f,α) − L(P,f,α) = ∑ MiΔαi − ∑ miΔαi i=1
i=1 n
=∑ (Mi-mi)Δαi i=1 n
< ∑ ηΔαi i=1
= η(Δα1 + Δα2 +...+
n
)
(
= η α(x1) − α(x0) + α(x2) − α(x1) +...+
(
= η α(xn) − α(x0)
(xn) − α(xn-1))
)
= η α(b) − α(a) <ε L
(
)
U(P,f,α) − L(P,f,α) < ε
By theorem 1.1.3, f
F >(
) on [a,b].
#0-7-5 1.1.6:
If f is monotonic on [a,b] and if is continuous on [a,b] then f F > ( ). P77:
Let
> 0 be given.
Double click this page to view clearly
Since
is continuous on [a,b], for
any positive integer n, choose a partition Δαi =
α(b) − α(a) , n
such
that
i=1,2,....,n
By hypothesis f is monotonic on [a,b]. Suppose f is monotonically increasing (the proof is analogo us in the other case). Then M i = f(x i ) and m i = f(x i–1 ). n L
U(P,f,α) − L(P,f,α) =
n
∑ MiΔαi − ∑ miΔαi i=1
i=1 n
=
(Mi − mi)Δαi ∑ i=1 n
(
=∑ f(xi) − f(xi-1)
)
α(b) − α(a) n
i=1
=
α(b) − α(a) f n
(xn) − f(x0)
=
α(b) − α(a) f n
(b) − f(a)
<
, if n is taken large enough.
By theorem 1.1.3, f
F >(
) on [a,b].
#0--5 1.1.7:
Suppose f is bounded on [a,b] , f has
only
finitely
discontinuity
on
many [a,b],
points and
of is
continuous at every point at which f is discontinuous. Then f
F >(
).
P:
Let
> 0 be given.
Put M = sup|f(x)|, let E be the set of points at which f is discontinuous. Since E is finite and
is continuous
at every point of E, we can cover E by finitely many disjoint intervals [u j ,v j ]
O
[a,b] such that the sum of
the corresponding differences
(v
j)
–
α(u j ) < Further more , we can place these intervals in such a way that every poi nt of E
J
(a,b) lies in the interior
of some [u j ,v j ]. Remove the segments (u [a,b].
The
compact.
remaining
Hence
f
is
j
,v j ) from
set
is
uniformly
continuous on K, and there exist 0 such that |f(s) – f(t)| <
K
s
if s
> F
K,
t F K, |s – t| <
0, x1, Now form a partition P = {x x 2 ,..x n } of [a,b] as follows. Each u j
occurs in P. Each v
j
occurs in P. No
point of any segment (u j v j ) occurs in P. If x i–1 is not one of the u j , then < δ.
xi
Note that M i – m i ≤ 2M for every i, and that M i – m i <
unless xi–1 is one
of the u j . Hence U(P,f, (a)] Since
) – L(P,f,
) ≤ [
(b) –
+ 2M > 0 is arbitrary, by theorem
1.1.6, f F > (
).
#0-7-5 1.1.8:
Suppose f
F >(
) on [a,b], m ≤ f
≤ M, ; is continuous on [m, M] and h(x) = ; f(x)) on [a,b]. Then he h >(
F
) on [a,b].
P77:
Choose
> 0.
Since ; is continuous on [m, M] and [m , M] is co mpact, continuous on [m, M]
; is uni for mly
L there exist
> 0 such that
<
and s,t F [m, M] and |s –1| <
B | ; (s) – ; (t)| <
Since f F > (
) on [a,b], there is a
partition P of [a,b] such that 2
U(P,f,α) − L(P,f,α) < δ .
------------------ (1)
Let M i = sup f (x), ,xi-1 ≤ x ≤ x i,
mi = inf f(x), xi-1 ≤x≤x
i,
Mi * = sup f(x), xi-1 ≤x≤x
i,
mi * = inf h(x), xi-1 ≤x≤x
i,
Divide the number., 1,2....,n in two classes A and B as follows, i F A if M i – m i <
and i F B if M i –
m i ≥ δ. For i F A our choice of
shows that
M* i – m i * < For i F B, M i *– m i *≤ 2K, where K = sup| ; |(t)|, m ≤ t ≤ M.
We have
∑ Δαi ≤ ∑ (Mi − mi)Δαi iFB
=
iFB
∑ MiΔαi − ∑ miΔαi iFB
iFB
<δ .(by(1)) Hence
∑ Δαi<
--------------------- (2)
iFB
U(P,f,α) − L(P,f,α) = ∑ (Mi * − mi * )Δαi + ∑ (Mi * − mi * )Δαi iFA
iFB
<∑ε Δαi + ∑2K iFA
i
iFB
<ε α(xn) − α(x0) + 2K
[
]
(by(2))
<ε[α(b) − α(a)] + 2K <ε[α(b) − α(a) + 2K] Since
>0 is arbitary,we see that hF >(α) on [a,b]
C'P $E"#ION":
1.
Suppose
increases on [a,b], a
≤ x 0 ≤ b,
is continuous at x
f(x 0 ) = 1, and f(x) = 0 if x ≠ x Prove that f fd
F >(
0, 0.
) and that ∫
=0
Double click this page to view clearly
If f(x) = 0 for all irrationa l x, f(x)
2.
= 1 for all rational x, prove that f
>(
)on [a,b] for any a < b.
SECION-1.2
PROPERIES OF
HE INEGRAL #0-7-5 1.2.1: a.
f1 >(α) and f2 >(α) on [ a,b], then f 1 + f2 >(α), cf >(α) for b
every constant c,and
b
∫( f
1
+ f2) d
=
b
∫f
a
1
d
If f1(x) ≤ f2(x)on [ a,b],then
∫f
a
b 1
dα ≤
∫f dα. 2
a
If f >(α) on [ a,b] and if a
(α) on [a,c] c
and on[c,b], and
b
b
∫fdα+∫fdα=∫fdα a
d.
∫
= c fdα
a
a
c.
∫ cfd
+
a
b
b.
b
c
a
If f >(α) on [a,b] and if | f(x)| ≤ M on [a,b],then b
|
∫fd
| ≤ M[α(b) − α(a)].
a
e.
If f >(α1) and f >(α2), then f >(α1+α2) and b
b
b
∫fd(α +α )=∫fdα +∫fdα : 1
2
1
a
a
2
a
If f >(α) and c is a positive constant,then f >(cα) and b
b
∫fd(cα) = c ∫fdα a
a
Double click this page to view clearly
P77.:
If f = f 1 + f 2 and P is any partition of [a,b], then we have L(P,f1, α) + L(P,f2, α) ≤ L(P,f,
Let If
) ≤ U(P,f,α) ≤ U(P,f1, α) + U(P,f2, α).! .................(1)
> 0 be given. f1F
>(
), then there exists a
partition P 1 such that U(P1,f1,α) − L(P1,f1, α) < ε. ---------(2) Also if f 2
F >(
), then there exists a
partition P 2 such that U(P2,f2,α) − L(P2,f2,α) <
-------(3 )
If P is the common refinement of P 1 and P2,then ( 2) implies U(P,f1,α) − L(P,f1,α) < U(P1,f1,α) − L(P1,f1,α)
(by theorem 1.1.1) <
-------------------(4)
and(3) implies U(P,f2, α) − L(P,f2,α) < U(P2,f2,α) − L(P2,f2,α)(by theorem 1.1.1) <
---------------------(5)
Adding ( 4) and ( 5), we get U(P,f1,α) + U(P,f2,α) − L(P,f1,α) − L(P,f2,α) < 2
----------(6)
Now U(P,f,α) − L(P,f,α) ≤ U(P,f1,α) + U(P,f2,α) − L(P,f1,α) − L(P,f2,α)(by(1)) < 2ε(by(6))
(i.e)U(P,f,α) − L(P,f,α) < 2ε By theorem 1.1.3 f F
>(α)
on [ a,b]
Double click this page to view clearly
(i.e) f 1 +f 2 F
>(
) on [a,b].
Now for partition P, we have b
U(P,f1,α) <
∫f d 1
+
---------------(7)
+
---------------(8)
a b
U(P,f2,α) <
∫f d 2
a
Adding(7) and (8), we get b
U(P,f1,α) + U(P,f2,α) <
b
∫f d
∫
+
1
+ f2d
a
+
a b
=
b
∫f dα + ∫f d 1
a
2
+2
a b
By (1) U(P,f,α) ≤ U(P,f1,α) + U(P,f2,α) <
∫f dα + ∫f d 1
a b
b 2
+2
a
b
(i.e)U(P,f,α) < ∫f1dα + ∫f2d +2 a
a
b
But
∫fd
≤ U(P,f,α)
a
From the above two inequalities, we get b
b
∫fd a
<
b
∫f d 1
a
+
∫f d 2
+2
a
Double click this page to view clearly
Since
>0 is arbitary,we conclude that
b
b
∫fd
b
∫f dα + ∫f d
≤
a
1
--------------------(10)
2
a
a
Replace by f1 and -f1 and f2 and -f2 in (10), we get b
b
∫fd
b
∫f dα + ∫f d
≤
a
1
--------------------(11)
2
a
a
From (10) and(11), we get b
b
∫fd
b
∫f dα + ∫f dα
≤
a
1
2
a
a
b
b
b
(i.e)∫(f1 + f2)dα = ∫f1dα + ∫f2dα a
a
a
(b) Let f 1 (x) ≤ f 2 (x) on [a,b]. Then f 2 (x) – f 1 (x) ≥ 0. Since
is monotonically increasing in
[a,b],
(b) >
(a). b
Then we have
∫ ( f ( x ) − f (x ) ) d 2
1
≥0
a b
b
(i.e)∫(f2 − f1)d a
≥0
b
B ∫f d 2
a
−
∫f d 1
≥0
a
Double click this page to view clearly
b
b
B ∫f d 2
a
≥
b
b
∫f dα B ∫f dα ≤ ∫f dα 1
1
a
a
2
a
Similarly we can prove (c), (d) and (e). #0-7-5 1.2.2:
If f F > (
) and g
F >(
) on [a,b]
then i.
fg F > (
); b
ii.
b
|f| F >(α) and |∫fd | ≤∫|f| dα. a
a
P77:
2
If we take ; (t) = t , then by theorem 1.1.8, 2
f F >(α) B f F >(α)
-------------------(1)
f F >(α) and g F >(α) B f+g F >(α), f-g F >(α) (by theorem 1.2.1) B
2
(f+g)
2
F >(α), ( f-g) F >(α) ( by(1))
Double click this page to view clearly
B
2
2
(f+g) + (f-g) F >(α) (by theorem 1.2.1)
B 4fg F >(α)
B
1 4
(4fg) F >(α) on [ a,b] (by therom 1.2.)
B fg F >(α) on [ a,b]
If we take ; (t) = | t |, then by theorem 1.1.8, f F >(
) B | f | F >(
). b
Choose c=±1,so that c
∫fd
≥ 0.
a b
∫fd
Then |
a
b
|=c
b
∫ fd =∫ a
a
b
∫|f|d
cfd ≤
, since cf ≤|f|.
a
D-.161<176:
The unit step function I is defined by
I (x ) =
{
0 ( x≤0 ) 1
(x>0)
Double click this page to view clearly
#0-7-5 1.2.3:
If a < s < b, f is bounded on [a,b], f
is
continuous
at
s,
b
∫fd
and α(x) = I(x-s), then
= f(s).
a
P77:
Consider partitions P = {x
0 ,x 1 ,x 2 ,x 3
}, where x 0 = a and x 1 = s < x 2 < x 3 =b. Then U(P,g,α)=M1Δα1+M2Δα2+M3Δα3 [
]
[
]
[
= M1 α(x1) − α(x0) + M2 α(x2) − α(x1) + M3 α(x3) − α(x2)
[
]
[
]
]
[
= M1 I(x1 − s) − I(x0 − s) + M2 I(x2 − s) − I(x1 − s) + M3 I(x3 − s) − I(x2 − s)
]
= M1[0 − 0] + M2[1 − 0] + M3[1 − 1]
(by the definition of unit step function) =M2 ly
III L(P,f,α) = m2.
Since f is continuous at s, we see that M 2 and m 2 converges to f(s) as x (i.e.) U(P,f,
) and L(P,f,
to f(s) as x 2
A
2
A
s.
) converges
s.
Double click this page to view clearly
b
∫fd
Therefore
= f(s)
a
#0-7-5 1.2.4:
Su ppose c n ≥ 0 for n = l,2,3,..., c n converges, {s n } is a sequence of distinct
points
in
(a,b),
and
∞
α(x) = ∑ cnI(x-sn) be continuous on n=1
[a,b]. Then
b
∞
∫fd
=∑ cnf(sn)
a
n=1
P77:
Since
cn
converges,
the
series
∞
∑ cnI(x-sn)
is also converges for
n=1
every x. (by Comparison test). Clearly = 0 and
(x) is monotonic. Also (b) =
(a)
c n (by the definition
of unit step function).
∞
>0 be given.Choose N so that∑ cn <
Let
.
---------(1)
n=N+1 N
Put
1
∞
(x) = ∑ cnI(x-sn) and
2
(x) = ∑ cnI(x-sn).
n=1
n=N+1
By the properties of the integral and by theorem 1.2.3,
b
N
fdα1 =
∫
cnf sn
-------------------- 2
( )
∑
a
n=1
( )
∞
Since
2
∞
(b) − α2(a) = ∑ cnI(b-sn) − ∑ cnI(a-sn) n=N+1
∞
n=N+1
∞
b
= ∑ cn − 0 = ∑ cn < ε.(by ( 1)), we have n=N+1
n=N+1
where
M
|∫ |
fdα2 ≤ M
,-----------(3)
(by
the
a
=
sup|f(x)|.
properties of integral) Since
|
b
= N
∫fd a
||
−∑ cnf(sn) = n=1
b
=
|∫ a
1
b
fdα1 +
∫ a
+ α 2 , we have
b
N
∫fd(α +α ) − ∑ c f(s )
N
1
2
n
n=1
||
fdα2 − ∑ cnf(sn) = n=1
n
a N
∑ cnf(sn) + n=1
| b
∫ a
N
|
fdα2 − ∑ cnf(sn) (by ( 2)) n=1
Double click this page to view clearly
b
=
|∫ | |∫
fdα2 ≤ Mε(by(3))
a
b
(i.e)
fd
a
N
|
−∑ cnf(sn) ≤ Mε n=1
b
If we let N
A
∞,we get
∞
∫fd
= ∑ cnf(sn)
a
n=1
#0-7- 1.2.5:
Assume α' F
increase
>(
monotonically and
) on [a,b]. Let f be a bounded
real function on [a,b]. Then f if and only if f b
'
F >(
F > (α)
). In that case
b
∫fd
∫f(x) α '(x)dx
=
a
a
P77:
Let
> 0 be given.
Since
'F
>(
), by theorem 1.1.3,
there exist a partition P = {a = x 0 ,x 1 ,x 2 ,...,x n =b} such that U(P,α') − L(P,α') <
----------(1 )
Double click this page to view clearly
By the mean value theorem,
i
= α (xi) − α(xi-1) = α (ti)Δxi, ------- (2)
where ti F [xi-1, xi] for i=1,2,.....n. n
If si F [xi-1, xi], then
'
'
∑ |α (si) − α (ti)| Δx i <
-----------(3) ( by ( 1) and theorem 1.1.4(b))
i=1
Put M=sup |f(x)|. n
Since
n
∑ f(si) Δαi = i=1
|
----------------------------- (4)
∑ f(si) α'(ti) Δxi(by(2)), we have i=1
n
n
||
∑ f(si) Δαi − ∑ f(si) αi(si)Δxi i=1
=
|
i=1 n
|
∑ f(si) (α '(ti) − α '(si))Δxi i=1
=
n
n
i=1
i=1
n
≤ ∑ |f(si)| |α '(si) − α '(ti)|Δxi i=1
= Mε ( by ( 3) and ( 4)) Inn particular
∑ f(si)Δαi ≤ U(P,f
') + M
,for all cho ices of i sF [xi-1, xi], so that
i=1
U(P,f,α) ≤ U(P,fα') + M
--------------------(5)
Similarly we can show that U(P,f Therefore | U(P,f,α) ≤ U(P,f
') ≤ U(P,f,α) + M
')| ≤ M
------------(6)
------------(7)
If P is replaced by any refinement, then (1) is true and hence (7) is Therefore also true.
|
b
b _
- f(x)α'(x)dx ∫fd ∫ ¯ a
a
|
∑ f(si) α '(ti)Δxi − ∑ f(si) α '(si)Δxi
|
≤M
Double click this page to view clearly
b _
b _
∫
Since
>0 is arbitary, fd a
∫
= f(x)α'(x)dx a
for any bounded f. b
Similarly
b
∫fd
∫
= f(x)α'(x)dx for any bounded f.
¯ a
¯ a
b _
f F >(α)
b _
b
b
C ∫fd =∫fdα ∫f(x)α'(x)dx = ∫f(x)α'(x)dx C
a
¯ a
a
¯ a
b
C
fα ' F >(α) and
b
∫fd
=
a
∫f(x)α '(x)dx a
#0-7-5 1.2.6: (C0/- 7 %*4-;)
Suppose
is a Strictly increasing continuous function that maps an interval [A,B] onto [a,b]. Suppose a is monotonically increasing on [a,b] and f
F >(
) on [a,b]. Define
g on [A,B] by f(
(y) =
(
and
(y)), g(y) =
(y)) . Then Double click this page to view clearly
b
g F >(β) and
b
∫gd
∫fdα
=
a
a
P77.:
To each partition P={x
0,
x 1 , x 2 ,...,
x n } of [a,b] corresponds a partition Q={y 0 , y 1 , y 2 ,..., y n } of [A,B], so that x i =
(p(y i ). Al l partitions of
[A,B] are obtained in this way. Since the value s taken by f on [x i–1 ,x i are exactly the same as those taken by g on [y i–1 ,y i ], we see that U(Q,g, U(P,f,
), L(Q,g,
) = L(P,f,
)=
).
n
(U(Q,g,β) = ∑ Mi * Δβi where Mi *
= sup g(x), (xi-1 ≤ x ≤ xi)
i=1
= sup f(φ(y)) = sup f(x) = Mi and
(
)
(
i
= β(yi) − β(yi-1)
)
= α φ(yi) − α φ(yi-1) = α(yi) − α(yi-1) = Δαi Therefore U(Q,g,β) = U(P,f,α))
Double click this page to view clearly
Since f
>(
), P can be chosen so
that both U(P,f,
) and L(P,f,
) are
b
close to
∫fd
Hence U(Q,g,
) and
a
L(Q,g, theorem
) are also close and by 1.1.3,
g
b
g >(β)and
∫gd
>(
) and
b
=
a
∫fd a
C'P $E"#ION": 1.
Pro ve theor em 1.2.1 (c) , (d) and (e).
SECION-1.3
INEGRAION
AND DIFFERENIAION
#0-7-5 1.3.1: Let f
>(
) on [a,b]. For a ≤ x ≤ b, b
put F (x) =
∫f(t)dt a
Then F is continuous on [a,b]. Also if f is continuous at x 0 of [a,b], then F is differentiable at x 0 and F‘(x 0 ) = f(x 0 ). P77.:
Since f
F >(
) , f is bounded.
Then there exist a real number M such that | f(t) | ≤ M for a ≤ x ≤ b. y
If a ≤ x ≤ y ≤ b, then | F(y) − F(x)| =
x
|∫
f(t)dt-
a
a a
|
|∫ | x
y
x
f(t)dt ≤
=
|
∫f(t)dt+∫f(t)dt
=
y
∫f(t)dt
a
y
|
∫|f(t)|dt x
≤ M(y-x). Given
>0 we have|y-x| <
ε M
B
|F(y) − F(x)| < ε
Double click this page to view clearly
Therefore F is uniformly continuous on [a,b]. B
F is continuous on [a,b].
Suppose f is continuous at a point x 0 . Given
> 0, choose
| f(t) – F(x 0 ) | <
> 0 such that
if |t – x0 |<
and
a ≤ t ≤ b. Therefore, if x 0 – +
|
0
0
and a ≤ s < t ≤ b
F(t)-F(s) t-s
|
− f(x0) =
|
t 1 t-s
∫(f(u) − f(x ))du 0
s
|
t
≤
1 t-s
f(u) − f(x0) du
∫( s
t
1
<ε t-s
∫du s
<ε Hence F'(x0) = f(x0).
Double click this page to view clearly
)
#0-7-5 1.3.2: (#0-
F=6,5-6<4
<0-7-5
7
C4+=4=;) If f
F >(
) on [a,b] and if there is a
differentiable function F on [a,b] such
that
F’=
f
then
b
∫f(x) dx=F(b) − F(a) a
P77:
Let
> 0 be given.
Choose a partition P = {x 0 ≤ x 1 ≤ x 2 ....≤x n } of [a,b] so that U(P,f) – L(P,f) < By the Mean Value theorem, there are points t i
F
[x i–1 ,x i such that
F(x i ) – F(x i–1 ) = f(t i )Δx i for i = 1,2,...., n. n
Thus
f(t ) Δx ∑ i=1 i
i
= F (b ) − F (a ).
It follows from theorem 1.1.4 (c) that
|
n
b
∑ f(ti)Δxi − ∫fdα i=1
(i.e)
a
|
|
<ε
b
(F(b) − F(a)) − ∫fdα a
|
Since this is hold for every have b
∫f(x)dx = F(b) − F(a) a
#0-7-5 1.3.3: (I6<-/<76 *@ P<;)
<ε
> 0, we
Suppose F and G are differentiable F
function on [a,b], F’= f b
G'=g F > then
>
and
b
∫F (x)g(x)dx=F(b)G(b) − F(a)G(a) − ∫f(x)G(x)dx a
a
P77.:
Put H(x) = F(x)G(x),
DxF
[a,b].
Then H'(x) = F'(x)G(x) + F(x)G'(x) = f(x)G(x) + F(x)g(x) F’= f F > and G’= g F > B H’ F > on [a,b]. Let
us
apply
the
Fundamental
theorem of Calculus to the function H and its derivative H’, we get b
∫H'(x)dx=H(b) − H(a) a
Double click this page to view clearly
b
∫(f(x)G(x) + F(x)g(x))dx=F(b)G(b) − F(a)G(a) a b
b
∫f(x)G(x)dx+∫F(x)g(x)dx = F(b)G(b) − F(a)G(a). a
a b
b
(i.e)∫F(x)g(x)dx=F(b)G(b) − F(a)G(a) − ∫f(x)G(x) dx. a
a
Hence the theorem. C'P $E"#ION": 1.
Suppose f ≥ b0, f is continuous on [a,b], and
∫f(x) dx=0 Pr ove
that
a
f(x) =0 for all x
S*(62 1.4
F [a,b].
I6*,&62 2+
8*(62 8&/7*) +7(625
D-.161<176: Let f 1 ,f 2 ,...,f k be a real functions on [a,b], and let
Double click this page to view clearly
= (f 1 ,f 2 ,...,f k ) be the corresponding mapping
of
[a,b]
3
into
! .
If
α
increases monotonically on [a,b], to say that f >
(
F >
(
) means that f j F
) for j = 1,2 ,.. .., k. If thi s is the
case we define b
b
fd
∫ a
=
(
b
f1 d
, ....,
∫
fkdα
∫
a
)
a
#0-7-5 1.4.1: (A67/=-
7
<0-
F=6,5-6<
<0-7-5 7 C+==; 7 >-+<7 >=-, =6+<76;) If and F map [a,b] into on [a,b] and if
F ' = then
b
∫f(t)dt =F(b) − F(a) a
3
! , if
F >
P77.:
Let . = (f 1 ,f 2 ,... ,f k ) and
F
= (F 1
,F 2 ,... ,F k ).
=f B
F’
B
By
the
(F1’, F2’, ..., Fk’)
=
(f1, f2, ..., fk).
Fj ' = f j, j = 1, 2, ...., k.
Fundamental
theorem
Calculus, for real valued function f
of j,
b
we have
∫fj(!)d! = F (b) − F (a) j
j
a b
b
b
∫f (!)d!, ∫f (!)d!, ....., ∫fk(!)d!
(i.e)
1
(
a
2
a
a
)
=(F1(b) − F 1(a), F2(b) − F 2(a), ...., Fk(b) − F k(a)) b
(i.e.)∫f(!)d!=F(b) − F (a) a
#0-7-5 1.4.2:
If maps [a,b] into !
3
and if
F > (α)
for some mo notonically increasi ng function on [a,b] then | | F > (α) and b
| | ∫fdα
b
≤
a
∫|f|dα a
P77:
Let = (f 1 ,f 2 ,...,f k ). Then | 2
2
| =
2
(f 1 +f 2 +.. .+f k ) f F >(α) B
f1, f2, ...fk F >(α) on [a,b]
B f12, f22, ...., fk2 F >(α) on [a,b] B f12+f22 +...+f k2 F >(α) on [a,b]
B (f12+f22 +....+f B
k2
)
1/2
F >(α)
on [a,b]
|f| F >(α) on [a,b]
Double click this page to view clearly
b
Put y=(y1, y2, ...yk), where yj =
∫f d
for j=1,2,....k.
j
a b
k
k
b
2
∫fd
Then y=
and|y| =
a
j
y .y ∑ j=1
j
=
y f dα ∑ ∫a j=1 j
b
=
j
b
∫∑ y f dα ≤ ∫|#||f| dα j j
a
a b
=|#|
∫|f| dα. a
If @ = 0, the inequality is trivial. If @ ≠ 0, then divide by | b
@ |, we get
b
b
|y| ≤ ∫|f|d . That is a
| | ∫fdD
≤
∫ | f| d α a
a
C'P $E"#ION": b
1.
Define
∫fd
if f:[a,b]
A
k
R
a
Double click this page to view clearly
S*(62 1.5
R*(6+&'/* (748*
D-.161<176:
A continuous mapping [a,b] into ! If
3
is called a curve in
is 1 – 1 , then (a) =
of an interval
(b),
!
3
.
is called an arc.If
is said to be a closed
curve. We associate to each partition P = {x 0 , x 1 , X 2 ,..x n }of [a,b] and to each curve
on
[a,b],
the
number
n
I ( P,γ) =
γ(xi) − γ(xi-1) ∑ | | i=1
Here I (P,
) is the length of the
polygonal path with vertices at
(x
0 ),
γ(x 1 ),...,
(xn ). The length of
defined as If
I(
I(
) = sup
I (P,
is
).
) < ∞, we say that
is
rectifiable. #0-7- 1.5.1:
If
’is continuous on [a,b] , then
is
b
rectifiable and
I
(γ) = ∫|γ'(t)dt a
P77:
If a ≤ x i–1 ≤ x i ≤ b, then |
(x i ) –
x i–1 )| xi
=
Hence
|
I
xi
∫γ'(t)dt xi-1
|
≤
∫|γ'(t)| dt xi-1
b
(P,γ) ≤ ∫|γ'(t)| dt for every a
partition P of [a,b].
(
b
L
We have sup
I
(P,γ) ≤ ∫|γ'(t)| dt a
b
(i.e.) I (γ) ≤
∫|γ'(t)| dt
-----(1)
a
Now to prove the reverse inequality. Let
> 0 be given.
Since
‘ is continuous on [a,b], it is
uniformly continuous on [a,b]. > 0 such that | s – t | <
LE
B
| γ
‘(s) – γ ‘ (t)| < ε. Let P = P = {x 0 , x 1 , x 2 ,...,x n } be a partition of [a,b] with If x i–1 ≤t≤x –
i,
x i<
it follows that |
‘(xi )| <
(i.e.) |
‘(t)| – |
(i.e.) |
‘(t)| ≤ |
, Di
‘(x i )| < ‘(x i )| +
‘(t)
xi
Hence
xi
xi
∫|γ'(t)|dt ≤ ∫|γ'(x ) + ε| dt ≤ (|γ'(x )| + ε)∫dt i
xi-1
i
xi-1
xi-1
≤
(|γ'(x )| + ε)(x − x
≤
(|γ'(x )| + ε)Δx
i
i
i
|
)
i-1
i
|
≤ γ'(xi) Δxi +
ix
xi
≤
) |∫ ( | ) |∫ | |∫ ( | | | ∫( ) | | γ'(t) + γ'(xi) − γ'(t) dt +
ix
xi-1 xi
≤
xi
γ'(xi) − γ'(t) dt
γ'(t)dt +
xi-1
xi-1
xi
≤ γ(xi) − γ(xi-1) +
γ'(xi) − γ'(t) dt
xi-1
xi
| ∫
|
≤ γ(xi) − γ(xi-1) +
dt +
i
x
xi-1
|
|
|
|
≤ γ(xi) − γ(xi-1) + ε(xi + xi-1)εΔxi ≤ γ(xi) − γ(xi-1) + 2
ix
If we add this inequality for i = 1,2,.. .,n, n
we get
xi
n
n
∑ ∫|γ'(t)| dt ≤ ∑ |γ(xi) − γ(xi-1)|+2ε∑ Δxi i=1 xi-1
i=1
i=1
xn
(i.e.)∫|γ'(t)| dt ≤
I
(P,γ) + 2ε(xn − x0)
x0
Double click this page to view clearly
b
L
∫|γ'(t)| dt ≤
I
(P,γ) + 2ε(b-a)
a
Since
> 0 is arbitrary,we have
b
∫|γ'(t)| dt ≤
I
(P,γ).
a b
Hence
∫|γ'(t)| dt ≤
I
(γ ).
-------------------- (2)
a b
From (1) and (2), we get I (γ) =
∫|γ'(t)| dt a
C'P $E"#ION": 1. Suppose
f is a bounded real 2
function on [a,b] , and f
F>
on
F >
[a,b] , Does it follow that f
? Does the answer change if we assume that f 2.
3
F >
?
Let P be the Cantor set. Let f be a boun ded real funct ion on [0,1] which
is
continuous
at
every
point outside P. Prove that f f >
on [0,1]. Double click this page to view clearly
2
F
$NI#-2
$61< "<:=+<=:
Sectio n 2.1: Discussion of the main problem Section
2.2:
Uniform
2.3:
Uniform
convergence Section
convergence and continuity Section
2.4:
uniform
convergence and integration Section
2.5:
uniform
convergence and Differentiation Section
2.6:
Equi
continuous
families of functions Section
2.7:
The
Weierstrass Theorem
Stone
–
I6<7,=+<176
In this unit we confine our attention to
complex
valued
functions,
although many of the theorems and proofs which fo llow extend without difficulty to vector-valued functions, and to mappings into general metric spaces. We discuss the concept of uniform convergence and continuity, differentiation and integration.
SECION-2.1
DISC!SSION OF
HE MAIN PROBLEM
D-.161<176:
Suppose
{f n }, n = 1,2,..,, is a
sequence of functions defined on a
set E, and suppose that the sequence of numbers {f n (x)} converges for every x
E. We can then define a
F
function f by f(x) = lim fn(x)( xFE ). -------------( 1 ) n
∞
A
{f n } converges to f point wise on
E if
(1) holds. Similarly, if
f
every
E, and if we define
x
F
n
(x) co nverges for
∞
f(x) = ∑ fn(x)( xFE ) the function f is n=1
called the sum of the series
∑ fn
To say that f is continuous at x means
lim f(t) = f(x) Hence to ask
Ax
t
whether the limit of a sequence of
continuous functions is continuous is the
same
as
to
ask
whether
lim x lim f(t) = lim t lim x f(t) n ∞ n ∞ A A
t
A
(i.e.)
A
whether the order in which limit processes
are
carried
out
is
immaterial. On the LHS , we first let n
A
∞ then t
then n
A
A
x; on the RHS t
A
x first,
∞.
We shall now show by means of several examples that limit processes ca nnot in genera l be interchanged without affecting the result.
E?)584- 1: For m sm,n =
= 1,2,...,n = 1,2,..., let
m m+n
Then
,
for
every 1 1+n/m
lim sm,n = lim m
A
∞
lim n
A
m
A
fixed
=1
n,
so
that
∞
lim sm,n = 1
∞ m
A
∞
On the other hand, for every fixed m
m, lim sm,n = n(m+1)= 0. n
A
that
∞
nlim∞ nlim∞ A
so
A
sm,n = 0.
E?)584- 2:
Le! f n(x)
=
x
2 2 n
(1+x ) ∞
(x real; n=0,1,2,...), ∞
x and consider fn(x) =
f ∑ n=0
n
2
(x) = ∑ 1+x2 n . n=0 ( )
------------- (1)
Since f n (0) = 0, we have f(0) = 0. For x ≠ 0, the last series in (1) is convergent with sum (?).
Double click this page to view clearly
Hence f(x) =
{
(x=0)
0 1+x
2
, so that
( x≠0 )
a co nvergen t series of co ntinuous functions may have a discontinuous sum.
E?)584- 3: For m=1,2,...,put fm(x) = lim m
When m!x is an integer , f For all other values of x, f
A
For irrational x, f
∞
m (x) m (x)
= 1.
= 0.
fm(x)
Now let f(x ) = lim m
A
(cosm !
∞
m (x)
= 0 for every
m; hence f(x) = 0. For rational x, say x = p/q, where p and q are integers, we see that m!x
x)
2n
is an integer if m ≥ q, so that f(x) = 1.
lim (cosm!
Hence lim m
A
∞ n
A
x)
2n
=
∞
{
0
(x irrational )
1
(x rational )
(i.e.) an everywhere discontinuous limit function, which is not Riemannintegrable.
E?)58- 4: sin nx
Let f n(x) = √n f(x) = lim n
A
(x real;n=1,2,3,... ), and
fn(x) = 0
∞
Then f ‘(x) = 0, and f
n'
(x) = √n cos nx
, so that {f n ‘} does not converge to
f
‘.
For
instance
fn '(0) = √n
+ ∞ as n
A
A
∞ , whereas
f’(0) = 0.
E?)84- 5: 2
(
Let fn(x) = n x 1 − x
2 n
) (0 ≤ x ≤ 1,n=1,2,3....) --------(2)
For 0 ≤ x ≤ 1,we have lim fn(x) = 0 n
(
A
∞
α
Since,if p>0 and
is real,then lim n
∞
A
n
Since fn(0) = 0, we see that lim fn(x) = 0 ( 0 ≤ x ≤ 1). n
A
n
(1+p)
=0
)
------------ (3)
∞
1
Also
∫(
x 1−x
2 n
1
) dx= 2n+2 .
0 1
∫
L
n
2
fn(x)dx= 2n+2
A
0
If we replace n
2
+ ∞ as n
∞
A
by n in (2), (3) still
holds, but we have 1
lim n
A
1
∫f (x)dx= lim
∞ 0
n
n
A
∞
n 2n+2
=
1 2,
whereas
∫ 0
[
]
lim fn(x) dx=0. n
A
∞
L
The limit of the integral need not
be equal to the integral of the limit, even if both are finite. C'P $E"#ION": 1.
Give more examples for the limit of the integral need not be equal to the integral of the limit, even if both are finite.
SECION-2.2
!NIFORM
CON"ERGENCE
D-.161<176: A sequence of functions {f
}, n = n
1,2,3,....,
is
said
to
converge
uniformly on E to a function f if for eve ry
> 0 there is an integ er N such
that n ≥ N implies |f for all x
E.---(1)
n (x)
– f(x)| ≤
Note 1: Every uniformly convergent sequence is point wise convergent. Note
2:
The
difference
between
uniform convergent and poin t wise convergent is : If {f n }converges po int wise on E, then there exists a function f such that, for every > 0 and for every x
F
E, there is an
integer N , depending on
and on
x, such that (1) holds if n ≥ N. If {f n } converges uniformly on E, it is possible , for each
> 0, to find one
integer N which will do for all x
F
Note 3: We say that the series
f
E. n
(x) converges uniformly on E if the sequence {s n }of partial sums defined n
by
∑ f i( x ) = s n ( x ) i=1
uniformly on E.
converges
C) =+ 0@ + < - 7 6 7 =6 7 5 +76>-/-6+-: #0-7-52.2.1 : The
sequence
of
functions
{f n },
defined on E, converges uniformly on E if and only if for every
> 0 there
is an integer N such that n ≥ N, m
≥
N, x F E implies |f n (x) – f m (x)| ≤ P77:
Suppose {f n } converges uniformly on E. Let f be the limit function and let 0.
>
Then there is an integer N such that n ≥ N, x
F
E implies
ε
|fn(x) − fm(x)| ≤ 2 Therefore |fn(x) − fm(x)| ≤ |fn(x) − f(x)| + |f(x) − fm(x)| ε
<2 +
Conversely,
ε 2
=
if n ≥ N,m ≥ N, xF E
suppose
the
Cauchy
condition holds. (i.e.) for every
> 0 there is an
integer N such that n ≥ N, m ≥ N, x F E implies
| f n (x ) − f m (x )| ≤
-----(1)
By a theorem, (f n (x)} converges, say to f(x) for every x ( since R is complete). Thus the sequence {f n } converges on E, to f.
We
have
to
prove
that
the
convergence is uniformly. Fix n, and let m Since f m (x)
A H in(1).
A
f(x) as m A ∞, this
gives |f n (x) – f(x)| ≤ N and every x L {f n }
for every n ≥
F E.
converges uniformly to f on
E.
#0-7-5 2.2.2:
Suppose lim fn(x) = f(x) ( x F E ) n
∞
A
. Put Mn = sup |fn(x) − f(x)| xFE
Then f n
A
f uniformly on E if and only
if Mn
A
0 as n
A
∞.
P77.:
Suppose f n
f uniformly on E.
A
By definition, for every > 0 there is an integer N such that n ≥ N implies |f n (x) – f(x)| ≤
for all x
F E.
Therefore sup |fn(x) − f(x)| ≤ ε xFE
(i.e.) M n ≤ (i.e) M n
A
if n ≥ N. 0 as n
A ∞.
Conversely, suppose M n
A
0 as n A
∞. Then, given > 0 there is an integer N such that n ≥ N B M n ≤ ε.
(i.e.) n ≥ N
B
B
sup |fn(x) − f(x)| ≤ ε xFE
|fn(x)
− f(x)| ≤
for every xF E.
Therefore fn
A
f uniformly on E.
&-1-;<);;
<0-7-5 76
=6175 +76>-/-6+-. #0-7-5 2.2.3: Suppose
{f n }is
a
sequence
of
functions defined on E, and suppose |f n (x)| ≤ M n (x F E, n = 1,2,3,....). Then if
fn convergenc e uniformly on E
Mn converges.
P77:
Suppose Then,
|
m
for
|
∑ fi(x) i=n
M n converges. arbitrary m
≤
∑ |fi(x)| ≤ ∑ Mi ≤ i=n
>
0,
m
( xF E )
i=n
(x F E) provided m and n are large enough.
(i.e.) there is an integer N such that n ≥ N, m ≥ N, x
E
implies
|f n (x)– f m (x)|≤ By theorem 2.2.1,
f
n
convergence
uniformly on E. C'P $E"#ION": 1. Prove
that
every
uniformly
convergent sequence of bounded functions is uniformly bounded.
SECION-2.3
!NIFORM
CON"ERGENCE AND CONIN!I%
#0-7-5 2.3.1: Suppose f n
f unifor mly on a set E in
a metric space.Let x be a limit point of E, and suppo se that
lim
tAx
fn(t) = An
(n
=
1,2,3,....)
.
Then
{A n }converges, lim
and
f t = lim A
n Ax ( )
t
n
A
n
∞
In other words, the conclusion is that lim
Ax
t
lim fn(t) = lim n
A
∞
n
A
lim
Ax
fn(t)
∞ t
P77.:
Let
> 0 be given.
Since {f n }converges uniformly on E, there exists N such that n ≥ N, m ≥ N,t
F
E|fn(t) − fm(t)| ≤
---------------------(1)
By hypothesis,for n=1,2,3,......, t lim x fn(t) = An A
Letting t
A
--------(2)
x in (1) and using (2), we
get n, m ≥ N implies |A
n–
Am| ≤ ε
Ther efore {A n }is a Cauchy sequence in the set of real numbers R.
Since R is complete, {A
n}
converges
to some point, say, A. |f(t) − A| ≤ |f(t) − fn(t) + fn(t) − An + An − A| ≤ |f(t) − fn(t)| + |fn(t) − An| + |An − A|
Since f n
A
----------------(3)
f uniformly on E, choose a
positive integer n such that ε
|f(t) − fn(t)| ≤ 3 , for all t F E Since An
-------------------- (4)
A,we have m ≥ N implies | An − A| ≤
A
Then,
for
this
n,
we
ε 3
--------- (5)
choose
a
neighborhood V of x such that ε
|f(t) − An| ≤ 3 if t F V J E,t ≠ x.
(
since
lim
t
Ax
fn(t) = An
Using (4),(5) and (6) in (3),we get | f(t) − A| ≤
ε 3
+
if t F V J E,t ≠ x
(i.e.) lim f(t) = A= lim An
Ax
t
(i.e) lim t
Ax
n
A
∞
lim fn(t) = lim n
A
∞
n
A
∞ t
lim
Ax
fn(t)
Double click this page to view clearly
) ε 3
-----(6)
+
ε 3
=ε
#0-7-5 2.3.2:
(Corollary to theorem 2.3.1) If {f
n}
is a sequence of continuous functions on E, and if f
n
A
f uniformly on E,
then f is continuous on E. P77:
Since
{f n }
is
a
sequence
of
continuous functions on E, for every lim fn(t) = fn(x)
n, we have By
theorem
Ax
2.3.1,
lim fn(t) = lim
lim
t
tA x
n
A
∞
n
A
we lim
∞ t
(
Ax
have fn(t)
)
(i.e.) lim fn(t) = lim f n(x) = f(x) since fn f uniformly on E .
Ax
t
n
A
∞
A
(i.e) lim f(t) = f(x)
Ax
t
By definition of continuous function, f is continuous on E.
Double click this page to view clearly
Note:The
converse
of
the
above
theorem is need not be true.
E?)584-: 2
2 n
f n (x) = n x(1 – x ) (0 ≤ x ≤ 1, n = 1,2,3,....)
#0-7-5 2.3.3:
Suppose K is compact, and a. {f n } is a sequence of continuous functions on K, b.
{f n }converges point wise to a continuous function f on K,
c.
f n (x) ≥ f n+1 (x) for all x 1,2,3,.....
Then f n
A
f uniformly on K.
P77:
Put g n = f n – f.
F
K, n=
Since f n and f are continuous, g n is also continuous. Since f n
A
f point wise , g n
A
0 point
wise. Also , since f n (x) ≥ f n+1 (x) for all x F K, f n (x) – f(x) ≥ f n+1 (x) – f(x), for all x F K g n (x) ≥ g n+1 (x) for all x We
have
to
prove
that
fn
F
K.
A
f
uniformly on K. (i.e.) to prove that g n
A
0 uniformly
on K. Let
> 0 be given.
Let K n = {x F K \ g n (x) ≥ (i.e.) K n = {x F K \ g n (x) (i.e.) K n = {x F K \ x F g n (i.e.) K n = g n
–1
([
,∞)).
} F
–1
[
([
,∞)}.
,∞))}.
Since g n is continuous and [
,∞) is
closed, K n is closed ,and hence K n is compact (since closed subsets are compact). Let x F K n+1 . Then g n+1 (x) ≥ Since g n (x) ≥ g n+1 (x) ≥
, xF K n .
Then K n R K n+1 D n. Fix x F K. Since g n (x) A 0 point wise, we see that x G K n if n is sufficiently large. Thus x
G J Kn. J
In other words,
K n is empty.
L K n is empty for some N. It follows
that
0≤g n (x)<
,D x F
Therefore | g n (x) –0| < and for all n ≥ N.
K& D n
≥
N.
for all xF K
(i.e.) g n (i.e.) f n
A
A
0 uniformly on K. f uniformly on K.
D-.161<176:
If X is a metric space,
C(X)
will
denote the set of all complex valued, continuous, bounded functions with domain X. C(X)
consists
of
all
complex
continuous functions on X if X is compact. F
C
We associate with each f (X) its supremum norm ||f|| = sup |f(x)|. xFE Since f is bounded, ||f|| < ∞. Also ||f|| = 0
C
f(x) = 0 for every x
FX
(i.e.) ||f|| = 0 If
h
=
f
C
+
f=0.
g,
then
|h(x)|
=
|f(x)+g(x)|≤ |f(x)|+|g(x)| ≤ ||f||+||g|| for all x F X Hence ||f+g|| = ||h|| ≤ ||f||+||g||. Also
C(X)
is a metric space with the
metric d(f,g) = ||f – g||. #0-7-5 2.3.4: C(X)
is a complete metric space.
P77:
Let {f n }be a Cauchy sequence in C (X). L
to. each
> 0, there exists a
positive integer N such that n, m ≥ N implies ||f n – f m || <
It follows that there is a function f with
domain
converges
X
to
which
uniformly,
(by
{f n } Cauchy
criterio n for uniform co nvergence). By theorem 2.3.2, f is
continuous.
Since f n is bounded and there is an n such that |f(x) – f
n (x)|
<1 for all
x F X, f is bounded. Thus f F
C(X).
Since f n
A
f uniformly on X, we have
||f– f n ||
A
0 as n
A
∞.
C'P $E"#ION" 1. If
{f n }
and
{g n }
converge
uniformly on a set E, prove that {f n + g n } converges uniformly on E.
2. If
{f n }
and
{g n }
converge
uniformly on a set E and if {f
n}
and
of
{g n }are
sequences
bounded functions, prove that {f n g n } converges uniformly on E.
SECION-2.4
!NIFORM
CON"ERGENCE AND INEGRAION
#0-7-5 2.4.1:
Let
be monotonically increasing on
[a,b]. Suppose f
n = (
).on [a,b], for
n = 1,2,3,...., and suppose f n uniformly b
on
[a,b].Then
f
,and
b
∫fd
=n lim ∞ A
a
∫f dα n
a
P77:
Put
n
= sup |f n (x) – f(x)|, the
supremum being taken over a ≤ x ≤ b.
f
(i.e) − εn ≤ f-fn ≤ εn.
----------------- (1)
(i.e.)fn − εn ≤ f ≤ fn + εn b
b _
b
∫( f
− εn) d
n
≤
∫ fd ≤∫ fd ≤∫(f
¯ a
¯ a
b
∫
a
b
(fn − εn) d
≤
∫
a
∫fd
0≤
−
a
b
∫
≤
∫( f
fd
≤
a
b
b
∫(f
≤
¯ a
)dα-∫(fn-εn)dα
n + εn
a
a
b
b
∫ (f
≤
n + εn
∫
= 2 εndα=2εn[α(b) − α(a)] -----(2)
− fn + εn)d
a
a
By theorem 2.2.2,
From(1), 0 ≤
∫fd
∫
− fdα
A
∫fd
=
∫fd
0 as n
A
∞
-----------(3)
).[a,b].
Using(3) in ( 1), we getεn[α(b) − α(a)] ≤
n
a
∫fd
b
a
∫
− fn d
|
∫
a
a
b
∫fd a
b
∫
− a fndα ≤
∫ε dα n
a
≤ n[α(b) − α(a)]
a
− fndα ≤ εn[α(b) − α(a)]
fd
b
b
a
b
b
∫ε dα ≤ ∫fd
b
Therefore
f uniformly on [ a,b]
¯ a
b
|∫
A
b
a
(i.e)
(
∞. fn
¯ a
b _
=(
A
b
a
Therefore
0 as n
n A
b _
(i.e.) f
)dα
n + εn
a
b
∫fd
)dα
n + εn
a
_ b
fd
¯ a b _
b _
A
0 as n
A
b
= lim n
A
∫f dα. n
∞ a
Double click this page to view clearly
∞
)
C'P $E"#ION" 1.
If
fn
=(
).on
[a,b]
and
if
∞
f (x ) =
f ∑ n=1
(x)(a ≤ x ≤ b),
n
the
series converging uniformly on b
[a,b], then
∞
∫fd
=∑
a
n=1
SECION-2.5
b
∫f dα n
a
!NIFORM
CON"ERGENCE AND DIFFERENIAION
#0-7- 2.5.1: Suppose
{f n }
is
a
sequence
of
functions, differentiable on [a,b] and such
that
{f n (x 0 )}
converges
for
some point x 0 on [a,b]. If {f n '} converges uniformly on [a ,b], then {f n } converges unif ormly on [a,b],
to
a
function
f,
f '(x) = lim fn '(x)(a≤x≤b n
A
and
)
∞
P77.:
Let
> 0 be given.
Since
{f n (x 0 )}converges
point
x0
on
convergent
[a,b],
for and
sequence
is
some every
Cauchy
,
choose N such that n ≥ N,
|
|
m ≥ N,t F E implies fn(x0) − fm(x0) ≤
ε 2
------------------(1)
Also, since {f n '} converges uniformly on [a,b], say to f‘, we have ε |fn '(t) − fm '(t)| < 2(b-a) (a≤t≤b )
------------------(2)
Apply Mean Value theorem to the function f n – f m , we get
Double click this page to view clearly
|(fn − fm)(x) − (fn − fm)(t)| = |fn(x) − fn(t) + fm(t)|
|
= (fn(x) − fn(t)) + (fm(x)-fm(t))
|
≤ |x-t||fn '(t) − fm '(t)| ( by MVT ) ε
<|x-t| 2(b-a) (by(2))
------------(3)
ε
≤ 2 .for any x and t on
[a,b], if n,m ≥ N ------------- (4)
|
Also | fn(x) − fm(x)| = fn(x) − fm(x) − fn(x0) + fm(x0) + fn(x0) − fm(x0)
|
||
|
≤ fn(x) − fm(x) − fn(x0) + fm(x0) fn(x0) − fm(x0)
Therefore
ε <2
ε 2
+
=
,for any x on [ a,b],if n,m ≥ N
|
(by(1) and ( 4))
{fn} converges uniformly on [a,b]
Let f (x) = lim fn(x)(a ≤ x ≤ b n
A
)
∞
Let us now fix a point x on [a,b] and ;n(t)
define ;(t)
=
f(t) − f(x) t-x
Allowing n
=
fn(t) − fn(x) t-x
for a ≤ t ≤ b,t ≠ x.
∞ in
A
;n(t),
we get lim n
A
;n(t) =
∞
lim n
A
fn(t) − fn(x) , t-x
∞
lim fn(t) − lim fn(x) n
A
∞
n
A
∞
lim x A
Also
t
and
lim
Ax
f(t) − f(x) t-x
=
t-x
;n(t) ; (t )
=
= lim t-x
t
= ;(t). ----------- (5)
fn(t) − fn(x) t-x lim t-x f(t) − f(x) t-x
= fn '(x) -----------(6)
= f '(x), for a ≤ t ≤ b,t ≠ x
-------------- (7)
The inequality ( 3)can be rewritten as
|
fn(x) − fn(t) − fm(x) + fm(t) t-x
(i.e)
|
fn(x) − f n(t) t-x
−
|<
ε 2(b-a)
fm(x) − f m(t) t-x
(i.e.)|;n(t) − ;m(t)| <
|<
ε 2(b-a)
ε . 2(b-a)
Double click this page to view clearly
The above equation shows that { converges uniformly to
;
Apply theorem 2.3.1 to { ;n ( t )
lim lim t-x n
A
= lim lim
∞
n
A
∞ t-x
;n}
for t ≠ x. ; n },
we get
;n(t).
(i.e) lim ;n(t) = lim fn '(x) ( by(5) and (6)). t-x
L
n
A
∞
f '(x) = lim fn '(x) ( by(7)). n
A
∞
#0-7- 2.5.2:
There
exists
a
real
continuous
function on the real line which is nowhere differentiable. P77:
Define
;(x)
= | x|
( − 1 ≤ x ≤ 1) -------------(1)
Extend the definition of
; (x)
to all
real x by requiring that ;(x+2)
= ; (x )
-----------------------------(2)
Double click this page to view clearly
Then,for all s and t,we have In particular,
|;(s) − ;(t)| = |s| − |t| ≤ |s-t|.
------(3)
1
is conti nuou s on R .
;
(?).
∞
Define f(x) = ∑ n=0
Since 0 ≤
3 4
n
()
n
(4 x)
;
≤ 1,we have | f(x)| =
;
|
∞
∑(
3 4
n=0
)
n
;
∞
≤∑ n=0
∞
n=0
() 3 4
∞
∑ n=0
By
∑ n=0
on
3 4
() 1
n
R .
∑( n=0
3 4
)| n
is a geometric series
3 4
()
;
n
(4 x)
By
3 4
< 1 and
n
theorem
∞
≤
n
with the common ratio hence
||
(4 x)
∞
n
∑
Since
3
(4)
n
converges in R
1
2.2.3,
series
conv erg es uni for mly
theorem
continuous on R
the
.
1
2.3.2,
f
.
Double click this page to view clearly
is
Fix a real number x and a positive integer/m.
1
m=
± 2.4
-m
sign is so chosen that no m
between 4
m
x and 4
where
the
integ er lies
(x +
). This m
m
can be done , since | 4 4
m
|
(x +
m)
–
x |
m
|
= 4 δm = 4 Define
m
=
m
|δm| = 4
m
1
-m
|± 2 4 | = 4
n
m -m 1 4 2
=
1 2
n
(4 (x+δm)) − ;(4 x)
;
δm n
n
1
n
(
When n > m, 4 δm = 4 δm = 4 ± 2 .4
-m
) = ± 2 4n-m = ± 2 22(n-m) = 22(n-m) − 1 1
1
= even integer.
Therefore
(4
= 0. (i.e.)
n
∑ =
=
| |
n=0
;
(
n
m
∑ n=0
4
n=0
δm
; (4
n
x)
n
;
|
(4nx)
4
∞
||
()
=
∑ n=0
n
( )γ| 3 4
n
( ) γ |(since,γ = 0 when n > m) 3 4
3 m γm 4
()
3
)
n
n
n
m-1
≥
|
δm
4 x+δm − ∑
()
5m )) –
= 0 when n > m.
∞
n
3
(x +
f(x+δm) − f(x)
We conclude that ∞
n
−∑ n=0
3 4
m-1
n
( )γ
n
≥
3 m m 4 4
()
−∑ n=0
3 4
n
( ) γ (by (5)) n
Double click this page to view clearly
m-1
≥3
m
n
− ∑3 ≥ 3
m
(
− 1+3+3
2
+....+3
m-1
)
n=0
≥3 ≥
(
m
−
m
(
3 +1 2
As m
A
m
3 −1 3 − 12
)≥3
m
−
(
m
3 −1 2
m
)≥
(
m
)
2.3 − 3 − 1 2
). ∞,δm
A
0
It follows that f is not differentiable at x.
SECION-2.6 EQ!ICONIN!O!S FAMILIES OF F!NCIONS D-.161<176:
Let {f n } be a sequence of functions defined on a set E. We say that {f
n}
is point wise bounded on E if the sequence {f n (x)}is bounded for every x E, that is, if there exists a finitevalued function
; defined on E such
Double click this page to view clearly
that
|f n (x)|
<
; (x)
(x F E, n =
1,2,3,....)
We say that {f n }is uniformly bounded on E if there exis ts a number M such that |f n (x)| < M (x
F E,
n = 1,2,3,....)
Note: If {f n }is uniformly bounded sequence of continuous functions on a compact set E, there need not exist a subsequence which converges point wise on E.
E?)584-: Let f n (x) = sin nx (0 ≤ x ≤ 2
,n =
1,2,3,....) Suppose
there
exists
{n k }such that {sin n
a
k x}
sequence converges,
for every x
[0,27
F
]. In that case,
we have
klim ∞ A
(sin nkx-sin nk+1x) = 0, (0 ≤ x ≤ 2 ) and hence 2
lim (sin nkx-sin nk+1x) = 0, (0 ≤ x ≤ 2 ) k
A
∞
By
Lebesgue's
theorem,
2π
lim k
A
∫(sin n x-sin n
k+1x
k
)
2
--------(1)
dx=0
∞ 0
But 2π
∫(sin n x-sin n
k+1x
k
)
2
dx = 2
, which contradicts(1)
0
Note:
Every
need
not
convergent
contains
a
sequence uniformly
convergent subsequence. For
example
fn(x) =
x 2
2
x + (1 − nx)
2
(0 ≤ x ≤ 1,n=1,2,3,.....)
Then | f n (x) | ≤ 1 so that {f uniformly bounded on [0,1].
n }is
Also lim fn(x) = 0, (0 ≤ x ≤ 1) n
A
∞
But f n (l/n) =1, (n = 1,2,3,....), so that no su bsequence ca n co nverge uniformly on [0,1]. D-.161<176:
A family @ of co mplex functions f defined on a set E in a metric space X is said to be equicontinuous on E if for every
> 0 there exists a
such that |f(x) – f(y)| < d(x,y) <
>0
whenever
, x F E, y F E, and f F @ .Here
d denotes the metric of X. Note:
Every
member
equicontinuous fa mily continuous.
is
of
an
uniformly
#0-7-5 2.6.1:
If {f n } is a point wise bounded sequence of complex functions on a countable set E, then {f n } has a sub seq uen ce {f nk } such that {f nk (x)} converges for every x
F
E .
P77:
Let {x i }, i = 1,2,3,..., be the points of E, arranged in a sequence. Since {f n (x 1 )}is bounded, there exists a subsequence , which we shall denote {f 1,k },
such
converges as k
that A
{f 1,k (x 1 )}
∞.
Let us now consider sequences S
1,
S 2 , S 3 ,....., which we represent by the array
S1: f1,1f1,2f1,3f1,4.... .... S2: f2,1f2,2f2,3f2,4.... .... S3:f3,1f3,2f3,3f3,4.... .... .... ........ ........ ............ and
which
have
the
following
properties: a.
S n is a sub seq uen ce of S n–1 , for n = 2,3,4,...... A
b.
{f n,k (x n )} converges as k
c.
The order in which the functions appear
is
the
same
in
∞.
each
sequ ence; i.e., if one fu nction precedes another in S 1 , they are in the same relation in every S
n,
until one or the other is deleted. Hence, when going from one row in the above array to the next belo w, fu nctions may move to the left but never to the right.
We now go down the diagonal of the arrays; i.e., we consider the sequence S: f 1,1 f 2,2 f 3,3 f 4,4 .... .... By
(c),
the
sequence
S
(except
possibly its first n – 1 terms) is a subsequence
of
1,2,3,......Hence
Sn, (b)
for
n
implies
{f n,n (x i )} converges as n every x i F E.
A
= that
∞, for
#0-7-5 2.6.2:
If K is a compact metric space, if f n F c (K) for n = 1,2,3,....,and if {f n }converges uniformly on K, then {f n } is , equicontinuous on K. P77:
Let
> 0 be given.
Since {f n }converges uniformly, there is an integer N such that n > N implies ||f n – f N || < definition of ?(X) in sec 2.3). Since
continuous
uniformly
– f i (y)| <
(refer
functions
continuous
sets, there is a
.
on
are
compact
> 0 such that |f
i (x)
if 1 ≤ i ≤ N and d(x,y) <
δ. If n > N and d(x,y) <
, it follows
that |fn(x) − fn(y)| ≤ |fn(x) − fN(x) + fN(x) − fN(y) + fN(y) − fn(y)| ≤ |fn(x) − fN(x)| + |fN(x) − fN(y)| + |fN(y) − fn(y)| ≤ < fn − fN < + |fN(x) − fN(y)| + < fN − fn < <
+
+
=3
Therefore {f n } is equicontinuous on K.
#0-7-5 2.6.3:
If K is a compact, if f = 1,2,3,....,and if {f
nF n}
?(K) for n
is point wise
bounded and equico ntin uous on K, then a. b.
{f n } is uniformly bounded on K, {f n }
contains
a
uniformly
convergent subsequence. P77:
a.
Let
> 0 be given.
Since {f n } is equicontinuous on K, there exis ts a
> 0 such tha t
x,y F K d(x,y) < δ B |fn(x) − fn(y)| <
,for all n.
-------------(1)
Since K is compact, there are finitely many points p
1,
p 2 ,.....,
p r in K such that to every x corresponds at least one p
F
i
K
with
d(x, p i ) < Since {f n } is point wise bounded, there exist M i < ∞ such that (6) and ( 7) implies that h(t) < f(t) + (i.e.)f(t) − (i.e.) −
< h (t) < f(t) +
(i.e)|h(t) − f(t)| <
(Ftk )
( tFK ).
(F tK)
(F tK)
|fn(pi)| < Mi for all n.
------------------- (2)
|
If M=max(M1, M2, .....Mr), then|fn(x)| = fn(x) − fn(pi) + fn(pi)
|
|
| |
≤ fn(x) − fn(pi) + fn(pi) <
|
+Mi.(by(2) & (3))
≤ε+M
Therefore,
{f n }
is
uniformly
bounded on K. b.
Let E be a subset of K.
countable
dense
By theorem 2.6.1, {f n } has a subsequence { f ni } such that {f ni (x)} converges for every x
F
Double click this page to view clearly
E .
Put f ni = g i . We
shall
prove
that
{g i }
converges uniformly on K. Let
> 0 be given.
Since {f n } is equicontinuous on K, there exists a
> 0 such that
d(x,y) < δ B |fn(x) − fn(y)| <
, for all n.
----------------(4)
Let V(x,δ) = y F E/d(x,y) < δ .
{
}
Since E is dense in K and K is compact, there are finitely many points x 1 , x 2 ,....., x m in E such that
KO
V(x 1 ,
δ) K .... K V(x m , Since
{g i (x)}
δ) K V(x 2 ,
). converges
for
every x F E, there is an integer N such that
Double click this page to view clearly
|gi(xs) − gj(xs)| <
If
whenever i ≥ N,j ≥ N,1 ≤ s ≤ m. --------( 5)
xFKO
δ) K .... K V(x m ,
V(x 1 ,
δ) K V(x 2 ,
), then x
F V(x s ,
) for some s (i.e.) d(x, x B
|gi(x s ) – g j (x s )| <
s)
< δ
for every
i. If i ≥ N, j ≥ N , |gi(x) − gj(x)| = |gi(x) − gj(xs) + gi(xs) − gj(xs) + gj(xs) − gj(x)|
|
| |
| |
|
≤ gi(x) − gi(xs) + gi(xs) − gj(xs) + gj(xs) − gj(x)
< Therefore,
{g i }
+
+
=3
converges
uniformly on K. (i.e.) {g i } co nverges uniformly on K (i.e.) { f ni } converges uniformly on K
Double click this page to view clearly
(i.e.) {f n } contains a uniformly convergent subsequence. C'P $E"#ION": 1.
Suppose {f n }, {g n } are defined on E, and a.
Σf n has uniformly bo unded partial sums;
b.
gn
c.
g 1 (x)
A
0 uniformly on E; ≥
g 2 (x)
≥.....for every x Prove that on E.
F
≥
g 3 (x)
E.
f n g n converges uniformly
SECION-2.7
HE SONE :
#EIERSRASS HEOREM
#0--5 2.7.1:
If f is a continuous complex function on [a,b], there exists a sequence of polynomials P n su ch t hat lim "
= f(x) uniformly on [a,b]. If f
A
P n (x) ∞
is real,
the P n may be taken real. P:
We may assume, without loss of generality, that [a ,b] = [0,1]. We may also assume that f(0) = f(1) = 0. For if the theorem is proved for this case, consi der g(x) = f(x) – f(0) – x[f(1) – f(0)] (0 ≤ x ≤
1).
Here g(0) = g(1 ) = 0, and if g can be obtained as the limit of a uniformly converge nt sequence of polynomi als , it is clear that the same is
true for f,
since f – g is a polynomial. Furthermore, we define f(x) = 0 for x outside [0,1]. Then f is uniformly continuous on the whole line.
(
We put Qn(x) = cn 1 − x
2 n
)
(n = 1,2,3,....),
------ (1)
1
∫Q (x) dx=1(n=1,2,3,...) --------(2)
where cn is chosen so that
n
−1 1
Now
∫ (1 − x ) −1
1 / √n
1 2 n
2 n
∫ (1 − x )
dx=2
2 n
∫ (1 − x )
dx ≥ 2
−0
dx
0
1 / √n
∫(1 − nx ) dx(by binomial theorem) 2 n
≥2
0
3
[
≥ 2 x-
[
1
nx 3
=2 √n −
]
1 / √n 0 1
3
( √n )
n
3
]
[
1
1
− 0 = 2 √n − 3√n
]
Double click this page to view clearly
=2
2
4
1
[ 3√ n ] = [ 3√ n ] ≥ √ n 1
Equation ( 2) implies that
1
∫ (
cn 1 − x
2 n
)
B
dx=1
−1
1
B 1>cn √n B cn <
−1
----------- (3)
√n
(
≤|x| ≤ 1
where Q n (x )
A
2 n
∫(1 − x ) dx=1
>0(1) and ( 3) implies that Qn(x) < √n 1 − δ
For any
L
cn
2 n
)
------------------ (4)
0 uniformly in
≤|x| ≤ 1.
1
Now set Pn(x) =
∫f(x+t)Q (t)dt n
---------------- (5)
−1 −x
P n (x ) =
1 −x
1
∫f(x+t)Q (t)dt+∫f(x+t)Q (t)dt+∫f(x+t)Q (t)dt n
n
−1
n
−x
1 −x
Put x + t = y. Then dx = dt & t = –1 B y = x –
1,t=
t=1–x B y=1,t=1
B
–x
Pn(x) =
y = 0,
y = x + 1.
0 L
B
1
x+1
∫f(y) Q (y-x)dy+∫f (y) Q (y-x)dy+∫f(y) Q (y-x)dy n
n
x-1
0
n
1
1
=0+
∫f (y) Q (y-x)dy+0(?) n
0
The
RHS
integral
is
clearly
a
polynomial in x. Thus {P n } is a sequence of polynomials whic h are real if f is real.
Double click this page to view clearly
Therefore, given
> 0, we choose
> 0 such that |y – x| < ε
|f(y) − f(x)| < 2 . Let M= sup
x F [0.1]
implies
----------------- (6)
|f(x)| (since f is bounded on[0, 1])
--------(7)
If 0 ≤ x ≤ 1 1
|Pn(x) − f(x)| =
|∫ |∫
1
−1
n
−1
1
=
|
∫Q (t)dt (by(2) & (5))
f(x+t)Qn(t)dt-f(x)
|
(f(x+t) − f(x))Qn(t)dt
−1
1
≤
∫|(f(x+t) − f(x))Q (t)dt| n
−1
−δ
δ
∫|
≤
| ∫|(f(x+t) − f(x))Q (t)dt|
(f(x+t) − f(x))Qn(t)dt +
−1
n
−δ 1
+
∫|(f(x+t) − f(x))Q (t)dt| n
δ -δ
δ
∫(
≤
−1
(f(x+t) − f(x))
−δ
-δ
<
-δ
∫|
)
|f(x+t)| + |f(x)| Qn(t)dt+
∫(M+M) Q (t)dt Q (t)dt n
−1
1
∫(M+M) Qn(t)dt+∫(M+M)Qn(t)dt(by(7)) −1
δ -δ
δ 2
∫√ n ( 1 − δ )
≤ 2M
ε dt+ 2
−1
( (
2 n
< 4M√n 1 − δ ε 2
2
∫ Q (t)dt+2M∫√n(1 − δ )dt(by(4)) n
−δ 2 n
< 2M√n 1 − δ
<
1
) )
ε +2
(1)+2M√n(1 − δ
δ 2 n
) (1 − δ)(by(2))
ε
+ 2.
ε
+ 2 , for large enough n
=ε Therefore lim Pn(x) = f(x) uniformly on[a,b]. n
A
∞
Double click this page to view clearly
n
Cor: For every interval [–a,a] there is a sequence of real polynomials P
n
such that P n (0) = 0 and such that lim Pn(x) = |x| uniformly on [–a,a] n
A
∞
P77.:
By the above theorem, there exists a sequence {P n *} of real polynomials which converges uniformly to |x| on [–a,a]. In particular, P A
n *(0)
A
0 as n
∞. The polynomials P n (x) = P n *(x)
– P n *(0) for n = 1,2,3,..have the desired properties. D-.16<176:
A
family
a
of
complex
functions
defined on a set E is said to be an algeb ra if (i) f+g
F
? (ii)fg
F
? (iii) cf
F
? for all f
F
?,
g F
? and for all
complex constants c, that is, if ? is closed under addition, multiplication, and scalar multiplication. For the algebra of real functions , we have to consider (iii) for all real c. If ? has the property that f
?
F
when ever f n F ? ( n = 1,2,3,....) and fn
A
f uniformly on E, then ? is said
to be uniformly closed. Let
?
be the set of all functions which
are limits of uniform ly convergent sequence of membe rs of ? . Then
?
is
called the uniform closure of ?. Theorem 2.7.2: Let
?
be the uniform
closure of an algebra ? of bounded
functions.
Then
?
is a uniformly
closed algebra. P77.:
If
f F?
and
uniformly
g
F?
, there
convergent
{f n },{g n }such that f n
A
exist
sequences f , gn
A
g
and f n F ? ,g n F ? . Since the functions are bounded, we have f n + g n A f + g, f n g n A fg, cf n A cf, where c is any constant, the convergence is uniform in each case. Hence f +g Therefore
F?
?
, fg
F?
and cf
is an algebra.
SinceB is the closur e of ? , (uniformly).
F?
?
is closed
Definition: Let ? be a family of functions on a set E. Then ? is said to separate points on E if to every pair of distinct point x corresponds a function f
1 ,x 2
F
F
E there
? , such
that f(x 1 ) ≠ f(x 2 ). If to each x function g
F
F
E there corresponds a
? , such that g(x) ≠ 0, we
say that ? Vanishes at no
point of E.
#0--5 2.7.3:
Suppose ? , is an algebra of functions on a set E, ? , separates points on E, and ? ,vanishes at no point of E. Suppose x 1 ,x 2 are distinct points of E, and c 1 ,c 2 are constants (real if ?, is a real algebra). Then ? , contains a
function f such that f(x 1 ) = c 1 , f(x 2 ) = c2. P77.:
Since ? , separates points on E and ? , vanishes at no point of E, we have g(x 1 ) ≠ g(x 2 ), h(x 1 ) ≠ 0, k(x 2 ) ≠ 0, where g,h,k
F
? ,.
Put u = gk – g(x 1 )k, v = gh – g(x 2 )h. Since g,h,k u,v
F
F
? , and ? ,is an algebra,
? , .
Also u(x 1 ) = g(x 1 )k – g(x 1 )k = 0 and v(x 2 )= g(x 2 )h – g(x 2 )h = 0, u(x 2 ) = g(x 2 )k – g(x 1 )k ≠ 0 & v(x 1 ) = g(x 1 )h – g(x 2 )h ≠ 0. Let f=
c1 v v(x1)
+
c2 u u(x2)
.
Then f(x1) = f(x 2 ) =
c1v(x2) v(x1)
c1v(x1) v(x1)
+
+
c2u(x2) u(x2)
c 2u(x1) u(x2)
= c1 + 0 = c 1 and
= 0 + c 2 = c2
"#ONE'" GENE!ALI(A#ION OF #HE &EIE!"#!A"" #HEO!EM
#0--5 2.7.4:
Let ? be an algebra of real continuou s functions on a compact set K. If ? separates
points
on
K
and
if
?
vanishes at no point of K, then the uniform closure
?
of ? consists of all
real continuous functions on K.
We shall divide the proof into four steps. "#EP 1:
If f
F ?
then |f|
F ?
P:77.
Let a=sup | f(x)|, ( xFK ). Let By
------------(1)
> 0 be given. the
corollary
to
the
Stone-
Weierstrass theorem, there exist real numbers
c 1 ,c 2 ,....,c n
such
that
n i
|
∑ i=1
c iy
F
− |y| <
|
,
y [-a,a].
-------(2)
Since ? is an algebra and f F ? B c i i
f ? for i = 1,2,... ,n. n
Hence
the
function
g=
c if ∑ i=1
i
is
a
member of ? . By (1) and (2), we have |g(x) |f(x)|| <
(x F K)
Since ?
?
, |f| F
is uniformly clos ed and g(x) ?
"#EP 2:
F
.
F?
If f
F?
and g
max(f,g) and min(f,g)
F?
, then
.
By max(f,g) we mean the function h defined by
h (x ) =
f(x) if f(x) ≥ g(x),
{
g (x )
and min(f,g) =
{
if f(x)
f(x) if f(x) < g(x), g(x) if f(x) ≥ g(x),
.
P77.:
Consider max(f,g) =
the f+g 2
and min(f,g) =
+
identities |f-g|
f+g 2
2
−
|f-g| 2
.
max
Since gF
?
?
is an algebra and f
F?
and
, we have
f+g,f-g F B. Also
f+g |f-g| 2 , 2 F B
Therefore max(f,g) and min(f,g)
F ?
. By
can
be
extended to any finite set functio ns, (i.e.) if f 1 ,f 2 ,.. .,f n
of
,
iteration,
then
the
result
max(f 1 ,f 2 ,...,f n ) F
?
F
?
and
min(f 1 ,f 2 ,.. .,f n ) F? "#EP
3:
Given a real function f,
continuous on K, a point x
F K,
> 0, there exists a function g
and x F?
such that g x (x) = f(x) and g x (t) > f(t) –
(t F K)
P77.:
By hypothesis
? O
? , and ? satisfies
the hypothesis of theorem 2.7.3, also
satisfies
the
hypothesis
?
of
theorem 2.7.3. Hence, for every y
F K,
we can find a
function h y F? such that h y (x)=f(x),h y =f(y)
(refer
theorem
2.7.3)-------(3) By the continuity of h an open set J
y,
y
there exists
containing y, such
that h y( t ) > f ( t ) −
( t F Jy)
-------------( 4)
Since K is compact, there is finite set of points y 1 ,y 2 ,...,y n such that
K
O
Jy1 K Jy2 K ...
K
Jyn. -------------( 5)
Put g x = max(h y1 ,h y2 ,...,h yn ). By step 2, g
F? .
By (3), (4) and (5), we have g x (x) = f(x) and g x (t) > f(t) – "#EP
4:
Given a real function f,
continuous on K, and exists a function h F – f(x)| <
?
> 0, there
such that |h(x)
. (xF K)
P77.:
Let us consider the functions g x , for eaph x F K, constructed in Step 3. By the continuity of g x , there exist open sets V x containing x, such that
g x( t ) < f( t ) +
( t F Vx) . -----------( 6)
Since K is compact, there exists a finite set of points x 1 ,X 2 ,...,x m such that K
O
Vx1 K Vx2 K ...
By Step 2, h
F?
K
Vxm. -----------( 7)
.
By Step 3, h(t) > f(t) –
(t
F K).
(6) and (7) implies that h(t) < f(t) + (t F K). (i.e.) f(t) – (i.e.) –
< h(t) < f(t) +
< h(t) – f(t) <
(i.e.) |h(t) – f(t)| <
(t
(t F K).
(tF K). F
K).
#0-- 2.7.5:
Suppose ? is a self-ad joint algebra of complex continuous functions on a compact set K, ? separates points on K and ? vanishes at no point of K. Then the uniform closure B of ? consists of all complex continuous functions on K. In other words ? is dense in C(X). P:
Let ? r be the set of all real functions on K which belong to ? If f
F
? and f =
¯ u + iv, with u,v real , then 2u = f + f , and since ? is a self-ad joint, we see that u F ? r . If x 1 ≠ x 2 , there exists f that f(x 1 ) = 1, f(x 2 ) = 0.
F
? such
Hence 0 = u(x 2 ) ≠ u(x 1 ) = 1. Therefore ? r separates points on K. If x F K, then g(x) ≠ 0 for some g F ? , and there is a complex number $ such that $ g(x) > 0. If f = $ g , f = u+iv, it follows that u(x) > 0. Hence ? R vanishes at no point of K. Therefore ? R sa tisfies the hypothesi s of theorem 2.7.4. It follows that every real continuous function on K lies in the uniform closure of ? R , and hence lies in
?
. If
f is a complex continuous function on K, f = u + iv, then u
F?
, vF
?
.
Hence f
F ?
.
C'P $E"#ION": 1.
Prove that the set C (X) of all complex valued, continuous, bounded functions with domain X, with d(f,g) = ||f – g|| is a metric space.
2. Distin guish
between uniformly convergent and point wise convergent.
$NI#-3
$61< "<:=+<=:
Section 3.1: Power series Section 3.2: The exponential and Logarithmic functions Sectio n 3.3: The trigonom etric Functions Section
3.4:
completeness
The of
the
algebraic Complex
Field Section 3.5: Fourier series Section function
3.6:
The
Gamma
I6<:7,=+<176
In this unit we shall derive some properties
of
functions which
are
represented by power series. We also discuss
the
concept
Exponential, Trigonometric
of
the
Logarithmic, functions
,
Gamma
function and Fourier series.
SECION-3.1
PO#ER SERIES
We have already discussed about the power serie s in Analy sis I in the first year. The form of the power series ∞
is f(x) = ∑ cnx
n
n=0 ∞
f(x) = ∑ cn(x-a) n=0
n
or more generally
These are ca lled analytic fu nctions. We shall discu ss the power series only for real values of x. Instead of circles
of
convergence
we
shall
encounter intervals of convergence. ∞
The series f (x) = ∑ cnx
n
converges
n=0
for all x in (– R ,R), for some R. ∞
If
the
series
f
(x) = ∑ cn(x-a)
n
n=0
converges for |x – a | < R, then f is said to be expanded in a power series about the point x = a. #0-7-5 3.1.1: ∞
Suppose
the
series
∑ cnx n=0
converges for |x| < R, and define
n
∞
f(x) = ∑ cnx
n
( |x | < R )
. Then
the
n=0 ∞ n
c n=0 ∑
series
on [– R +
nx
conve rges unifo rmly
,R s], no matter which
> 0 is chosen. The function f is continuous and differentiable in (– R ,R), and ∞
f '(x) = ∑ ncnx
n-1
( |x | < R )
n=0
P77.:
Let
> 0 be given.
For |x| ≤ R – |c n (R –
n
) |.
, we have |c
nx
n
| ≤
∞
∑ cn(R-ε)
Since
n
converges
n=0
abso lutely ( M every power series converges absolutely in the interior of its interval of convergenc
e , by the
root test) ∞
the
L
series
cnx
n
converges
n=0 ∑
uniformly on [ –R +
, R –
].(by
theorem 2.2.3) Since
lim n
A
n
√n=1 n
limsup n|cn| = limsup n ∞ n ∞
√
have
∞
n
A
we
A
cn| | √ ∞
Therefore the series f (x) = ∑ cnx n=0
n
∞
and the ser ies f ' (x) = ∑ ncnx
n-1
have
n=1
the same interval of convergence. ∞
Since f ' (x) = ∑ ncnx
n-1
is a power
n=1
series, it converges uniformly in [– R +
,R –
], for every
> 0 we
can apply theorem 2.5.1( for series instead
of
sequence),
(i.e.)
∞
f '(x) = ∑ ncnx
n-1
holds for |x|
n=1
holds if |x| ≤ R –
But, given any x such that |x| < R, we can find an > 0 such that |x|
This
shows
that
f ' (x) = ∑ ncnx n=1
n-1
holds for |x| < R. Cor: Under the hypothesis of the above theorem, f has derivatives of all orders in (– R ,R), which are given by ∞
f
( k)
(x) = ∑ n(n-1)....(n-k+1)cnx
n-k
n=k
In particular, f
(k)
(0) = k!c k , (k =
0,1,2,....). P77.:
By
the
above
theorem
∞ n
f(x) = ∑ cnx we get n=0 ∞
f '(x) = ∑ ncnx n=1
n-1
from
Apply theorem 3.1.1, to f ‘, we get Successively apply theorem 3.1.1 to f (3)
”,f
,...., we get ∞
(k )
f
(x) = ∑n(n-1)....(n-k+1)cnx
n-k
, -----------(1)
n=1
Putting x = 0 in (1), we get f
(k)
(0)=
k!c k , (k = 0,1,2,....).
A*-4'; #0-7-5 #0-7-5 3.1,2: Suppose
cn
converges.
Put
∞ n
f (k ) =
c n=1 ∑
nx
( −1
lim f(x) = ∑ cn
Then x
A1
n=1
P77:
Let s n = c 0 + c 1 + ....+ c n , s –1 = 0.
m
Then
m
∑ c nx
n
= ∑ (sn − sn-1)x
n=0
n
n=0 0
1
2
= (s0 − s − 1)x + (s1 − s0)x + (s2 − s1)x +...+ 1
1
2
2
= s01 + s1x − s0x + s2x − s1x ..... − sm-1x
m-1
(sm − sm-1)x
+ smx
m
m
= (1 − x)s0 + (1 − x)s1x1 + (1 − x)s2x2....(1 − x)sm-1xm-1 + smxm m-1 n
= (1-x)∑ snx + smx
m
n=0 ∞
For | x| < 1, let m
A
∞,we get
m n
∑ cnx = (1 − x)∑ snx n=0
n
n=0
∞
(i.e.)f(x) = (1 − x)∑ snx
n
n=0
Since
c n converges to s (say).
Then its partial sum sequence {s converges to s.
(i.e.) lim sn = s. n
Let
A
∞
> 0 be given. ε
Choose N so that n>N B |s-sn| < 2 . ---------- (1) ∞
By the geometric series test,we have
∑x
n
= 1 if | x|<1.
n=0
Double click this page to view clearly
n}
∞ n (i.e)(1 − x)∑ x = 1 if | x| < 1. ------------ (2). n=0 ∞
Now to prove that
lim
x
A1
n
f(x) = ∑ c = s n=0
∞
∞
∞
|f(x)-s| = (1-x)∑ snxn − s = (1 − x)∑ snxn − s(1 − x)∑ snxn (by(2))
| |
n=0 ∞
n
= (1-x)∑ (sn-s)x n=0
|| |
n=0
n=0
∞ n
| |(
≤ ( 1 − x)∑ |sn-s| x
M
|x+y| ≤ |x| + |y|)
n=0 ∞
∞ n
n
≤ ( 1 − x)∑ |sn-s||x| + (1 − x)∑ |sn-s||x| n=0
n=N+1
n
∞ n
n
ε
≤ ( 1 − x)∑ |sn-s||x| + 2 (1 − x)∑ |x| (by(1)) n=0
n=N+1
N n
ε
< (1 − x)∑ |sn-s||x| + 2 .
---------------(3)
n=0
Choose
> 0 such that 1-x <
Then
(3) ε
becomes
ε
f(x) − s < 2+ 2=
|
|
(i.e.)|f(x) − s| <
if x>1∞
(i.e) lim f(x) = s =∑ cn x
A1
n=0
Double click this page to view clearly
|
Note:If Σ a n ,Σ b n , Σc n , converge to A,B,C , and if c
n
= a 0 b n + a 1 b n–1
+.... + a n b 0 , then C = AB. #0-7-5 3.1.3:
Given a double sequence {a 1,2,3,...,
j
=
ij },
1,2,3,...,
∞
suppose that
∞
∑ |aij| = bi ( i=1,2,3,....) and
∑
i =
biconverges.Then
j=1
∞
∞
∞
∑ ∑ aij = ∑ ∑ aij. i=1 j=1
j=1 i=1
Let E be a countable set, consisting of the points x 0 ,x 1 ,x 2 ,...,x n , and suppose x n
A
x 0 as
A
∞. Define
P77.: ∞
Let
∑ |aij| = bi
(i=1,2,3,....)
-----------------(1)
j=1 ∞
fi(x0) = ∑ aij(i=1,2,3,...) ----------(2) j=1 n
fi(xn) = ∑ aij(i,n=1,2,3,...) ----------(3) j=1 ∞
g(x) = ∑ aijfi(x)( xFE )
---------- (4)
i=1
Double click this page to view clearly
Now, (2) and (3), together with (1), we get
n
∞
fi(n) = ∑ aij j=1
(i.e.) x n
A
A
∑ aij = fi(x0) as n
A
∞
f i (x 0 ) as n
A
j=1
x 0 B f i (x n )
A
∞. This shows that each f
i
is continuous
at x 0 . ∞
Now | fi(x)| = ∑ |aij| = bi for x F E &i=1,2,3,.... j=1 ∞ L
g(x) = ∑ fi(x) converges uniformly. i=1
By theorem 2.3.1, g is continuous at x0.
Double click this page to view clearly
∞
Therefore
∞
∞
∑ ∑ aij = ∑ fi(x0) (by(2)) i=1 j=1
i=1
=g(x0) ( by(4)) = lim g(xn) n
A
∞ ∞
= lim n
A
∑ fi(xn)(by(4))
∞ i=1 ∞
= lim n
A
∑ ∑ (aij)(by(3))
∞ i=1 j=1 ∞
= lim n
A
∑ ∑ (aij)(by(3)) n
∞ L
∞
∞
A
∞
∞ j=1 i=1
= lim n
n
∞
∞
∞
∑ ∑ (aij) = ∑ ∑ aij
∞ j=1 i=1
j=1 i=1
∞
∑ ∑ aij = ∑ ∑ aij i=1 j=1
j=1 i=1
#ALO!'" #HEO!EM
#0-7-5 3.1.4: ∞
Su ppose f (x) = ∑ cnx
n
, the series
n=0
converging in |x| < R. If –R< a < R, then f can be expanded in a power series about the point x = a which Double click this page to view clearly
converges in | x – a | < R – |a|, and ∞
f (x ) = ∑
f
(n)
(a )
(x-a) n!
n
(|x-a| < R-|a|)
n=0
P77.: ∞
We have f(x) = ∑ cnx
n
n=0 ∞
=∑ cn(x-a+a)
n
n=0 ∞
=
∑ cn((x-a)+a)
n
n=0 ∞
(
n
=∑ c n
∑
n=0
m=0
)
n n-m m a x-a) ( m
( )
Therefore f(x) can be extended in the form of power series about the point x = a. ∞
But
n
∑∑ n=0
m=0
∞
|( ) cn
|
n n n-m m a x-a) = ∑ |cn|(|x-a| + |a|) ( m n=0
which converges if |x – a| + |a| < (i.e.) if |x – a| < R –
|a|
R.
We know that, by corollary to the theorem 3.1.1, f(k)(0) = k!ck.
(k=0,1,2,....).
( k)
(i.e.)ck = ∞ L
(0)
f
f (x ) = ∑
k!
f
(n)
(k=0,1,2,...)
(a )
(x-a) n!
n
(|x-a| < R-|a|)
n=0
#0-7- 3.1.5:
Suppose the series
an x
n
and
bn x
n
converge in the segment S = (–R,R). Let E be the set of all x
F
S at which
∞
∑ anx n=0
∞ n
=
∑ bn x
n
n=0
If E has a limit point in S, then a n = b n for n = 0,1,2,3, ....
∞
Hence
∞ n
∑ a nx n=0
n
= ∑ bnx holds for all n=0
x F S. P77.:
Put
cn
=
an
–
bn
and
∞
f(x) = ∑ cnx
n
( xFS )
n=0
∞ n
= ∑ (an − bn)x = 0 for x F S.(by hypothesis) n=0
Let A be the set of all limit points of E in S. Let B be the set of all other points of S. By the definition of limit point, B is open. Let x 0 F A.
By
the
above
theorem,
∞
f(x) = ∑ dn(x-x0)
n
(|x-x0| < R-|x0|)
n=0
Now to prove that d n = 0 for all n. Suppose there exist a smallest nonnegative integer k such that d
k
≠ 0.
k
f(x) = (x-x0) g(x) |x-x0| < R-|x0| ,
(
)
∞
where g(x) = ∑ dn+k(x-x0)
m
m=0
Since g is continuous at x 0 , and g(x 0 ) = d k ≠ 0, there exists a
> 0 such
that g(x 0 ) = d k ≠ 0 if |x – x 0 | < k
Therefore f(x) = (x – x 0 ) g(x) ≠ 0 if 0 < |x – x 0 | <
, which is a
contradiction to the fact that x 0 is a limit point of E.
Therefore d n = 0 for all n. ∞ n
So f(x) = ∑ dn(x-x0) = 0 if | x-x0| < R-|x0| n=0
(i.e.) in a neighborhood of x
0.
Therefore A is open. (i.e.) A and B are disjoint open sets. (i.e.) A and B are separated. Since S = A
K
B and S is connected,
one of A and B must be empty. By hypothesis A is not empty. Hence B is empty and A = S. Since f is continuous in S, A O E. Thus E = S and
(n)
cn =
f
(0 ) n!
= 0 (n=0,1,2,....)
an = bn for n=0,1,2,3,.... ∞
∑ a nx
∞ n
n
= ∑ bnx holds for all x S
n=0
n=0
C'P $E"#ION":
1.
Define f(x) =
e
−1
2
/ x ( x≠0 )
.Prove that f has derivatives of all
(x=0)
0
{ order s at x = 0 and that f
(n)
(0) =
0 for n = 1,2,3,...
SECION-3.2
HE
E$PONENIAL AND LOGARIHMIC F!NCIONS
D-.161<176: ∞
n
z E(z) = ∑ n! n=0
Note
1:
By
the
ratio
test,
E(z)
converges for every complex z. Note
2:
(Addition ∞
n
z E(z)E(w) = ∑ n!
∞
m
w ∑ m!
n=0
m=0
∞
n
k
=∑ ∑ n=0
formula)
k=0
n-k
z w k!(n-k) !
∞
n
n=0
k=0
∞
(z+w) 1 n k n-k =∑ ∑ z w =∑ n! k n!
()
n
n=0
= E(z+w), where z and w are complex numbers.
Note 3: E(z)E(–z) = E(z – z) = E(0) = 1, where,z is a complex number. L
E(z) ≠ 0 for all z.
By the definition, E(x) > 0 if x > 0 and E(x) > 0 for all real x. Again by the definition, E(x) x
A
A
+∞ as
+∞ and E(x) A 0 as x A – ∞ along
the real axis.
Double click this page to view clearly
Also 0 < x < y implies E(x) < E(y) and E(–y) < E(–x). Hence E is strictly increasing on the whole real axis. lim h=0
E(z+h) − E(z) h
= E(z)lim h=0
E( h) − 1 h
= E(z).1 = E(z)
By iteration of the addition formula gives E(z 1 + z 2 + ...+ z n ) = E(z 1 )E(z 2 ). . .E(z n ). If z 1 = z 2 = ...= z n = 1,then E(n) = n
e ,n= 1,2,3,...(
M
E(1) = e)
If p = n/m, where n and m are positive integers, then [E(p)]
m
= E(mp) = E(n) = e
E(p) = e rational).
p
and E(–p) = e
n
, so that
–p
(p>0, p
#0-7-5 3.2.1:
Let
e
x
be
defined
on
∞
xn n!
x
e = E (x ) = ∑ n=0
a.
x
e
is
continuous
and
differentiable for all x; x
x
b.
(e ) ’= e
;
c.
e is a strictly increasing function
x
of x, and e d.
(d) e
e.
e x
x
A
A
x+y
A
x
y
= e e ; A
+∞ and e
x
A
0 as
– ∞; n
x
> 0;
+∞ as x
lim x e
f.
x
−x
= 0 for every n.
+∞
P77:
For the proof of (a) to (e), refer Note 1,2,3.
∞
x
x
n
(f)By definition e = ∑ n! n=0 2
x!
=1+ 1 ! + > x (i.e.)e >
n
x x
(n+1) !
B e
−x
x
x
n
x
n+1
.... + n! + (n+1) ! + .....
n+1
(n+1) !
<
x 2! +
for x>0
(n+1)! n
x x
-x n
B e x <
(n+1) ! x
A 0 as x A +∞;
n -x (i.e.) lim x e = 0 for every n. x
A
+∞
Note:Since
E is strictly increasing 1
and differentiable on R , it has an inverse function L, which is also strictly increasing and differentiable and whose domain is E(R
1
), that is,
the set of all positive numbers, L is defined by E(L(y)) = y (y > 0) or L(E(x)) = x (x real). C'P $E"#ION": 1.
Find the following limits. lim
i. x
A0
e-(1 + x) x
1/x
n log n
1/n
− 1]
SECION-3.3
HE
ii.
lim n
A
∞
[n
RIGONOMERIC F!NCIONS
Let C(x) =
us 1 2
define 1
[E(ix) + E(-ix)] and S(x) = 2i [E(ix) − E(-ix)]
¯
¯ Since E z = E(z), C(x) and S(x) are
()
real for real x. Also E(ix) = C(x) + iS(X) (i.e.) C(x) and S(x) are real and imaginary parts of E(ix),respectively, if x is real.
¯
|E(ix)|2 = E(ix)E(ix) = E(ix)E(-ix) = 1, so that |E(ix)| = 1(x real) , so that |E(ix)| = 1 (x real).
Also C(0) = 1 and S(0) = 0 , and C'(x) = –S(x), S'(x) = C(x).
Double click this page to view clearly
Now
to
positive
show real
that
there
number x
exist
such
a
that
C(x)=0. Suppose C(x) ≠ 0 for all x. Since C(0) = 1, we have C(x) > 0 for all x > 0. Since S(0) = 0 and S'(x) = C(x), we have S'(x) > 0 for all x > 0. L
S(x) is strictly increasing function.
If 0 < x < y then S(x) < S(y). #
y
(i.e.)S(x)(y-x) <
∫
S(t)dt <
x
∫ − C '(!)d! = -(C(t))
y x
= − [C(y) − C(x)]
"
= [C(x) – C(y)] 2
2
2
Since 1 = |E(ix)| = C (x) + S (x), 2
C (x) ≤ 1.
Double click this page to view clearly
L
C(x) and – C(x) ≤ 1.
L
[C(x) – C(y)] ≤ 2.
(i.e.)S(x) (y – x) ≤ 2. Since S(x) > 0 this inequality cannot be true for large values of y , we get a contradiction. L E
a positive number x such that
C(x) = 0. Let
x0
be
the
smallest
positive
integer such that C(x 0 ) = 0.
Define the number Then
C(
by
=
2x 0 .
/2) = C(x 0 ) = 0
Since E(ix) = C(x) + iS(X) & |E(ix)| = 1, we have S(
/2) = ±1
Since C(x) > 0 in (0,
/2), S is an
increasing function in (0,
/2)
Therefore S( E(πi)=E
πi
/2) = 1. Thus
πi
πi
.
( πi2 ) = i
πi
( 2 + 2 )=E( 2 ).E( 2 )=i.i=-1
E(2πi)=E(πi+πi)=E(πi).E(πi) = ( − 1)( − 1) = 1. Also E(z+2πi)=E(z).E(2πi)=E(z)
#0-7-5 3.3.1: a.
The function E is periodic, with period 2
b.
The
i,
functions
C
periodic, with period 2
and
S
are
,
c.
If 0 < t < 2
, then E(it) ≠ 1,
d.
If z is a complex number with |z| = 1, there is a unique t in [0, 2 such that E(it) = z.
)
P77.:
a.
Since
E(z+2
i)
=
E(z),
periodic, with period 2 b.
C(x+2
)=
1 2
E
is
i.
[E(i(x+2 )) + E(-i(x+2 ))] 1 2
=
[E(ix+2
)i + E(-ix-i2π))]
1
= 2 [E(ix) + E(-ix)](Since E(2πi) = 1) =C(x)
Therefore C(x) is periodic with period 2 Similarly S(x) is periodic with period 2 c.
Suppose 0 < t <
/2 and E(it) =
x + iy, where x & y are real. L
0 < x < 1 & 0 < y < 1.
1 = |E(it)|
2
= x
E(4it) = (E(it)) – 6
2 2
y
+ y
4
2
4
+ y
2
. 4
= (x + iy) = x
+ 4ixy(x
2
2
– y )
4
If E(4it) is real, then x 2
, that is x Since x
2
½ and y
+ (1/2)
2
2
= 0
2
2
= 1,2x
2
= 1B x
2
=
= ½.
E(4it) = (1/2)
L
– y
= y .
+ y
2
2
2
2
– 6(l/2) (l/2)
2
+ 4ixy(0)
= 1/4 – 6/4 + 1/4 = – 4/4 = –1. L E(it) ≠ 1. d.
Choose z so that |z| = 1. Write z = x + iy, with x and y real. Suppose first that x ≥ 0 and y ≥ 0. On [0,
/2], C decreases from 1
to 0. Hence C(t) = x for some t F [0, 2].
/
Since C [0,
2
+ S
2
= 1 and S ≥ 0 on
/2], it follows that z = E(it).
If x < 0 and y ≥ 0, the preceding conditions are satisfied by –iz . Hence –iz = E(it) for some t F [0, /2], and since i = E(i obtain z = E(i(t+
/2), we
/2)).
Finally if y < 0, the preceding two cases show that –z = E(it) for some t F (0, –E(it) = E(i(t+
). Hence z =
)).
Suppose 0 ≤ t 1 < t 2 < 2π , E(it 2 )[E(it 1 )
–1
= E(i(t 2 – t 1 )) ≠
1( by (c)) Therefore there is a unique t in [0,2
) such that E(it) = z.
C'P $E"#ION": 1.
π
2
2
π
If 0
<
sinx x
<1
SECION-3.4
HE ALGEBRAIC
COMPLEENESS OF HE COMPLE$ FIELD
#0-7-5 3.4.1:
Suppose
a 0 ,a 1 ,...,a n
are
complex n
numbers, n ≥ 1, a n ≠ 0,P(z) =
∑
a kz
k
0
. Then P(z) = 0 for some complex number z. P77:
Without loss of generality we assume that a n = 1.
Put
= inf |P(z)| (z complex) .
If |z| = R, then |P(z)| = | a 0 + a 1 z + n
... + a n z |=|a n
|z | – |a n –1 z
n–1
0+
n
a 1 z + ... + z | ≥
| –.....– |a 0 |
n
≥ R – |a n–1 |R
n–1
n
= R [1 – |a n–1 |R A
– .... – |a 0 | –1
–.....– |a 0 |R
–n
]
∞ as R A ∞
Hence there exist R 0 such that |P(z)| >
if |z| > R 0 .
Since |P| is continuous on the closed disc with centre at 0 and radius R 0 , |P(z 0 )| = Claim:
for some z 0 . = 0.
Suppose
≠ 0.
Put Q(z) =
|
P(z+z0) P(z0)
|
Since P(z0) = L
P(z+z0) p(z0)
.then Q(0) =
P(z0) P(z0)
= 1.
=inf| P(z)|, P(z+z0) ≥ P(z0)
≥ 1.(i.e) Q(z) ≥ 1 for all z.
L
there is a smallest integer k, 1 ≤ k k
≤ n, such that Q(z) = 1 + b k z + a 1 z n
+.... + b n z , b k ≠ 0. By theorem 3.3.1(d), there is a real such that e
ikθ
b k = – |b k |. k ikθ
If r > 0 and |b k | < 1, |1 + b k r e
|
k
= 1 – r |b k | so that |Q(re
iθ
k
)| ≤ 1 – r {|b k | – r|b k+1 | –
.... – r
n–k
For
sufficiently
|b n |}
expression
in
small
braces
is
r,
the
positive.
Hence |Q(re
iθ
)| < 1, which is a contradiction
to Q(z) ≥ 1 for all z.
= 0, that is P(z 0 ) = 0.
L
SECION-3.5
FO!RIER SERIES
D-.161<176:
A trigonometric polynomial is a finite sum
of
the
form
N
f( x ) = a0 +
(a ∑ n=1
ncos
nx+bn sin nx)(x real)
where a 0 ,a 1 ,.. .,a N ,b 0 ,b 1 ,.. .,b N are complex C (x ) =
1 2
numbers,Since 1
[E(ix) + E(-ix)] and S(x) = 2! [E(ix) − E(-ix)], f(x)
can also be written in the form N
f (x ) =
cne ∑ −N
Note
inx
(x real)
1:
polynomial 2
Every is periodic
trigonometric with
period
Note2: If n is a nonzero integer,
e
inx
which is also has period 2 π 1 2π
inx
is the derivative of e
1
inx
∫e
dx =
-π
{
/in,
Hence
if n=0
0 if n=±1,±2,... N
If we multiply f
(x) = ∑ cne
inx
by e
imx
,
-N
where m is an integer, if we integrate the
π 1
cm= 2π
product,
∫ f( x ) e
we
get
-imx
dx for |m| ≤ N.
-π
If |m| > N, the above integral is ze
ro.
Note 3: The trigonometric polynomial N
f(x) = ∑ cne −N
= 0,1,...,N.
inx
is real iff c
-n
¯
= cn for n
Note 4: We define a trigonom etric series to be a series of the form ∞
∑ cn e
inx
(x real) the nth partial sum
−∞ N
of this series is defined to be
∑ cne
inx
−N
Note 5: If f is an integrable function on [–
,
], the numbers cm for all
integers m are called the Fourier coefficients
of
f,
and
the
series
∞
∑ cn e
inx
formed
with
these
the
Fourier
−∞
coefficients series of f.
is
called
D-.161<176: Let {
;n}
(n = 1,2,3,...) be a
sequ ence of complex fu nctions on [a,b], such that
¯
∞
∫
; n (x ); m (x )
dx=0( n≠m ) (n ≠ m).
−∞
Then {
;n
} is said to be an
orthogonal sy stem of functio ns on b
∫|
[a,b]. If, in addition
; n (x )
2
| dx = 1,
a
, for all n, {
;n
} is said to be
orthonormal.
E?)584-: The
fu nctions
(2π)
−
1 2
e
orthonormal system on [–
inx
,
form
an
].
Note: If { ; n } is orthonormal on [a,b]
and
if
¯
b
cn =
∫
f(t);n(t) dt (n=1,2,...) we call c n
a
the
nth
Fourier
relative to {
coefficients
of
f
; n }. ∞
We write f (x) N
∑ c ; (x) and call this n
n
1
series the Fourier series of f. #0-7-3.5.1:
Let{
;n}
be orthonormal on [a,b]. n
Let s n(x) = ∑ cm;m(x) be the nth m=1
partial sum of the Fourier series of n
f, and suppose t
(x) = ∑ γm;m(x)
n
m=1 b
.Then
∫|f-sn| a
b 2
dx ≤
∫|f-tn| a
2
dx
and
equality holds iff
=c m ,(m =
m
1,2,...,n). P77.:
Let ∫ denote the integral over [a,b], the sum from 1 to n.
∫
Then
¯
¯ ¯ γ ; =
∫∑
ft n =
f
m
m
∑
¯ ¯ γ f; = m
∫
m
¯∫
∑
¯ γ c
m m
(b# !he defini!in of cm). Now
2
∫|tn|
2
=
∫
¯
tntn =
b 2
∫|f-t | dx =∫(f-t )( n
n
a
b
∫ a
∫
¯
∫
∫
b
∫
∫
a
a
¯−
mγm
a
∫|f| dx-∑ |cm| a
m=1
b
∫(f¯f − ft¯ − t ¯f + t ¯t ) dx n
n
n n
a
∫t ¯t dx n n
2
b 2
∫|t | dx n
a
∑ c¯γ − ∑ γ¯ γ m m
b 2
∑
a
b
∫|f| dx-∑ c 2
n
b
¯ tn fdx+
a
b
=
m=1
)
2 ¯ ¯ |f| dx- ftndx- tn fdx+
a
=
m=1
b
ftndx-
a
b
=
∑
¯ ¯ f -tn dx=
a
¯ f fdx-
∑
γm;m =
;n
b
b
n
γm;m
(since { } is orthonormal)
= ∑ |γm|
=
∫
n
+
∑
m
2
|γm − cm|
m
----------(1)
,
Double click this page to view clearly
¯¯ ∑ γm;m n
γm;m
m=1
which
is
evidently
minimized
iff
γ m − cm b
L
b 2dx
∫|f-s | n
≤
a
∫|f-t | n
2
dx
a
b
Put in
m
= cm(1), we get
b 2
2
∫|f-t | dx=∫|f| dx-∑ |c n
a b
Since
m
|
2
a
b 2
2
∫|f-t | dx ≥ 0,∫|f| dx-∑ |c n
a
m
|
2
≥0
a
b
L
2
∫|f| dx ≥ ∑ |c
|
2
m
a n
b
2
∫|s (x)| dx =∑ |c n
2
m
|
m=1
≤
2
∫|f(x)| dx a
#0-7-3.5.2: (B-; ;-4' ; 16-9 =41 <@) If { ; n } is
orthonormal
on
∞
∞
b 2
2
[a,b] and if f(x) N ∑ cn; (x), then ∑ |cn| ≤ ∫|f(x)| dx n
n=1
n=1
.In particu lar lim cn = 0. n
A
∞
Double click this page to view clearly
a
P77.:
From the above theorem, we have
∫
n
2
2
|sn(x)| dx = ∑ |cm| ≤ m=1
b
2
∫|f(x)| dx. a
∞
Letting n
A
∞,we get
b
∑ | c n|
2
≤
2
∫|f(x)| dx
n=1
a
Also lim cn = 0 .( ? ) n
A
∞
Trigonometric
series:
We
shall
consider functions f that have period 2
and that are Riem ann-integrable
on [ – is
,
given
] The Fourier series of f .
by
∞
f(x) =
π
∑ c ne
inx
where c n =
1 2π
∫f(x)e
− ∞
-inx
dx
-π
, the Nth partia l sum of the Fourier series
of
f
is
given
Double click this page to view clearly
by
N
SN(x) = SN(f;x) =
∑c e
inx
n
-N π 1 L 2π
N
∫|SN(x)|
2
π 2
1 2π
dx =∑ |cn| ≤
-π
n=-N
∫|f(x)|
2
dx
-π
The Dirichlet kernel D N(x) is defined by DN(X) = ∑ e
inx
=
sin(N + 1/2 )x sin(x / 2)
n = −N π
Since c n =
1 2π
N
∫f(x)e
-inx
dx,SN(f;x) =
-π N
=∑ −N
π
∫ f ( t) e
∑ cn e
=
-in(x-t)
1
dt= 2π
-π
-N
N
-int
dte
inx
-π
π
∫ f ( t) ∑ e -π
π
1 2π
∑ ∫ f ( t) e
−N
π
1 2π
N inx
-in(x-t)
-N
1
dt= 2π
∫ f ( t) D
(x-t)dt
N
-π
π 1 = 2π
∫f(x-t)D
(t)dt
N
-π
#0-7- 3.5.3:
If, for some x, there are constants >
0
and
M
|f(x+t) − f(x)| ≤ M|t| for all t
< F
∞such
that
(-δ,δ), then lim SN(f;x) = f(x) N
A
∞
Double click this page to view clearly
P77.: Define g (t) =
f(x-t) − f(x)
for 0< |t| <
sin (t/2)
π
Now
1 2π
π
∫
1 DN(x)dx= 2π
N inx
∫∑ e
-π
-
, and put g (0) = 0
dx
n=-N
(by the definition of Dirichlet kernel ) N 1 2π
=
π
N
∑ ∫e
inx
dx=∑ e
n=-N -
(
1 2π
M
dx
n=-N
π
=1
inx
inx
∫e
{
1
dx=
-π
if n=0
0 n=±1, ± 2, .. .
)
π L
SN(f;x) − f(x) =
1 2π
π
∫f(x-t)D
(t)dt-f(x) =
N
-π
1 2π
∫
∫D
∫
π
1 (f(x-t)-f(x))DN(t)dt= 2π
∫g(t)sin(t/2)D
-π
=
(t)dt
N
-π
π 1 2π
(t)dt
N
-π
π
=
(t)dt-f(x).1
N
π 1
f(x-t)DN(t)dt-f(x). 2π
−π
1 2π
∫f(x-t)D -π
π
=
1 2π
π
∫g(t) sin(t/2)
sin(N+1/2)t sin(t/2)
1 dt= 2π
-π
∫g(t) sin(N+1/2)dt -π
π 1
= 2π
∫g(t) [sin Nt cos t/2+cos Nt sin t/2
]dt
-π π 1 = 2π
π
∫[g(t)cos t/2 ]sin Nt dt+ ∫[g(t)sin t/2 ]cos Nt dt 1 2π
-π
-π
By |f(x+t) – f(x)| ≤ M|t| for all t F (–
,
) and the definition of g(t),
g(t)cos(t/2)
and
g(t)sin(t/2)
bounded. Double click this page to view clearly
are
The last two integrals tend to 0 as N A
L
∞ (by theorem 3.5.2)
lim SN(f;x) = f(x)
N
A
∞
#0-7- 3.5.4:
If f is continuous (with period 2 if
) and
> 0, then there is a trigonometric
polynomial P such that |P(x) – f(x)| < for all real x. P77:
If we identify x and x + 2 regard the 2
, we may
-periodic functions on
R 1 as functions on the unit circle T, by means of the mapping x
A
ix
e . The
trigonometric polynomials , i.e., the N
functions of the form f
(x) = ∑ cne -N
inx
,
form a self-adjoint algebra ? , which separates point on T, and which vanishes at no point of T. Since T is compact, ? is dense in ?(T).
#0-7- 3.5.5: (P ;-> 4 '; and
g
<0 -7 - )
are
functions
with
period
inx
, g(x) N
∑ γne
−∞
and
−∞
1 2π
Then lim ∞
∫|f(x)-S
2
N
(f;x)|
1 dx=0, 2π
-π
π 1 2π
,
inx
π
A
2
∞
∑ cne
N
f
Riemann-integrable
∞
f(x) N
Suppose
¯ ¯ ∫f(x) g(x) dx=∑ c γ , π
∞
-π
−∞
n n
∞ 2
∫|f(x)| dx=∑ |c |
2
n
-π
−∞
P77:
Let
us 2
{
use
the
π 1 2π
∫ | h (x )| -π
2
dx
}
notation
1 2
Double click this page to view clearly
Let
> 0 be given.
Since f F> and f( ) = f(– ), there exists a continuous 2 -periodic function h with ||f – h||
2
< ε.
By the above theorem, there is a trigonometric polynomial P such that |h(x) – P(x)| <
< h-P <
=
{
2
2
=
}
ε 2π 2π
1 2
{
for all x. 1 2
π 1 2π
2
∫|h(x)-P(x)| dx -π
} { <
1 2
π 1 2π
2
∫ε dx -π
π
} {∫} 2
=
ε 2π
dx
-π
=ε
If P has degree N 0 , theorem 3.5.1 shows that ||h – S n (h)|| 2 < ||h – P|| 2 <
, for all N ≥ N 0 .
Double click this page to view clearly
1 2
< S N(h) − SN(f) < 2 = < SN(h-f)2 < 2 ≤ < h-f < 2 < ε.(by theorem 3.5.1 )
Now < f-SN(f) < 2 = < f-h+h-SN(h) + SN(h) − SN(f) < 2 ≤ < f-h < 2 + < h-SN(h) < 2 + < S N(h) − SN(f) < 2 <
+
+
=3
L lim < f-SN(f) < 2 = 0 N
A
∞ 1 2
π
(i.e) lim N
A
{ {∫ 1 2π
∞
} }
2
∫|f(x)-S (f;x)| dx N
-π π
1 2π
(i.e) lim N
A
∞
|f(x)-SN(f;x)|
¯ ∑ c ∫e ¯ g(x) dx
π
∫
¯ 1 SN(f)gdx= 2π
∫
-π N
dx = 0
-π
π 1
Next, 2π
2
=0
N
-π
π
1 n 2π
inx
cne g(x)dx=
-N
inx
-π
¯
=∑ cnγn ---------------(1) n=-N
By Schwarz inequality,we have
|∫
∫
(i.e.)
|∫ ∫
¯ fg −
|
¯ SN(f)g ≤
∫
|f-SN(f)|
¯ fg −
¯ g ≤
||
{
¯ S N (f ) g
∫|f-SN(f)|
|
A
2
¯ g
2
| |}
1 2
A
0 as N
0 as N
A
π
L lim N
A
∫S (f)¯g = ∫f¯g N
∞ -π
π
(i.e.) lim N
A
∞
1 2π
π
∫S (f)¯g = ∫f¯g N
-π
1 2π
-π
Double click this page to view clearly
A
∞
∞
N
By(1),
lim
N
A
π
π
¯ 1 ¯ ∑ cnγn = 2π ∫fg
∞ n=-N
-π ∞
¯ ¯ cnγn (i.e.) 2π -π fg = ∑ n=-∞ 1
∫
¯ f x γ ( ) ∫ g(x) dx = ∑ c ¯ π
1
(i.e.) 2π
∞
n n
-π
-∞
Put f = g in the above equation, we get 1 2π
π
∞
∫|f(x) | dx = ∑ |c | 2
2
n
-π
n=-∞
C'P $E"#ION":
1.
Supp ose 0 < ≤
, f(x) = 0 if
f(x+2
<
, f(x) = 1 if |x| < |x| ≤
, and
) = f(x) for all x.
a.Compute
the
Fourier
coefficients of f. ∞
2
sin (nδ) π-δ b. Conclude that ∑ = 2 n −∞
Double click this page to view clearly
SECION 3.6
HE GAMMA
F!NCION
D-<7 ∞
For 0
x-1 -t
( x )∫ t
e dt
0
The integral converges for x
(0, ∞)
#0-7-5 3.6.1: a.
The functional equation x
(x) holds if 0 < x <
∞
(n+1) = n! for n = 1,2,....
b. c.
(x+1) =
log
is convex on (0, ∞).
P77: a.
Let 0 < x < ∞. ∞
Γ(x) =
∫t
x-1 -t
e dt
0 ∞
Γ(x+1) =
∫t
∞ x+1-1 -t
e dt=
∞ x -t
∫t e
0
dt=
0
=
∞ x-1 -t
( − t e )0 + ∫xt 0
-t
0
∞ x -t ∞
x
∫t d(e )
∫t
e dt=0+x
x-1 -t
e dt=xΓ(x)
0
Double click this page to view clearly
By (a)Γ(n+1) = nΓ(n) = n(n-1)Γ(n-1) =n(n-1)(n-2)....(1)Γ(1) ∞
b.
∞
∫t
Γ(1) =
∫t e
1-1 -t
Let 1
0
1 1 p+ q=
1.
(
x p
∞ x
y
x
y
1
1
1
1
+ − 1 -t + − + −t + + ) = ∫t( p q ) e dt =∫t( p q ) ( p q )e ( p q )dt y q
0
0
∞
∞ x
t( p
−
1 p
y
1
t
t
x-1
t
y-1
t
) − ( q + q )e − p − q dt= t( p )e − p t( q )e − q dt
∫
∫
0
0
1/p
∞
{∫
t
x-1 -t
e dt
0
c.
dt=1
0
∞
≤
-t
dt=
Γ(n+1) = n(n+1)(n-2).....1 = n!
L
=
∫e
0 -t
e dt=
0
Now Γ
∞
∞
} {∫ .
t
y-1 -t
e dt
0
1/p
= {Γ(x)}
{ Γ (x )}
1/q
}
(by Holder's inequality)
1/q
Taking log on both sides,we get log Γ
1/p
1
1
=p .Then 1-
1/p
1
1
1
=1=q p
L
logΓ(λx+(1 − λ)y) ≤
L
log Γ is convex on(0, ∞)
log
1/q
+ log{Γ(x)}
(x) + qlog (y)
= plog Put
1/q
x y ( p + q ) ≤ log[{Γ(x)} {Γ(y)} ] = log{Γ(x)}
(x) + (1 − λ)log Γ(y)
#0-7-5 3.6.2:
If f is a positive function on (0, ∞) such that Double click this page to view clearly
a.
f(x+1) = xf(x)
b.
f(1)= 1
c.
log f is convex,
then f(x) =
(x).
P77.:
Since
satisfies (a), (b) and (c) , it is
enough to prove that f(x) is uniquely determined by (a), (b) and (c), for all x > 0. By (a), it is enough to do this for x F (0,1).
Put
=logf. Then f(x+1) = xf(x)
log f(x+1) = log x + log f(x) φ(x+1) = log x+ Since f(1) = 1, By (c) ,
(x). ----------(1) (1) = log f(1) =
is convex .
0.
B
Suppose 0 < x < 1, and n is a positive integer. Then f(n+1) = nf(n) = n(n – 1 )f(n – 1) = n! L
φ( n+1) = log f( n+1) = logn! -----( 2)
Consider the difference quotients of on
the
intervals
[n,n+1],[n+1,n+1+x], [n+1, n+2]. φ(n+1) − φ(n) n+1-n
log n ≤
≤
φ(n+1+x) − φ(n+1) n+1+x-n-1
φ(n+1+x) − φ(n+1) ≤ n+1+x-n-1
From(1), we have
≤
φ(n+2) − φ(n+1) n+2-n-1
log (n+1)(by(1)) ----------(3)
(n+x+1) = log (n+x) + φ(n+x)
=log(n+x) + log(n+x-1) + φ(n+x-1) =log(n+x) + (n+x-1) + φ(n+x-1) =....=φ(x) + log[x(x+1)...(x+n)]
(3) B logn ≤ B x log n ≤
φ(x) + log[x(x+1)...(x+n)] − log n! x
≤ log
(n+1)(by(2))
(x) + log[x(x+1)...(x+n)] − log n! ≤ x log (n+1)
Subtract xlog n,we get 0 ≤ φ(x) + log[x(x+1)...(x+n)] − log n!-x log n ≤ x log 0 ≤ φ(x) + log[x(x+1)...(x+n)] − log n!-x log n 0 ≤ φ(x) − log
[(
x
n!n x x+1)...(x+n)
(n+1) − x log n
x
≤ x ( log(n+1) − x log n
1 n
)
] ≤ x log ( ) n+1 n
(
=x log 1 +
A
0 as n
A
∞
Double click this page to view clearly
)
(i.e.) φ(x) − log
[
x
n!n x(x+1)...(x+n)
]
0 as n
A
A
∞
x
(i.e.) φ(x) =
lim n
(i.e.)
A
n!n x(x+1)...(x+n)
log
∞
[
]
(x) is determined uniquely
(i.e.) log f(x) is
determined uniquely
B
f(x) is detennined uniquely
B
f(x) =
(x).
#0-7-5 3.6.3:
If
x
>
0
(1 − t )
y-1
and
1
∫
t
x-1
dt=
0
(This
integral
y
>
0,
then
called
beta
Γ (x )Γ (y ) Γ(x+y) is
so
function B(x,y)) P77:
By the definition of gamma function, we have
∞
Γ(x) =
∫t
x-1
y-1
(1-t)
dt
0 1
Now B (",
#)
=
∫t
"
−1
y-1
(1-t)
dt
0 1
Therefore B (1,y) =
1
∫
t
1− 1
y-1
(1-t)
y−1
∫(1-t)
dt=
0
(
dt= −
0
(1-t) y
y
1
)
=
0
1 y
Let p,q be real numbers such that 1 p
+
1 q
=1 1 x p
B(x,y) = B
+
x q,
x
y =
) ∫0
(
1
x
y-1 + −1 t( p q ) (1-t) dt
1
1
1
1
1
1
1
1
y + − + + − + =∫t( p q ) ( p q )(1-t) ( p q ) ( p q )dt x
x
1
1
0 1 y + − + + − + =∫t( p q ) ( p q )(1-t) ( p q ) ( p q )dt x
x
1
1
0 1
y
1
y
1
− − − − + =∫t( p p ) ( q q )(1-t)( p p )(1 − t)( q p )dt x
1
x
1
0 1 y-1
y-1
=∫t( p )t( q )(1-t)( p )(1 − t)( q )dt x-1
x-1
0
Double click this page to view clearly
1
≤
{∫ (
t(
x-1 p
y-1
1/p
1
} {∫(
p
) (1 − t)( p ) dt
)
0
t(
x-1 p
y-1
}
q
1/q
) (1 − t)( p ) dt
0
)
(by Holder's inequality) 1/p
1
=
{
∫
t
x-1
( 1 − t)
dt
0 x p
(i.e.)B( +
x q,
)
y ≤ B(x,y)
1/q
1
} {
y-1
∫
t
x-1
( 1 − t)
y-1
dt
0
1/p
.B(x,y)
}
1/p
= B(x,y)
, B(x,y)
1/q
1/q
Taking log on both sides , we get log B
x
x
1
1
( p + q , y) ≤ p log B (x,y) + q log B (x,y) 1
1 y-1
x+1-1
Now B(x+1,y) = 1
=
t
∫ 0
(1-t)
t
∫ (1 − t )
x
x (1-t) (1 − t)
y-1
dt=
0
x
t
t
1
dv=
t
x
0
∫( 1 − t ) (1-t)
dt x+y-1
dt
0
( 1 − t ) , then du=x( 1 − t )
Let u=
∫
(1-t)
t
1
x
y-1
x
dt =
∫(1 − t)
x+y-1
dt,v=-
(1 − t )
x-1
(
1
(1 − t)
2
)dt and
x+y
x+y
0
L
(
B(x+1,y) =
−
(
x (1-t)x+y 1 t 1 −t x+y 0
)
)
1
+
∫
(1 − t)
=0+
x+y
0
1 x x+y
x+y
x
t 1-t
( )
x-1
1
( 1 − t)
1 x+y
t x-1 1 x 2 dt= x+y 1-t (1-t)
∫(1-t) ( ) 0
∫(1-t)
x+y-x+1-2 x-1
t
dt
0
1 x = x+y
∫(1-t)
y-1 x-1
t
dt =
x x+y B
(x,y)
0
(i.e.)B(x+1,y) = Let f(x) =
Γ (x+y) Γ(y)
x x+y B
(x,y). ------------ (1)
.B(x,y).
Double click this page to view clearly
2 dt
Then f(x+1) = = =
Γ(x+1+y) Γ(y)
Γ(x+1+y) Γ(y)
.B(x+1,y)
x
. x+y B(x,y). ( by(1))
xΓ(x+y) (x+y)Γ(x+y) x . x+y B(x,y) = Γ(y) .B(x,y) = xf(x) Γ(y)
f(1) =
Γ(y+1)
.B(1,y). = Γ(y)
Γ(1+y) 1 Γ(y) y
=
yΓ(y) 1 Γ(y) y
=1
log f(x) = log (x+y) + log B (x,y) − log (y) Then f(x+1) = Γ(x+1+y) Γ(y)
= =
Γ(x+1+y) Γ(y)
.B(x+1,y)
x
. x+y B(x,y). ( by(1))
xΓ(x+y) (x+y)Γ(x+y) x . x+y B(x,y) = Γ(y) .B(x,y) = xf(x) Γ(y)
f(1) =
Γ(y+1)
.B(1,y). = Γ(y)
Γ(1+y) 1 Γ(y) y
=
yΓ(y) 1 Γ(y) y
=1
log f(x) = log (x+y) + log B (x,y) − log (y)
log f(x) = log log
(x+y) + log B(x,y) –
(y).
Since log
and log B
are convex, log
f is also convex.
Double click this page to view clearly
By the above theorem f(x) =
(i.e.)
Γ(x+y) Γ( y )
(x).
.B(x,y) = Γ(x).
)Γ(y)) B(x,y) = ΓΓ((xx+y
L
1
(i.e.) ∫tx-1(1 − t)
y-1
Γ(x)Γ(y) dt= Γ(x+y)
0
"75-
The
C76;-9=-6+-; 2
substitution t = sin equation
in the above
turns
into
π/2
2
x-1
2
2
∫(sin θ) (1 − sin θ)
y-1
sin
cos
d
Γ(x)Γ(y)
= Γ(x+y)
0 π/2
(i.e.)2∫(sin2θ)
x-1
2
(1 − sin θ)
y-1
sin
cos
Γ(x)Γ(y)
d
= Γ(x+y)
0
π/2
Γ(1 / 2)Γ(1 / 2)
=2
Γ(1/2+1/2)
2 1 / 2) − 1
∫(sin θ) (
2(1 / 2) − 1
(cos )
0
(i.e.)
(
)
Γ (1 / 2) Γ(1)
π/2
2
=2
∫dθ=2(π/2)=π 0
Since
2
(1) = 1, we have(Γ(1 / 2))
Therefore
=π
(1 / 2) = √π.
Double click this page to view clearly
dθ
∞ 2
Put t=s in Γ(x) =
∫t
x-1 -t
e dt,we get
0 ∞
Γ(x) =
∞ 2x-2
∫s
−s
e
2
2sds =2
∫s
0
2x-1
e
−s
2
ds
0
Put x = ½, we get ∞
√
∞
∫
=
(1 /2)=
2(1/2) − 1
s
e
− s
2
∫e
ds=
0 x−1
Also
(x) = 2 √ π
Γ
− s
2
ds.
0 1
( 2 ) Γ(
x+1 2
) (Verify).
C'P $E"#ION": 1. Prove
lim x
A
∞
the
Stirling's
Γ( x + 1 ) (x/e)
x
√2πx
formula
= 1.
(x) =
2
x−1
() ( Γ
x+1 2
Prove that
3.
If f(x) = 0 for all x in some
√π
Γ
1 2
2.
)
segment J, then prove that lim S N (f:x)
=
0
for
every
x
J.(Localization theorem) 4.
Prove t hat
lim x
every
A
x
−α
logx=0 for
+∞
>0.
Double click this page to view clearly
F
$NI#-4
$61< "<:=+<=:
Section
4.1:
Linear
Transformations Section 4.2: Differentiation Section
4.3:
The
contraction
principle. Section 4.4: The inverse function Theorem
I6<:7,=+<176
In this unit we shall discuss about the set of vectors in Euclidean nspace
n
R ,
linear
transformation,
diff erentiation and the contraction
principle
and
finally
the
inverse
function theorem.
SECION-4.1
: LINEAR
RANSFORMAIONS
D-.161<176:
A non-empty set X space if x + y every x,y
R
n
is a vector
X and cx
X, for
X and for all scalar c.
D-.161<176:
If x 1 ,x 2 ,...,x k R
n
and c 1 ,c 2 ,...,c k are
scalars then x 1 c 1 + x 2 c 2 +... + x k c k is called a linear combination of x ,x 2 ,... ,x k .
1
D-.161<176:
Let S
O
R
n
.The n the set of all linea r
combination of elements of S is called a linear span of S and it is denoted by L(S). N7<-:
L(S) is a vector space. D-.161<176:
Linear independent: A set consist of vector s x 1 ,x 2 ,.. .,x k is said to be linearly independent if x + x 2 c 2 +... + x k c k = 0 c k = 0 .Otherwise {x dependent.
B
1c1
c 1 = c 2 = ....
1 ,x 2 ,...,x k }
are
D-.161<176: If a vector space X contains an independent set of r vectors but contains no independent set of r+1 vectors , then X has dimension r and we write dim X = r.
D-.161<176: An independent subset of a vector space X which spans the space X is called a basis of X.
N7<-(1): Let R n be the set of all ordered ntuples
x
=
(x 1 ,x 2 ,...,x n )
where
x 1 ,x 2 ,...,x n are real numbers and the element of R
n
called points or vectors
. Define x + y = (x
1
+y 1 ,x 2 +y 2 ,...
,x n +y n ) where y = (y 1 ,y 2 ,...,y n ) and x=( αx
F
x1 ,αx 2 ,...,
x n ). Then x + y,
n
R . n
(ie) R
is closed under addition and
scalar multiplication.
L
R
n
is a vector space over the field
R.
N7<-(11): Let
e1
=
(1,0,0,...,0),
e 2
=
(0,1,0,...,0), .... e n = (0,0,0,...,1). If x
F
n
R , x = (x 1 ,x 2 ,...,x n ) , then x =
Σ x j e j . We shall call {e 1 ,e 2 ,...,e n } the standard basis of R
n
.
N7<-(111): If a subset S = {v
1 ,v 2 ,...,v k }
of X
contains the zero vector , then the set S is linear dependent. In particular if v 1 = 0, then 1 v 1 +0v 2 +.. .+0v k = 0 L
B 1≠
0.
The set S is linearl y dependent set.
N7<-(1>): Let S = {v 1 ,v 2 ,...,v k } be linearly dependent iff there exist a vector in S which is a linear combin ation of remaining vectors in S.
N7<-(>): The set {v} consist of single vectors is linearly independent iff the vector v ≠ 0.
N7<-(>): If the set S is linearly independent then any non-empty subset of S is also linearly independent.
D-6<76: If V is a vector space over a field F and if W O V then W is a subspace of V if W itself is a vector space over F.
#0-7-5 4.1.1: Let r be a positive integer. If a vector space X is spanned by a set of r vectors, then dim X ≤ r.
P77.:
Suppose dim X > r.
Let dim X = r + 1. Therefore there is a vector space X which co ntains an independent set Q = {y
1 ,y 2 ,...,y r+1 }
and which is
spanned by a set S 0 consisting r vectors {x 1 ,x 2 ,...,x r }. Suppo se 0 ≤ i < r and suppose a set S i has been constru cted which spans X and which consist of all y
j
with 1 ≤
j ≤ i plus a certain collection of r – i members of S
0
(In other words, S
say {x 1 ,x 2 ,...,x r–i } i
is obtained from
S 0 by replacing i of its elements by members of Q, without altering the
span.) Since S the span of S scalars
i i
spans X, y i+1 is in and hence there are
a 1 ,a 2 ,...,a i+1 ,b 1 ,b 2 ,...,b r–i
with a i+1 = 1, such that i+1
r−i
∑ ajyj + ∑ bkxk = 0. j=1
k=1
If all bk‘s were 0, the independence of Q would force all a
j ‘s
to be zero,
which is a contradiction. It follows that some x
kFSi
is a linea r
combination of the other members of S i K {y i+1 }. Let T i = S i K {y i+1 }. Remove this x k from T i and call the remaining set S i+1 .Then S i+1 spans
the same set as T
i,
namely X, (ie)
L(S i+1 ) = X, and S i has the properti es postulate d for S i with i + 1 in place of i. Starting with S i , we have constructed sets S 1 ,S 2 ,...,S r and S r
consist
of
y 1 ,y 2 ,...,y r and L(S r ) = X. But Q is linearly indep endent and hence y r+1 G L(S r ), which is a contradiction to dim X > r. L dim X ≤ r.
Cor: dim R
n
= n.
P77.:
Since {e 1 ,e 2 ,.. .,e n } spans R
n
, the
above theorem shows that dim R
n
≤
n.
Since
{e 1 ,e 2 ,..
independent, dim R
n
.,e n }
is
≥ n.
Therefore dim R n = n. #0-7-5 4.1.2:
Suppose X is a vector space and dim X = n. a.
A set E of n vectors in X spans X iff E is independent.
b.
X has a basis, and every basis consist of n vectors
c.
If 1 ≤ r ≤ n and {y 1 ,y 2 ,...,y r } is an independent set in X, then X
has
a
basis
containing
{y 1 ,y 2 ,...,y r }. P77:
a.
Suppose E = {x 1 ,x 2 ,...,x n }.
If E is independent then to prove that L(E) = X. Let y F X. Then
A
=
dependent. ( L
{x 1 ,x 2 ,...,x n ,y} M
is
dim X = n )
a vector in A which is a
E
linear combination of remaining vectors. Since E is independent, no
vector
in
combination
E
is
of
a
linear
preceding
vectors. L
y is a linear combination of
{x 1 ,x 2 ,...,x n }. L
y
F
L(E).
L
X
Q
L(E).
But L(E)
Q
X. Therefore X = L(E).
Conversely, let X = L(E).
Now
to
prove
that
E
is
independent. Suppose E is dependent. Then one of the elements, say, {x k } is a linear combination of preceding vectors. (i.e.) we can eliminate x k without changing the span of E. Hence E cannot span X, which is a contradiction to L(E) = X. Therefore E is independent. b.
Since dim X = n, X contains an independent set of n vectors. (i.e.)
E
=
{x 1 ,x 2 ,...,x n }
independent set in X. By (a), L(E) = X.
is
L
X has a basis consists of n
vectors. c.
Let {x 1 ,x 2 ,...,x n } be a basis of X. By hypothesis, {y 1 ,y 2 ,...,y r } is an independent set in X. L
he t
set
{y 1 ,y 2 ,...,y r ,x 1 ,x 2 ,...,x n }
spans
X and is dependent, since it contains more than n vectors. L
one of the X i ‘s is a linear
combination
of
the
other
members of S. If we remove this x
i
from S, the
remaining set still spans X. This can be repeated r times and leads to the basis of X which contains {y 1 ,y 2 ,...,y r }.
D-.161<176: A mapping A of a vector space X into a vector space Y is said to be 416 -) <) 6;.7 5) <176 if A(x 1 +x 2 ) = Ax 1 +Ax 2 , A(cx) = cA(x), for all x
1 ,x 2 ,x F X
and
all scalars c.
D-.161<176: Linear transformations of X into X is called linear operators on X. If A is a 416-) 78-)<7 on X which i. ii.
is one-to-one an d maps X onto X, we say that A is invertible.
–1
We define A x or A(A
–1
on X that, A
–1
(Ax) =
x) = x.
N7<-:
i.
If A is linear then A.0 = 0.
ii. If
the set of
n vectors say
{x 1 ,x 2 ,...,x n } is a basis of X then any element
x FX
representation
has of
a the
unique function
n
x = ∑ cixi and the linearity of A i=1
allows us to compute Ax from the vectors
Ax 1 ,Ax 2 ,
coordinates formula
...,Ax n
c 1 ,c 2 ,...
,c n
and
the
by
the
n
Ax = ∑ ciAxi i=1
#0-7-5 4.1.3:
A
linear
operator
A
on
a
finite-
dimensional vector space X is one-toone iff the range of A is all of X. P77:
Let {x 1 ,x 2 ,. . .,x n } be a basis of X. Let
{
= (A)
=
n
∑ ciAxi / xi
F
}
X =L
i=1
Now
=
(A)
{Ax/x F X}
=
=
({Ax1, Ax2, ....Axn})
L(Q)
where
Q
=
{Ax 1 ,Ax 2 ,...,Ax n }. Now to prove that A is one-to-one iff =
(A) = X.
(i.e.) to prove that A is one-to-one iff L(Q) = X. By theorem 4.1.2.(a), it is enough to prove that A is one-to-one iff Q is independent. Suppose A is one-to-one .
n
B
Let ∑ ciAxi = 0 i=1
A
(
n
∑ c ix i i=1
n
B
A
(
∑ c ix i i=1
)
=0
n
)
=A.0
B
∑ c ix i = 0 i=1
B c1 = c2 = .... cn = 0 (since {x1, x2, ...., xn} is independent)
L
Q is independent.
Conversely, let Q be independent and
(
A
n
∑ cixi i=1
)
=0
n
Then ∑ ciAxi = 0 i=1
B
c1 = c2 = ....cn = 0 (Q is independent)
Therefore Ax = 0 only if x = 0. Now, Ax = Ay
B
A(x – y) = 0 B x– y
= 0 B x = y.
Therefore A is one-to-one. D-.161<176:
Let L(X,Y) be the set of all linear transformations of the vector space X
into the vector space Y. If Y = X , then we write L(X,Y) = L(X).
D-.161<176:
If
A 1 ,A 2 F L(X,Y)
scalars,
define
and
if
c 1 ,c 2
are
c 1 A 1 +c 2 A 2
by
(c 1 A 1 +c 2 A 2 )x = c 1 A 1 x+c 2 A 2 x (x F X).
It is clear that c 1 A 1 +c 2 A 2 F L(X,Y). D-.161<176:
If X,Y,Z are vector spaces and if A,B F L(X,Y) we denote their product BA to be the composition of A and B : (BA)x = B(Ax) (x Then BA
F
L(X,Z).
F
X).
Note that BA need not be the same as AB, even if X = Y = Z
D-6<76:
For A
F
{|Ax|/x
n
m
n
with
L(R ,R ), define ||A|| = sup F
R
|x|≤1}
and
the
inequality |Ax| ≤ ||A|| |x| holds for all x
F
n
R . Also if
is such that |Ax| ≤ n
|x| for all x F R then ||A|| ≤
.
#0-7-5 4.1.4: a.
n
m
If A F L(R ,R ), then ||A|| < ∞ and A is a uniformly continuous mapping of R n into R m .
b.
If A,B
F
n
m
L(R ,R ) and c is a scalar
, then ||A+B|| ≤ ||A|| + ||B||, ||cA|| = |c| ||A||. With the
distance
between
A
and n
B
m
defined as ||A – B||, L(R ,R ) is a metric space. c.
n
m
n
m
If A F L(R ,R ) and B F L(R ,R ), then ||BA|| ≤ ||B|| ||A||.
P77.:
a.
Let
{e 1 ,e 2 ,...,e n }
standard basis in R x=
c
iei,
n
be
the
and suppose
|x| ≤ 1, so that |c i | ≤
1 for i = 1,2,...,n. Then |Ax| = |A( Ci
|| Ae i |≤
ci e i )|=|
ci Ae i |≤
| Aei | (since |c i | ≤
1). |Ax| ≤
|
| Ae i |< ∞.
Therefore Sup|Ax| < ∞. (i.e.) ||A|| < ∞.
Since |Ax – Ay| = |A(x – y)| ≤ ||A|| |x – y| where x,y Let
F
n
R .
> 0 be given.
Choose
Now | x − y | <
ε
= > 0. ||A|| B
| Ax − Ay | ≤
Therefore
A
ε
||A|| | x − y | < ||A|| ||A|| = ε
is
uniformly
continuous. b.
||A + B|| = sup{|(A+B)x|/x
F
R
n
with |x|≤1} =
sup{|(Ax+Bx)|/x F R
n
with
|x|≤1} ≤ su p {|Ax|+|B x|/x
F
R n with
|x|≤1} = sup{|Ax|/x sup{|Ax|/x
F
F
R
n
R
n
with |x|≤1} +
with |x|≤1}
Double click this page to view clearly
= ||A|| + ||B||. Hence ||A + B|| ≤ ||A|| + ||B||. If c is a scalar, then ||cA|| = sup{|(cA)x|/x
FR
n
with |x|≤1} n
with
n
with
= sup{|c|| Ax|/x F R |x|≤1} = |c| sup{|Ax|/x F R |x|≤1} = |c| ||A|| n
m
Now to prove that L(R ,R ) is a metric space. Define d(A,B) = ||A – B||, then d(A,B) ≥ 0 d(A,B) = 0
C
||A – B|| = 0
C
A
= B. Also d(A,B) = ||A – B|| = ||B – A|| = d(B,A).
d(A,C) = ||A – C|| where C n
F
m
L(R ,R ) = ||A – B + B – C|| ≤ || A – B|| + ||B – C|| = d(A,B) + d(B,C) n
m
Therefore L(R ,R ) is a metric space. c.
F
Let A,B
L(R n ,R m ).
Now ||BA|| = sup{|(BA)x|/x R
n
F
with |x|≤1} = sup{|B(Ax)|/x
F
R
n
with
|x|≤ 1} ≤
|Ax|/x F R
n
sup{|Ax|/x F R
n
sup{||B||
with |x|≤ 1} =
||B||
with |x|≤ 1}
= ||B|| ||A||. #0-7- 4.1.5:
Let be the set of all invertible linear n operator on R .
a.
If
n
A F Ω,
A||.||A
–1
B F L(R ),
and
|| < 1, then B
||B
–
F Ω.
n b.
is an open subset of L(R ), –1 and the mapping A A A is continuous on
P77:
a.
Put ||A
–1
|| = 1/
and ||B – A||
= β. Then ||B – A||.||A < 1
B
Therefore
–1
< –
> 0,
|| < l
B
β/α
Now A
–1
–1
|x| =
(Ax)| ≤
| A
||A
= |Ax| (
L
–1
A(x)| =
|
|| |A(x)| –1
||A
|| = 1/
)
= |Ax – Bx + Bx| ≤ |Ax – Bx| + |Bx| = |(A–B)x| + |Bx| ≤ ||A–B|| |x| + |Bx| = ||B – A|||x| + |Bx|
=
= )
L
|x| –
|x| + |Bx|(
M
||B – A||
|x| ≤ |Bx| B (α –
)|x|≤ |Bx| |Bx| ≥ (
–
)|x| > 0 (M α – β
> 0) L
Bx ≠ 0.
Now Bx ≠ By
C
B(x–y) ≠0
x–y≠0
L
C
B is one-to-one.
Bx – By ≠ 0 C
C
x ≠ y.
By
theorem
4.1.3,
BF
.
This
holds for all B with ||B – A|| < and b.
n
is open subset of L(R
Replace x by B
–1
y in (
–
).
)|x|≤
|Bx|, we get (
–
= |y| (y
FR
–1
)| B y | ≤ |BB
n
| B –1 y |≤ |y|(
B
|| B
}≤(
≤
– A
–1
– A
1 α−β
As B
–1
–1
–1
A
(A – B)A
–1
= B
FR
n
A – B
–1
(A – B)A
–1
.
|| = ||B
–1
|| ||A – B|| ||A
β
A,
A
0.
–1
–1
–1
.α.
A
y|/y
–1
= B
|| ≤ || B
–1
) .
–1
B A ||B
–1
)–1 .
–
|| =sup{| B
–
Now B
y |
)
B
–1
–1
–1
||
–1
L
||B
L
AA A
– A –1
–1
|| as
A
0.
is continuous on
.
D-.161<176: M)<1+-;
Suppose
{x 1 ,x 2 ,...,x n }
and
{y 1 ,y 2 ,...,y m } are bases of vector spaces X and Y respectively. Th en every A
F
L(X,Y) determines a set of
numbers
a ij
uch s
that
m
Axj = ∑ aijyi
(1 ≤ j ≤ n )
i=1
It is co nvenient to visualize these numbers in a rectangular array of m rows and n columns, called an m by n matrix:
[A] =
[
a11
a12
S
a1n
a21
a22
S
a2n
S
S
S
S
S
amn
am1 am2
]
Observe that the co ordinates a ij of the vector Ax j appear in the jth column of [A]. The vectors Ax
are
j
called the column vectors of [A].
The
range of A is spanned by the column vectors of [A]. n
Ifx=
(
n
)
∑ cjxj thenAx=A ∑ cjxj j=1
m
=∑ i=1
[
n
]
∑ aijcj j=1
j=1
n
n
m
= ∑ cjAxj = ∑ cj∑ aijyj j=1
j=1
i=1
yi.
Next to prove that
| |A ||
≤
{∑ } aij2
Double click this page to view clearly
1/2
Suppose
{x 1 ,x 2 ,...,x n }
and
{y 1 ,y 2 ,...,y m } are the standard bases of
R
n
and
m
R
def ini tio n Ax =
[ ]
∑ ∑a c
ij j
i
=
respectively.
∑ [a
By
yi
j
] yi
i1c1 + ai2c2 +....+a 1ncn
i
= [a11c1 + a12c2 +....+a
]y1 + [a21c1 + a22c2+....+a
1ncn
+ [am1c1 + am2c2 +...+a
=
(
n
) (
∑ a1jcj j=1
m 2
|Ax| = ∑ i=1
y1 +
[
n
∑ a2jcj j=1
n
2
]
∑ aijcj j=1
)
] yn.
mncn
y2 + .... +
m
≤
∑ i=1
] + y1....
2ncn
[
(
n
∑ anjcj
n
j=1
n
)
yn.
]
∑ aij2∑ cj2 (by Schwarz inequality) j=1
j=1
2
=
∑
aij2 |x|
i, j
Thus ||A|| ≤
{∑ }
1/2
aij2
Double click this page to view clearly
C'P $E"#ION": 1.
If S is a non-empty subset of a vector space X, prove that the span of S is a vector space.
2.
Prove that BA is linear if A and B are linear transformatio ns. Prove also
that
A
–1
is
linear
and
invertible. 3.
Assume A L(X,Y) and Ax = 0 only whe n x = 0. Prvoe that A is 1 – 1.
SECION-4.2
:
DIFFERENIAION
If f is a real valued function with domain (a,b) R
1
and if x
(a,b),
then f'(x) is usually defined to be the real number
f(x + h) − f(x) provi h
lim
h
A
ded that this
0
limit exists.
(i. e.) f'(x) = h
L
f(x + h) − f(x) h
lim
A
0
f(x+h) – f(x) = f’(x)h + r(h), where
the remainder r(h) is
small
in
lim
r(h) h
h
A
the
sense
that
= 0.
0
D-.161<176:
If f is a map from (a,b)
O
R
differentiable mapping and x then f'(x) is the
1
to R F
m
is
(a,b)
linear transformation
of R
1
to
A
m
that
f(x + h) − f(x) − f'(x)h h
lim
h
R
0
=0
satisfies
D-6<76:
Suppose E is an open set in R m
n
and
F
f maps E into R and x E if there n exist a linear transformation A of R into lim h
A
R
|f(x + h)
0
m
such
− f(x) − Ah|
= 0,
|h |
.....
that
( 1)
then f is differentiable at x and we write f'(x) = A. If f is differentiable at every x F E, we say that f is differentiable in E. #0-7-5 4.2.1:
Suppose E and f are as in the above definition , x
F
E, and (1) holds with A
= A 1 and with A = A 2 . Then A 1 = A 2 . P77:
Let B = A 1 – A 2 .
Now Bh = (A 1 – A 2 )h = A 1 h – A 2 h = f(x+h) – f(x) – f(x+h) + f(x) + A 1 h – A 2 h = [f(x+h) – f(x) – A 2 h] – [f(x+h) – f(x) – A 2 h] |Bh| ≤ |f(x+h) – f(x) – A 1 h| + |f(x+h) – f(x) – A 2 h| |B(h)| |h|
≤
|f(x + h)
− f(x) − A1h|
|h|
+
|f(x + h)
− f(x) − A2h|
|h|
A
as h
|B(h)| | h|
A
0ash
For fixed h
|B(th)| |th|
A
0ast
A
≠
0
A
0
0
0, it follows that A
0
.....(2)
The lineari ty of B shows that the
left
side of (2) is independent of t. n
Thus Bh = 0 for every h
F
R . Hence
B = 0. Therefore A 1 = A 2 .
(C016 =-) #0-7-5 4.2.2: Suppose E is an open set in R maps E into R
m
n
, f
, f is differentiable at
x 0 F E, g maps an open set containi
ng
k
f(E) into R , and g is differentiable at f(x 0 ). Then the mapping F of E into R
k
defined by F(x) = g(f(x)) is
differen tiable at x 0 , and F'(x 0 ) = g'(f(x 0 ))f’(x 0 ).
P77.:
Put y 0 = f(x 0 ), A = f’(x 0 ), B = g'(y 0 ), and define
.
u(h) = f(x 0 +h) – f(x 0 ) – Ah, v(k) = g(y 0 +k) – g(y 0 ) – Bk, for all hF R
n
and k F R
m
for which f(x 0 +h)
and g(y 0 +k) are defined. Since f is differentiable at x 0 , we have h
(i. e.)
L
A |u(h)|
lim
h
|f(x0 + h) − f(x0) − Ah|
lim
A
0
|h|
|h|
0
= 0. (i. e.)
(h) A 0 as h
ε(h) =0where
lim
h
A
A
=0
(h) =
0
| u(h)| | h|
0.
|||ly g is differentiable at x 0 , we have lim
k
A0
|g(y0 + k) − g(y0) − Bk| | k|
=0
Double click this page to view clearly
(i. e.)
|v(k)|
lim
h
A
0
|k|
= 0. (i. e.) h
(k) A 0 as k
L
η(k) =0where
lim
A
A
( k) =
0
| v(k)| |k|
0.
Given h, put k = f(x 0 +h) – f(x 0 ). Then |k| = |f(x 0 +h) – f(x 0 )| = |Ah + u(h)| ≤ |Ah| + |u(h)| ≤ ||A|| |h| +
(h)|h|
(i.e.) |k| ≤ [||A|| + Now
F(x 0 +h)
–
(h)] |h|. F(x 0 )
–
BAh
= g(y 0 +k) – g(y 0 ) – Bah = Bk + v(k) – BAh = B(k – Ah) + v(k)
=
B(u(h)) + v(k). L
|F(x 0 +h) – F(x 0 ) – Bah| = |B(u(h))
+ v(k)| ≤ |B(u(h))| + |v(k)|
Double click this page to view clearly
|F(x0 + h) − F(x0) − BAh | | h|
≤
||B|| ε(h)|h| + η(k)| [||A|| + ε(h)] |h|.
Since
(h)
as k
0, the RHS tends to
A
A
0 as h
A
0 and
(k)
A
0
Zero
(i. e.) h
L
|F(x0 + h) − F(x0) − BAh |
lim
A
|h|
0
F is differentiable at x
0
=0
and F'(x 0 )
= BA. (i.e.) F'(x 0 ) = g'(y 0 )f'(x 0 ) F'(x 0 ) = g'(f(x 0 )).f’(x 0 ). D-.161<176:
Consider a function f that maps an open
set
E
O
R
n
into
R
m
Let
{e 1 ,e 2 ,...,e n } and {u 1 ,u 2 ,...,u m } be
Double click this page to view clearly
the standard bases of R
n
and R
respect ively. The components of f
m
are
real functions f 1 ,f 2 ,...,f m defined by m
f ( x ) = ∑ f i( x ) u i
(x
F
E)
or,
i=1
equivalently, by f i (x) = f(x).u i , 1≤i≤ m. For x
F
E, 1≤ i ≤ m, 1≤ j ≤ n, we
define
( D j f i( x ) ) =
lim
t
A0
fi(x+te
)
j
− fi(x)
t
provided
the limit exists, where D j f i is the deriva tive of f i with respect to X j , keeping the other variables fixed, we denote
∂ fi ∂ xj
in place of D j f i , and D j f i is
called the partial derivative.
#0-7-5 4.2.3:
Suppose f maps an open set E R
n
into R
m
O
,and f is differentiable
at a point x
F
E. Then the partial
derivatives (D j f i )(x) and
exist,
m
f'(x)ej = ∑ (Djfi)(x)ui
(1≤j≤n
)
i=1
P77:
Fix j. Since f is differentiable at x, f(x + te j ) – f(x) = f'(x)(te j ) + r(te j ) where |r(te j )|/t The lim
t
linearity
A0
f(x+te
)
j
t
A
of − f(x)
0 as t f’(x)
A
0.
shows
= f'(x)ej.
that
.....(1)
If we represent f interms of its components, then (1) becomes m
fi(x+te j) ∑ t tA0 lim
i
− f i (x )
ui = f'(x)ej.
=1
m
(i. e.) ∑ i=1
lim
t
A0
fi(x+te
)
j
− f i (x )
t
ui = f'(x)ej.
m
∑ (Djfi)(x)ui = f'(x)ej i=1
Therefore the partial deriva tives of (D j f i )(x) exist, and m
f'(x)ej = Note
:
( D f ) (x )u ( 1 ≤ j ≤ n ∑ i=1 j i
By
the
i
above
).
theorem,
m
f'(x)ej = ∑ (Djfi)(x)ui i=1
(1 ≤ j ≤ n ).
m L
m
f'(x)e1 = ∑ (D1fi)(x)ui, f'(x)e2 = ∑ (D2fi)(x)ui, ...., i=1
i=1
m
f'(x)ej =
Let
D f )(x)u . i=1 ( ∑ j i
[f’(x)]
i
be
the
matrix
that
represen t f’(x) with respect to the standard bases. Then
[f'(x)] =
[
(D1f1)(x)
S
( D n f 1 ) (x )
(D1f2)(x)
S
( D n f 2 ) (x )
S
S
S
( D 1 f m ) (x )
S
(Dnfm)(x)
#0-7-5 4.2.4:
]
Suppose f maps a convex open set EO R
n
into R
m
, f is differentiable in
E, and there is a real number M such that ||f'(x)|| ≤ M for every x
F
E.
Then |f(b) – f(a)| ≤ M|b – a| for all a E, b F E.
F
P77.:
Fix a F E and b Define tF R
1
F
E.
(t) = (1 – t)a + tb, for every
such that
(t)
F
E.
Since E is convex, 0 ≤ t ≤1 implies (t)F E. Put g(t) = f( g'(t) = f'(
(t)). (t)).
'(t) = f'(
(t)) (b –
a). |g'(t)| = | f’( f’(
(t)) (b – a) | ≤ ||
(t))|| |b – a| ≤ M |b – a|.
When t = 0, g(0) = f(
(0)) = f(a).
When t = 1, g(1) = f(
(1)) = f(b).
By mean value theorem for vectorvalued functions, we have |g(1) –g(0)|≤(1–0)g'(t)
(i.e.) | f(b) – f(a) | ≤ M (b
– a)
Cor: If, in addition, f’(x) = 0 then f is constant. P77.:
To
prove
this,
note
that
the
hypothesis of the theorem holds with M = 0.
A differentiable mapping f of an open set E
O
R
n
into R
m
is said to be
continuously differentiable in E, if f’is a
continuous n
mapping
of
E
into
m
L(R ,R ). (i.e.) for every x
F
0, corresponds a
E and to every
>
> 0 such that
|| f’(y) – f’(x)|| <
if y
F
E and |x –
y| < If this so, we also say that f is a ? mapping , or that f
F
? (E).
#0-7- 4.2.5:
Suppose f maps an open set E into R
m
. Then f
derivatives
F
D jfi
O
R
? ‘(E) iff the partial exist
and
are
n
con tin uou s on E for 1 ≤ i ≤ m, 1 ≤ j ≤ n. P77.:
Assume frist that f
F
? ‘( E ) .
By theorem 4.2.3, we have f’(x)e
j .u i
= (D j f i )(x)for all i and j and for all x F E. Now (D j f i (y) – (D j f i (x) = f’(y)e j .u i – f’(x)e j .u i =
(f'(y)
–
f’(x))e j .u i . Since
{e 1 ,e 2 .....e n }
{u 1 ,u 2 ,...,u m } bases of R
n
and
are
the
and standard
R
m
L
respectively, | u i | = | e j | = 1.
| (D j f i (y) – (D j f i )(x)| = |(f'(y) –
f'(x))e j .u i | = |(f'(y) – f’(x))e j | ≤ ||f’(y) – f’(x)|| |e
j|
= ||f’(y) – f’(x)|| L
D j f i is continuous.
Conversely let D j f i be continuous. Consider the case m = 1. (i.e.) f = f 1 . Fix x F E and
> 0.
Since E is an open set, there is an open ball S O E with center at x and radius r.
Since D j f i is continuous, r can be so chosen that ε
|(Djfi)(y) − (Djfi)(x)| < n
.....(1)
(y
F
S, 1 ≤ j ≤ n
)
Suppose n
h = ∑ hjej with |h|
0 =0,and
j=1
v k = h 1 e 1 +h 2 e 2 + .... + h k e k for 1 ≤ k ≤ n. Then f(x+h) – f(x) = f(x + v n ) – f(x + v0) = f(x + v 1 ) – f(x + v 0 ) + f(x + v 2 ) – f(x + v 1 )
+
f(x + v 3 ) – f(x + v 2 )
+......+ f(x + v n ) – f(x + v n–1 )
n
[
= ∑ f( x + v j ) − f(x + v j − 1 )
]
.....(2)
j=1
Since | v k | < r for 1 ≤ k ≤ n a nd since S is convex, the segments with end points f(x + v
j–1 )
and f(x + v
j)
lie in S. Since v j = h 1 e 1 +h 2 e 2 + .... + h j e j and v j–1 = h 1 e 1 +h 2 e 2 + .... + h j–1 e j–1 we have v j – v j–1 = h j e j
B
v j = v j–1 +
hjej, Apply Mean value theorem to the jth summand in (2), f(x + v j ) - f(x + v j–1 ) = [(x + v j ) – (x + v j–1 )] (f’(x + v j–1 +θ j h j e j ))
wher e 0 <
j < 1 and this diff ers from
| h|
h j D j f(x) by less than
F
n
, using (1)
f(x + v j ) – f(x + v j-1 ) = [v j – v j–1 ] D j f(x + v j–1 +θ j h j e j ) =
h j D j f(x +
v j–1 +θ j h j e j )
Substitute in (2), we get n
[
f(x + h) − f(x) = ∑ hjDj f(x + v j − 1 + θjhjej)
]
j=1 n
f(x + h) − f(x) −
∑ hj(Djf)(x) j=1
n
n
[
]
= ∑ hjDj f(x + v j − 1 + θjhjej) − j=1
|
j=1
n
f(x + h) − f(x) −
∑ hj(Djf)(x)
|
∑ hj(Djf)(x) j=1
Double click this page to view clearly
=
=
| |
n
n
∑ h jD j[ f (x + v j − 1 + θ jh je j)]
−
j=1
|
∑ hj(Djf)(x) j=1
n
∑ j=1
[[
[
]]
]
hj Dj f(x + v j − 1 + θjhjej) − Dj[f(x)]
|
n
∑ |h j| | D j[ f (x + v j − 1 + θ jh je j) ]
≤
|
− Dj[f(x)]
j=1 n
<
ε j n h ∑| |
(by (1))
j=1
≤ |h| ε
L
L
|
n
f(x + h) − f(x) −
∑ hj(Djf)(x) j=1
|h|
<ε
f is differentiable at x. m
f'(x)ej = ∑ (Djfi)(x)ui
,
which
i=1
nothing but jth column vector
Double click this page to view clearly
is
on [f'(x)], where [f'(x)] =
[
n
Ifh=
(D1f1)(x)
S
(Dnf1)(x)
(D1f2)(x)
S
(Dnf2)(x)
S
S
S
(D1fm)(x)
S
(Dnfm)(x)
n
n
j=1 n
j=1
j=1
m
= ∑ hj∑ (Djfi)(x)ui j=1
i=1 n
Since m = 1, f'(x)h = ∑ hj(Djf)(x) j=1
The matrix [f’(x)] consists of the row (D 1 f)(x).....(D n f)(x); and since D 1 f,.....,
(D n f)
functions on E,f
are
F
continuous
? ‘(E).
C'P $E"#ION": 1.
]
∑ hjej then f'(x)h=f' (x) ∑ hjej = ∑ f '(x)hjej
If f(0,0) = 0 and f(x, y) =
xy 2
x +y
2
if f(", #) ≠ (0, 0)
Double click this page to view clearly
Prove
that
(D 1 f)(x,y)
and
(D 2 f)(x,y) exist at every point of R
2
, altho ugh f is not contin uous
at (0,0). 2.
Suppose that f is a real-valued function defined in an open set E
n
R , and that the partial
derivatives are bounded in E. Prove that f is continuous in E.
SECION-4.3
: HE
CONRACION PRINCIPLE.
D-.161<76:
Let X be a metric space, with metric d. If
maps X into X and if the re is a
rea l num ber c < 1 suc h tha t d( (y)) ≤ cd(x,y) for all x,y
F
(x) ,
X, then
is said to be a contraction of X into X.
#0-7-5 4.3.1: 5886/ <0-7-5)
(C76<+<76
If X is a complete metric space, and if is a contraction of X into X, then there exists one and only one x F X such that
(x) = x.
P77:
Let
x 0 F X.
Define
{x n }by
setting
φ(x n ) = x n+1 . First to prove that {x n } is a Cauchy sequence in X. Since
is a contraction, there exists
a number c such that 0 < c <1 such that d( x,y F X
(x),
(y)) < cd(x,y) for all
For n ≥ 1, we have d(x n+1 , x n ) = d( cd(
(x n ),
( x n–1 )) ≤ c d(x n , x n–1 )
(x n–1 ),
( x n–2 ))
=
≤
c.c
2
d(x n–1 ,x n–2 ) = c d(x n–1 ,x n–2 ) =.... n
d(x n+1 , x n ) ≤ c d(x 1 ,x 0 ) . if n < m, then it follows that d(x n , x m ) ≤ d(x n , x n+1 ) + d(x n+l , x n+2 ) +.....+ d(x m–1 , x m )
≤c n d(x 1 ,x 0 ) +.....+ c
m–1
+
c n+ 1d(x 1 ,x 0 )
d(x 1 ,x 0 ).
n
≤ c d[1 + c + c
2
+....+ c
m–n–1
]
d(x 1 ,x 0 ) < c n d[1 + c + c 2 +....] d(x 1 ,x 0 ) n
<
c 1−c
d(x1, x0)
Since c < 1, (c
n
)
A
0 as n
A
∞
Therefore, given
> 0, there exists a
positive integer n such that n
c 1−c
d(x1, x0) < ε
L
d(x n , X m ) < ε
L
{x n } is a Cauchy sequence in X.
Since X is complete metric space, {x n } A x. Since
is
contraction,
is
continuous. L
φ(x n )
A
(x).
(i. e.) φ(x) = lim φ(xn) = lim xn + 1 = x n
L
A
∞
n
A
∞
x is a fixed point of X.
Now to prove the uniqueness:
Suppose y
F
X such that y ≠ x and
(y) = y.
Now d(x,y) = d(
(x),
(y)) ≤ cd(x,y)
(i. e.) (1−c)d (x, y) ≤ 0 .....(1) Since c < 1, we have 1 – c > 0 and since d(x,y) ≥ 0, (1
–
c)d(x,y)
≥
0,
which
contradiction to (1). L
x is a unique fixed point of X,
is
a
SECION-4.4:
HE IN"ERSE
F!NCION HEOREM #HE IN%E!"E F$NC#ION #HEO!EM
Theorem 4.4.1:
Suppose f is a ? ‘mapping of an open set E R
n
into
n
R , f’(a) is invertible for some a E and b = f(a) then a.
there exist open sets U and V in R
n
such that a U, b V, f is one-
to-one on U, and f(U) = V; b.
if g is the inverse of f [which exists, by (a)], defined in V by g(f(x)) = x, x
P77:
a.
Put f’(a) = A.
U,
then g
C ‘(V)
Given that f’(a) is invertible. L
A is invertible (i.e.) A
Choose
so that
1
= 2
–1
||
exists.
.
A −1
||
Since f’ is continuous at a , there exists an open ball U O E with center at ‘a’ such that ||f’(x) – f’(a)|| <
(i. e.) ||f'(x) − A|| <
.
Define a function
by,
+ A
–1
.....(*) (x) = x
(y – f(x)) where x F E and
n
yF R . Note that f(x) = y iff x is a fixed point of Let f(x) = y. Then A
–1
L
(y – y) = x + A
–1
x is a fixed point of
(x) = x + (0) = x.
Conversely, let
(x) = x. –1
Then x = x + A –1
A (y – f(x)) = 0 y = f(x). Now A
–1
'(x) = I + A A – A
–1
(y – f(x))
B
B
y–f(x) = 0
–1
f’(x) = A
B
(0 – f'(x)) =
–1
(A – f’(x))
||φ'(x)|| = ||A − 1 (A − f' (x))|| ≤ ||A − 1 || |A − f' (x)| < 2λ . = 2 . 1
1
..... (1)
By Mean value theorem for single variable, |
(x1 ) –
||
'(x)||, x
(x 2 )| = |x 1 –x 2 | F (x 2 ,
x1)
1
|φ(x1) − φ(x2)| < 2 |x1 − x2| where x1, x2 L
F
U ..... (2)
is a contraction.
By using fixed point theorem( theorem 4.3.1) , the function has atmost one fixed point in U
Double click this page to view clearly
so that f(x) = y for at most one x F U. L
By theorem 4.1.3, f is one-to-
one in U. Put V = f(U). Let y 0 F V. Then y 0 = f(x 0 ) for some x 0 F U. Let B be an open ball with center at x 0 and radius r > 0, so small that its closure
¯
B lies in U.
Now to prove that V is open. (i.e.) to prove that |y – y 0 | B
<
λr
y F V.
Since
(x0 ) = x 0
+ A
–1
f(x 0 )), φ(x 0 ) – x 0 = A
–1
(y – f(x 0 ))
(y –
|φ(x0) − x0| = |A (y − f(x0))| ≤ ||A || |y − f(x0)| ≤ −1
<
1 2λ
r 2
λr =
−1
1 2λ
|y
− y0|
......(3)
¯ If x F B , then | –
(x0 ) +
(x) – x0 | = |
(x 0 ) – x 0 | ≤ |
φ(x 0 )| + | <
(x)
(x) –
(x 0 ) - x 0 |
1 r x − x0| + | 2 2
L
|
(x) – x 0 | < r. (x)F B(x 0 ,r).
Also if x1, x2
F
¯
|
|
B, then φ(x1) − φ(x2) <
1 2
| x1
(by (2))
− x2|
¯ L
is a contraction of
Since R
n
¯
B into B .
¯
is complete and B is
¯
closed, B is complete.( since any closed
subset
of
a
complete
metric space is complete).
Double click this page to view clearly
By the above theorem, fixed point, x L L
y = f(")
F
F
has a
¯ B
¯
f(B)
O
f(U) = V
y F V.
(i.e.) y is an interior point of V. L
b.
y is open set.
Now to prove that g
F
Fix y F V and y + k
F
V. Then there
exist x
U so that
F
U, x + h
F
? ’ (V).
y = f(x); y + k = f(x + h) Now, A
–1
(x + h)–
(x) = x + h +
(y – f(x + h)) – x – A
–1
(y –
f(x)) =h+A
–1
(y – f(x
+ h) – y + f(x)) =h+A A
−1
−1
( f( x + h )
k .....( 4)
− f( x ) ) = h −
1 2
Now |φ(x + h) − φ(x)| ≤
B
1 2
B
A
1
k ≥
|
B |h |
By (*),
−1
|h − A
|
k ≤
1 2
| h|
−1 −1 | h| ≥ |h − A k| ≥ |h| − |A k| −1
|
| h| B
2
|
≤ 2 A
−1
| h | B 2 |A
−1
|
k ≤ 2
k ≥ |h|
|
||A || |k| ≤ −1
1 λ
| k|. ..... (5)
1 ||f'(x) − A|| < λ. B ||f'(x) − A|| < 2||A ||
B
−1
A
||
−1
|f'(x)
− A| <
|| |
1 2
< 1.
|
By theorem 4.1.5, f’(x) is invertible linear operator. (i.e.) f’(x) has an inverse, say T.
(i. e.) T = f'(1x) . Now g(y+k) – g(y) – Tk = g(f(x+h)) – g(f(x)) – T = x+h – x –
Double click this page to view clearly
Tk = h – Tk = –T[k – h/ T] = –T[f (x+ h) – f(x) –hf ’(x )]
|g(y + k)
|
− g(y) T(k)| = − T[f(x + h) − f(x) − hf'(x)]
| |T || | f (x + h )
≤
|g(y + k)
≤
− f(x) − hf'(x)|
− g(y) − Tk|
|k|
| |T | |
|f(x + h)
|f(x + h) ≤
|
||T||
− f(x) − hf'(x)| λ(h)
− f(x) − hf'(x)|
|k|
(by (5))
Since f is differentiable, the RHS of the inequality tends to zero. Clearly, g is differentiable and g'(y) = t. But T was chosen to be the inverse of f (x) = f’(g(y)),
Double click this page to view clearly
g'(y) = [f'(x)]
−1
[
= f'(g(y))
]
−1
.
..... (6)
Since g is a continuous mapping of V onto U and f’ is a continuous mappi of U into the set
of all invertible n
elements of L(R
ng
), and that inversion
is a continuous mapping of (by theorem 4.1.3) By (6) g
onto F
? ‘(V)
Theorem 4.4.2: If f is a ? ‘ mapping of an set B
O
R
n
into R
invertible for every x an open subset of R
n
F
n
and if f’(x) is
E, then f(W) is
for every open
set W O E. P77.:
Let y
F
element x W
O
f(W). Th en there exist an F
W such that f(x)= y Since
E, x F E.
By hypothesis, f’(x) is
invertible.
By the inversion function theorem, there exists an open set U and V in R
n
such that x F U and y F V, f is one-
to-one and f(U) = V. Since W is open and x selected so that U Therefore f(U) (i.e,) V
O
f(W).
But f(x)
F
V
O
O
F
W, U can be
W.
f(W).
(i.e,) y F V and V is open, there exists a neighborhood Nr(y) But V
O
O
V,
f(W). Ttherefore Nr(y)
f(W). Therefore f(W) is an open in R
n
,
O
C'P $E"#ION": 1.
Suppose that f is a differentiable real function in an open set E O
n
R , and that f has a local
maximum at a point x
F
E. Prove
that f’(x) = 0 2.
If f is a differentiable mapping of a connected open set E
O
R
n
m
R , and if f'(x) = 0. for every x F E, prove that f is constant in E.
into
$NI#-5
$61< "<:=+<=:
Section 5.1: The implicit function theorem Section 5.2: The rank theorem Section 5.3: Determinants. Section 5.4: higher order Sectio n 5.5:
Derivatives
of
Dif ferentiation of
integrals
I6<:7,=+<176
In this unit we shall discuss about the im plicit function theorem, the rank theorem,
determin ants, derivatives
of higher order and differentiation of integrals.
SECION-5.1
HE IMPLICI
F!NCION HEOREM
If f is a continuously differentiable real function in the plane, then the equation f(x,y) = 0 can be solved for y interms of x in a neighborhood of any point (a,b) for which f(a,b) = 0 and
∂f ∂y
≠ 0 . The preceding very
info rmal statem ent is the simplest case
of
the
so-called
“
implicit
function theorem”. N7<)<176:
and y = (y
If x = (x
1 ,x 2 ,...,x n ) R
1 ,y 2 ,...,y m ) R
m
n
, let us
write (x,y) for the point (or vector)
(x 1 ,x 2 ,...,x n , y 1 ,y 2 ,...,y m ) F R
Every A F L(R linear
n+m
.
linear n+m
transformation
n
, R ) can be split into two
transformations A x and A y ,
defined by A x h = A(h,0), A y k A(0,k) for any h
F
n
R , kF R
m
=
. Now to
show that A x F L(R n ), A y F L(R n+m , R n ) and A(h,k) = A x h + A y k. 877.: i.
If h 1 ,h 2
F
R
n
then Ax(h 1 + h 2 ) =
A(h 1 + h 2 ,0) = A[(h 1 ,0), (h 2 ,0)] = A[(h 1 ,0)] + A[(h 2 ,0)] =A x h 1 + A y k 2 .
ii.
A x (ch) = A(ch,0) = A[c(h,0)] = cA(h,0) = c A
xh
where c is a
scalar. A x is a linear. |||ly A y is a linear. iii.
A x h + A y k = A(h,0) + A(0,k) = A[(h,0) + (0,k)] = A(h,k)
Theorem 5.5.1: If A F L(R n+m , R n ) and if A x is invertible, then there corresponds to every k
F
R
m
a unique
n
h F R such tha t A(h,k) = 0. This h can be computed form k by the formula h = –(A x ) –1 A y k. P77.:
Given that A(h,k) = 0.
Since A(h,k) =A x h + A y k, A x h + A y k = 0. B A x h = –A y k.
Since A x is invertible, A x-1 exists. (i.e.) A x A x h = –(A x )
–1
–1
= Ax
–1
AX= I
B
Ax
–1
Ax
Ayk
B
h = –(A x )
–1
A y k.
Now to prove the uniquness. Suppose h 1 ,h 2 F R –(A x )
–1
n
such that h 1 =
A y k 1 ., h 2 = –(A x )
–1
Ayk2
then h 1 – h 2 = 0. Therefore h is unique.
(I841+1< F=6+<176 #0-7-) #0-7- 5.5.2:
Let f be a ? ‘-mapping of an open set n+m n E O R into R ,such that f(a,b) = 0 for some point (a,b)
F
E. Put A
= f’(a,b) and assume that A x
is
invertible. Then there exist open sets O
n+m
m
O
U R and W R , with (a,b) and b F W, having the property: To every y
F
F
U
W corresponds a unique
x such that (x,y)
F
U and f(x,y) = 0.
If this x is defined to be g(y), then g is a ? ‘–mapping of W into R a, f(g(Y),y) = 0 (y –(A x )
–1
F
n,
g(b) =
W), and g'(b) =
Ay.
[This g is called implicit function].
P77.:
Define F: E
A
R
n+m
(f(x,y),y) for every (x,y)
by F(x,y) = F
E
Then F is a ? ‘‘-mapping of E into R
n+m
.
Now to prove that F is differentiable at (x,y)
F
of E into R Let (x,y)
E. and F’ is continuous map n+m
F
. n
E and let h F R , k F R
such that (x+h,y+k)
F
m
E,
F(x+h,y+k) – F(x,y) (f(x+h,y+k),y+k) – (f(x,y),y) = (f(x+h,y+k) – f(x,y), k) = (f'(x,y)(h,k) + r(h,k), k+0),
=
where
|r(h, k)|
lim (h, k)
A
0
(h, k)
=0
F(x+h,y+k) – F(x,y) = (f’(x,y)(h,k) ,k) + (r(h,k), 0). Therefore F is differentiable at (x,y) F
E.
Let
> 0 be given.
Since
f’is
exists a
continuous
on
E,
there
> 0 such that
|| f’(x,y) – f’(u,v) || <
whenever
|(x,y) – (u,v)| < Now
F'(x,y)(h,k)
–
F'(u,v)(h,k)
(f’(x,y)(h,k) ,k) – (f’(u,v)(h,k),k)
=
= ((f’(x,y) – f’(u,v))(h,k),0)
|| F'(x,y)(h,k) – F'(u,v)(h,k) || ≤ || f’(x,y ) – f’(u,v )|| |h,k| < if |h,k|≤1. | F'(x,y)(h,k) – F'(u,v)(h,k) || < L
F is a ? ‘-mapping of an open set E n+m
into R
.
Next to prove that F'(a,b) is an invertible element of L(R Since f(a,b) = 0, we have
n+m
f(a+h,b +k)
– f(a,b) = f’(a,b)(h,k)+r(h,K), where
lim (h, k)
A
0
|r(h, k)| =0 |(h, k)|
).
L
f(a+h,b+k)
=
A(h,k)
+
r(h,k)
(since f(a,b) = 0)
Since F(a+h,b+k) – F(a,b) (f(a+h,b+k),b+k) – (f(a,b),b)
=
= (f(a+h,b+k),k)
= (A(h,k)+r(h,k),k) = (A(h,k),k) + (r(h,k),0)
L
F’is the linear operator on R
that maps (h,k) to (A(h,k),k). (i-e. ) F'(a,b)(h,k) = (A(h,k),k).
n+m
Suppose
F'(a,b)(h,k)
(A(h,k),k) = 0
B
(i.e.) A(h,0) = 0
=
Ax
=
0
–1
B
(A x h) = 0
then
A(h,k) = 0 and k =0
B
A x h = 0.
Since A x is invertible, A x
L
0
B
(A x
–1
–1
exists .
A x )h
=
B
Ih
h = 0.
L
F'(a,b)(h,k)
L
F'(a,b) is a one-to-one on L(R
Since R
n+m
=
0
B
(h,k) = (0,0). n+m
).
is a finite dimensional
vector space and by theorem 4.1.3, F'(a,b) is onto, we have F'(a,b) is invertible.
Now
apply
the
inverse
function
theorem to F.
It shows that there exist open sets U and V in R F(a,b)
F
n+m
, with (a,b)
F
U and
V such that F is a 1 – 1
mapping of U onto V.
Now F(a,b) = (f(a,b),b) = (0,b) Let W = {y Since (0,b)
F
F
R
m
/(0,y)
F
V}.
V, b F W.
If y F W then (0,y)
F
L
(0,y) = F(x,y), x,y
L
(0,y) = (f(x,y),y)
L
f(x,y) = 0.
V = F(U). F
U
F
V .
Now to prove the uniqueness. Suppose,
with
the
same
y,
that
(x’,y) F U and f(x’,y) = 0. F(x’,y)
=
(f(x’,y),y)
=
(0,y)
=
(f(x,y),y) = F(x,y) Since F is 1 – 1,F(x’,y) = F(x,y) (x’,y) = (x,y)
B
B
x’= x.
Next to prove the second part. Define g(y) = x, for y F W such that (g(y),y)
FU
and f(g(y),y) = 0.
(
)
Consider F(g(y), y) = f(g(y), y), y = (0, y)
.....(1)
Since F is 1 – 1 on U and F(U) = V, G = F
–1
exists.
By inverse function theorem, G F ? ‘(V).
(1) gives G(F(g(y),y)) = G(0,y) (g(y),y) = G(0,y) L
F
g F ? ‘(W) (or) g
? ’ (V)
F?
‘. –1
Next to prove g'(b) = –(Ax) Put
B
Ay.
(y) = (g(y),y).
Let k F R Now
m
such that y+k
(y+k) –
F
W.
(y) = (g(y+k),y+k) –
(g(y),y) = g(y),k)
(g(y+k)
–
=
(g'(y)k
+
r(k),k).
= (g'(y)k,k) + (r(k),0) L
Φ is differentiable and Φ'( y) k = ( g'( y)
k, k)
.....( 2)
Since
(y)
=
(g(y),y),
f(
(y))
=
f(g(y),y) = 0 in w. The chain rule therefore shows that f’(
(y))
'(y) = 0
When y = b,f'( Therefore and f'(
(b))
'(b) = 0.
(y) = (g(y),y) = (a,b)
(y)) = A.
Thus f'( a, b) Φ'( b) = 0. ( i. e.) AΦ'( b) = 0. .....( 3)
Consider A x g'(b)k+ A y k = A(g'(b)k,k) =A
'(b)k (by (2))
A x g'(b)k+A y k = 0 (by (3)) A x g'(b) +A y = 0 Axg'(b) = - A y . Since A x is invertible, A x
-1
exists.
-I
A x A x g'(b) = - (A x -1)Ay.
L
g'(b) = – (Ax
–1
)A y .
E?)584-: Take n =2 , m =3 and consider the 5
mapping f = (f 1 ,f 2 ) of R given by f 1 (x 1 ,x 2 ,y 1 ,y 2 ,y 3 ) = 2e + 3
x1
2
into R
+ x 2 y 1 – 4y 2
f 2 (x 1 ,x 2 ,y 1 ,y 2 ,y 3 ) = x 2 cos x 1 – 6x 1 + 2y 1 – y 3 .
If a = (0,1) and b = (3,2,7), then f(a,b) = 0. The matrix of the transformation A = f'(a,b) is given by
[
[A] = D 1 f1 D 2 f1 D 3 f1 D 4 f1 D 5 f1
=
[
2
D 1 f2 D 2 f2 D 3 f2 D 4 f2 D 5 f2
3 1
− 6 1 2
Hence [Ax] =
[
2 −6
− 4
0
0
− 1
3 1
]
]
]
and [Ay] =
[
1 2
−4 0
0 −1
]
We see that the column vectors of [A x ] are independent, A x is invertible and the implicit function theorem
.
asserts the existence of a –mapping g , defined in a neighborhood of (3,2,7), such that g(3,2,7) = (0,1) and f(g(y),y) = 0.
Since
−1
[(A ) ] = [A ] x
−1
g'(3,2,7 ) = − Ax
= −
1 20
[
= −
1 20
[
−1
=
x
1
|Ax|
Ay = −
1 20
1 − 6
− 4
3
6 + 4
− 24
− 2
−5
− 4
3
10
− 24
− 2
AdjA=
]
[
1
−3
6
2
]
1
− 3
1
−4
0
6
2
2
0
− 1
[
][ =
1 20
][ 1/4
1/5
− 1/2 6/5
] − 3 / 20 1 / 10
Interms of pa rtial derivativ es, the conclusion is that D1g1 = D1g2 =
1 4 −1 2
D2g1 =
1 5
D2g2 =
D3g1 = 6 5
D3g2 =
−3 20 1 10
at the point (3,2,7
Double click this page to view clearly
)
]
C'P $E"#ION": 1.
Take n = m =1 in the implicit function theorem , and interpret the theorem graphically.
SECION-5.2
: HE RANK
HEOREM
D-.161<176: Suppose X and Y are vector spaces, and A F L(X,Y). The 6 = 4 4 ; 8 ) + - of A, ? (A) , is the set of all x F X at which Ax = 0. (i.e.) ? (A) = { x
F X/Ax
= 0}.
? (A) is a vector space in X. The )6/- of A, !-;=4< 1: X.
=
(A) = {Ax/x
F X}.
? (A) is a vector space in
Let x 1 ,x 2
F
? (A). Then Ax 1 = 0, Ax 2
= 0. Now A(x 1 +x 2 ) = Ax 1 + Ax 2 =0+0= 0. L
X 1 + X 2 F ? (A).
Also A(cx) = cAx = c0 = 0, where c is a scalar. L
cx F ? (A).
L
? (A) is a vector space in X.
!-;=4< 2 :
=
(A) is a vector space in
X. Let y 1 ,y 2
F =
(A). Then there exist
x 1 ,x 2 F X such that
y 1 = Ax 1, y 2 = Ax 2 . Now A(x 1 +x 2 ) = Ax 1 + Ax 2 = y 1 +y 2 . L
x1+ x2
If y
F
F =
(A).
. = (A), then there exists x F X
such that y = Ax cy = cAx = Acx L =
F=
(A)
(A) is a vector space in X.
D-.161<176:
The )6 of A is defined to be the dimension of
=
(i.e.) r(A) = dim
(A). =
(A).
!-;=4< 3:
Show that all invertible elements in n
L(R ) have rank ‘n’ and conversely.
Suppose A
F
(i.e.) A: R
n
n
L(R ) is invertible.
A
R
n
Since A is onto,
is 1 – 1 and onto.
=
n
(A) = R .
Therefore r(A) = dim
=
(A) = dim R
n
= n.
Conversely,let the rank of A
F
L(R n )
be n. (i.e.) r(A) = n. (i.e.) dim
=
(A)
Therefore
=
= R .
=
dim R
n
n
(i.e.) A is onto. Since R
n
is a finite dimensional vector
space , by theorem 4.1.3,
A is 1 – 1 Therefore A is invertible.
P72-+<176;: Let X be a vector space. An operator P F L(X) is said to be a projection in X if P
2
= P.
Example: Define P by P(x) = x , x F X. Let x 1 ,x 2
F
X. Then P(x 1 ) = x 1 , P(x 2 )
= x2. Now P(x 1 + x 2 ) = P(x 1 )+P(x 2 ) = x 1 + x 2 and P(cx) = cP(x) = cx. Therefore
P
transformation.
is
a
linear
2
Now P (x) = P(P(x)) = P(x). Therefore P is a projection. !-;=< 4:
If P is a projection in X then every x F X has a unique representation of the form x = x 1 + x 2 where x 1 F = (P), x 2 F ? (A). Since x 1 F = (P) , x 2 F ? (A), we have x 1 = P(x 1 ) and Px 2 = 0. x 2 =x–x
1 B
P(x 2 ) = P(x) – P(x 1 ) B
0 = x 1 – x 1, by putting P(x) = x 1 . Suppose x = x 3 + x 4 where x 3 F = (P) , x 4 F ? (A).. Then x 1 = Px = Px 3 + Px 4 = x 3 + 0 = x 3 and x 4 = x - x 3 = x - x 1 = x 2
Therefore the expression is unique. !-;=4< 5:
If X is a finite dimensional vector space and if X 1 is a vector space in X, then there is a polynomial P in X with =
(P) = X 1 .
Since X is finite dimensional and X 1 O X, dim X 1 is finite. If X 1 contains only 0, this is trivial, put Px = 0 for all x F X 1 . (P(x 1 +x 2 ) = 0 B P(x 1 )+ P(x 2 ) = 0+0 =0 and P(cx) = cP(x) = c0 = 0, 2
P (x) = P(P(x)) = P(0) = 0 = P(x).) Therefore = (P) = X 1 .
Assume dim X 1 = k > 0. Then it has a basis {u 1 ,u 2 ,...,u k } for X 1 and {u 1 ,u 2 ,.. .,u n ) for X. Define P by P(c 1 u 1 +c 2 u 2 +... .+c n u n ) = c 1 u 1 +c 2 u 2 +.. .+c k u k . Let
xF
X1.
Then
x
=
c 1 u 1 +c 2 u 2 +...+c k u k . Px
=
P[c l u 1 +c 2 u 2 +..
P[c l u l +c 2 u 2 +..
.+c k u k ]
.+c k u k +0.u k+l
+
.+0.u n ] = c l u l +c 2 u 2 +...+c k u k (i.e.) Px = x , for Therefore x But L =
=
F=
(P) O X 1 .
(P) = X 1 .
every x
=
x.
F
X 1.
(P). (i.e.) X 1 O= (P).
= ..
(#0- !63 #0-7-) #0-7- 5.2.1: Suppose
m,n,r
are
non-negative
integers with m ≥ r, n ≥ r. F is a ? ‘-mapping of an open set E R
m
O
R
n
into
and the derivative F'( x) has rank r
for every x
F
E. Fix a
F
E , put A = F'(a)
, let Y 1 be the range of A, and let P be a projection in R
m
whose range
is Y 1 .Let Y 2 be the null space of P. Then there are open sets U and V in R
n
,with a
F
U, U O E, and there is a 1
– 1 ? ‘-mapping H of V onto U (whose inverse is also of class ? ’ ) F(H(x)) = Ax +
such that
(Ax) (x
F
V)
where
is a ? ‘-mapping of the open
set A(V)
O
Y 1 into Y 2 .
P77.:
Case (i): Let r = 0. Then rank F’(x) = 0 for every x
F
E.
By definition dim {range of F'(x)} = 0. Range of F'(x) = {0}.
Therefore F'(x) = 0. ||F'(x)|| = 0. By
Mean
Value
theorem
||F(b)
–
F(a)|| ≤ |b – a| ||F'(x)|| = 0 L
||F(b) – F(a)||) = 0.
L
F(b) = F(a). F(x) is constant.
Let V = U. Define H(x) = x, for every x F V and
(0) = F(a).
Now F(H(x)) = F(x) = F(a) = 0x +
(0) =
(0x).
F(H(x)) = Ax + (Ax) where A = F'(a) = 0, since F(a) is constant. Case (ii): Let r > 0. Then rank F'(x) = r, for every x
F
E.
rank F'(a) = r, for every a L
rank A = r, since A =
F
E.
F'(a).
dim {range of A} = r. dim Y 1 = r. Y 1 has a basis containing r elements, say {y 1 ,y 2 ,... ,y r }. n
Choose Z i F R so that AZ i = Y i ,1≤i ≤ r.
Define
S:
Y1
R
A
n
by
S(c 1 y 1 +c 2 y 2 +...+c r y r )
=
c 1 z 1 +c 2 z 2 +...+c r z r , where c 1 ,c 2 ,...,c r are scalars. Clearly S is linear. L
ASy i = Az i B ASy i = y i , 1 ≤ i ≤ r.
L
ASy = y, if y
Define G: E
O
F
R
Y 1 . (or) AS = I.
n
A
R
n
by G(x) = x +
SP[F(x) – Ax]. Then
G(x+h)
–
G(x)
=
x
+h+
SP[F(x+h) – A(x+h)] – x – SP[F(x) – Ax] = h+ SP[F(x+h) – F(x) – Ax – Ah + Ax]
= h+ SP[F(x+h) – F(x) – Ah]
G(x+h) – G(x) – Dh = h+ SP[F(x+h) – F(x ) – A h] – h[I +SP [F' (x) –A], where D = I +SP[F'(x)–A = SP[F(x+h) – F(x) – F'(x)+h] G(x + h) − G(x) − Dh h
|G(x + h)
− G(x) − Dh|
|h|
When
h
A
≤
=
SP[F(x + h) − F(x) − F'(x) + h] h
||SP||
0,
|F(x + h)
the
− F(x) − F'(x) + h|
|h|
RHS
inequality tends to zero. Therefore LHS tends to zero.
of
the
L
G'(x) = D, for every x
F
E.
(i.e.) G'(x) = = I +SP[F'(x)–A]. G'(a) = I +SP[F'(a)–A] = I +SP[A–A] ( since F'(a) = A) = I.
L
G'(a) is an identity operator on R
n
.
Clearly G is a ? ’-mapping on E. Apply the inverse function theorem to G, there are open sets U and V in R ,with a G(a)
F
F
n
U,U O E.
V, G is 1 – 1 and G(U) = V.
G has an inverse H: V A U which is also bijection and H
F
? ’(V).
Next to prove that ASPA = A. Let x F R
n
. Then ASPA(x) ASP[A(x)]
= ASPy, where y = Ax,
= ASy = Iy = y = Ax. Therefore ASPA = A. Since AS = I, PA = A. Since G(x) = x + SP[F(x) – Ax], AG(x) = Ax + ASP[F(x) – Ax] = Ax + ASPF(x) – ASPAx = Ax + ASPF(x) – Ax = ASPF(x) = PF(x) ( since AS = I) Therefore AG(x) = PF(x), for every x F E.
In particular, AG(x) = PF(x) holds for x F U. (since U
O
E)
If we replace x by H(x), AG(H(x)) = PF(H(x)), for every x F U=V. Ax = PF(H(x)) Define every x P
(x) = F(H(x)) – Ax , for F
V.
(x) = PF(H(x)) – PAx = Ax – Ax =
0. L
(x)
Clearly
F
? (P) = Y 2 . is a ? ‘-mapping of V into
Y2. To complete the proof, we have to show that there is a ? ‘-mapping
of
A(V) into Y 2 satisfies
(Ax)
(x), for
every x F V.
Put
(x) = F(H(x)), for every x
F V.
'(x) = F'(H(x))H'(x) L
Rank
of
'(x)
=
Rank[F'(H(x))H'(x)] = r dim(range of '(x)) = r. dim M = r, where M = range of
'(x).
Since Y 1 = = (A), dim Y 1 = dim = (A)
=
rank A = r.
Also PF(H(x)) = Ax. Put (x) Ax B P P maps M into
'(x) = A =
(A) = Y 1 .
L
P is 1 – 1 and onto, since M and Y 1
have same dimensions
Suppose Ah = 0, where h = x 2 – x 1 F V P
'(x)h = 0 = P.0
Again
'(x)h = 0 .
B
(x) = F(H(x)) – Ax, x
F
V
'(x) = F'(H(x))H'(x) – A. '(x) = F'(H(x))H'(x) – A =
'(x)h –
Ah = 0, Define
g(t)
=
(x1 +th)
t F [0,1]. g'(t) =
'(x 1 +th)h = 0.
Therefore g(t) is constant.
where
g(0) = g(1). But g(0) = L
(x 1 ) and g(1) =
Ψ(x 1 ) =
Define
(x 2 ). on A(V)
(Ax) =
(x 2 ).
O
Y 1 such that
(x).
Next to prove that
F
? ‘(A(V)) ,
Let y 0 be a point in A(V). Then there exists x 0 F V such that y 0 =Ax 0 . Since
V
is
open
and
y0
has
a
neighborhood W in Y 1 such that X = X 0 + S(y – y 0 ) lies in V, Ax = Ax 0 + AS(y – y 0 ) = y 0 +y–y (since AS = I)
0
= y (y) =
L
(Ax) =
(x) =
(x 0 + S(y
– y 0 )) '(y) = L
φ
F
’(x 0 + S(y – y 0 )) S.
? ‘(A(V)).
C'P $E"#ION": 2
1.
For (x,y) ≠ (0,0), define f= (f1,f2)b y f1(x, y) = f2(x, y) =
xy 2
2
x +y
x − y 2
x +y
compute the rank
of f’(x,y) and find the range of f.
2.
n
m
Suppose A F L(R ,R ), let r be the rank of A. a.
Define S as in the proof of theorem 5.2.1. Show that R (S).
2
2
is a projection in R
n
whose
null space between and whose range is b.
=
(S).
Use (a) to show that dim N (A) + dim R (A)= n.
SECION-5.3
:
DEERMINANS.
D-.161<176:
If (j 1 ,j 2 ,...,j n ) is an ordered n-tuples of integers. Define s(j1, j2, ...., jn) = Π sgn (jq − jp) p
where sgn x = 1 if x > 0, sgn x = –1 if x < 0, sgn x = 0 if x = 0. Then s(j 1 ,j 2 ,..., j n ) = 1, – 1 , 0, and it
changes sign if any two of the j's are interchanged.
D-.161<176:
Let [A] be the matrix of the linear operator A in R
n
with standard basis
{e 1 ,e 2 ,...,en }. Let a(i,j) be the entry in the ith row and jth column of [A]. We define det
[A]
=
s(j 1 ,j 2 ,...,j n )a(1,j 1 )a(2,j 2 )....a(n,j n ) . the sum extends over all ordered ntuples of integers (j 1 ,j 2 ,...,j n ) with 1≤ j≤n.
E?)584-:
If [A] =
2 4 , then det A = [ ] 5 3
[ ]
∑
s(j1, j2)a(1, j1)a(2, j2)
= s(1,2)a(1,1)a(2,2)
+
s(2,1)a(1,2)a(2,1) =
1.2.3
+
(–1)4.5 = 6 – 20 = –14
Note : Let [A] be the matrix.
[A] =
[
a11 a12
S
a1j
S
a1n
a
S
a
S
a
S
S
S
S
S
anj
S
ann
a 21
S
22
S
an1 an2
2j
2n
]
n
The jth column vector xj = a1je1 + a2je1 +....+a
n
njen = ∑ aijei = ∑ a(i, j)ei j=1
Therefore .,x n ).
det[A]
=
det
i=1
(x 1 ,x 2 ,..
#0-7- 5.3.1: a.
nR
then det[A] = det (x
.,x n )
1 ,x 2 ,..
= 1. b.
det is a linear function of each of the column vectors x, if the others are held fixed.
c.
If [A] 1 is obtained from [A] by interchanging two columns, then det[A] 1 = –det[A].
d.
n
If I is the identity operator o
If [A] has two equal co lumns, then det[A] = 0.
Double click this page to view clearly
P77.:
a.
If the matrix [A] = [I] then a a(i, j) =
{
1
if i = j
0
if i ≠ i
det[I] =
s(j 1 ,
(i,j)
j 2 ,... j n )a(1,
j 1 )a(2,j 2 )....a(n,j n ) = s( 1,2,... ,n)a( 1,1 )a(2,2).. ..a(n,n) = s(1,2,...,n).1 =
sgn(2
–
1)sgn(3
–
2).....sgn(n – (n – 1)) = 1. b.Since
s(j
1 ,j 2 ,...,j n )
=
Π sgn (jq − jp) where sgn(j q –
p
j p ), where sgn x = 1 if x > 0, sgn x = –1 if x < 0, sgn x = 0 if x = 0, s(j
1 ,j 2 ,..
.,j n )
=
0 if
any two of the j's are equal. Each of the remaining n! products in det
[A]
=
s(j 1 ,j 2 ,...j n )a(1,j 1 )a(2,j 2 )....a(n,j n )
contains exactly one factor from each column. Therefore det is a linear function of each of the column vectors x, if the others are held fixed. c.
In s(j 1 ,j 2 ,...,j n ) if two entries are interchanged, change
of
it sign.
effects
the
Therefore
det[A] 1 = –det[A]. d.
Suppose two columns of [A] are equal, then interchange the two columns, –det[A].
we
get
det[A] 1
=
But [A] = [A] 1 . Therefore det[A] = –det[A]. (i.e.) 2det[A] = 0. (i.e.) det[A] = 0. #0-7- 5.3.2:
If [A] and [B] are n by n matrices then det([B][A]) = det[B]det[A ]. P77:
Let x 1 ,x 2 ,.. .,x n be the columns of [A]. Define
B
(x1, x2, ....,xn) = ΔB[A] = det([B][A])
......(1)
(i.e.) Bx 1 ,Bx 2 ,...,Bx n are the column vector of [B][A]. (i. e.) ΔB(x1, x2, ...., xn) = det (Bx1, Bx2, ....., Bxn). .....(2)
By (2) and theorem 5.3.1,
b also
has the properties (b) to (d). n
Since xj = ∑ a(i, j)ei, ΔB[A] = ΔB i=1
[
n
∑ a(i, j)ei, x2, ..., xn i=1
]
n
= ∑ a(i, 1) ΔB[ei, x2, ..., xn]. i=1
Repeating this process with x
2 ,...
,x n
we obtain ΔB[A] =
∑ a(i , 1)a(i , 2)..........a(i , n) Δ (e , e , .....e ) 1
2
n
B
i1
i2
in
where the sum being extended over all ordered n-tuples (i 1 ,i 2 , .... i n ) with the condition 1 ≤ i r ≤ n . Now
B [e i ,x 2 ,...,x n
] = t(i 1 ,i 2 ,.... i n ).
Δ B (e 1 ,e 2 ,...,e n )
Double click this page to view clearly
Since [B][I] = [B], det([B][I]) = det[B].
L
Δ B (e 1 ,e 2 ,...,e n ) det([B][I]) Δ b [A]
L
=
Δ B [I]
=
=
a(i1 ,1)a(i 2 ,2)....a(i n ,n)t(i 1 ,i 2 ,.... i n ).
Δ B (e 1 ,e 2 ,...,e n )
Δ B [A]
=
det([B][A])
=
a(i 1 ,1)a(i 2 ,2)....a(i n ,n)
t(i 1 ,i 2 ,.... i n ).det[B]- (1) Take [B] = [I], we get det[A] =
a(i 1 ,1)a(i 2 ,2)....a(i n ,n)
t(i 1 ,i 2 ,.... i n ).det[I] =
a(i 1 , 1 )a(i 2 ,2)....a(i n ,n)
t(i 1 ,i 2 ,.... i n ) ( since det[I] = 1) Substitute in (1), we get
det([B][A])
=
det[B]det[A]. #0-7- 5.3.3:
A linear operator A on is invertible iff det[A] ≠ 0. P77:
Suppose A is invertible. Then [A][A
–1
] = I.
By theorem 5.3.2, det[A]det[A det([A][A
–1
]) = det[I] = 1.
Therefore det[A] ≠ 0. Conversely , let det[A] ≠ 0. Now to prove that A is invertible.
–1
] =
Suppose A is not invertible. Then the column vectors x
1 ,x 2 ,...
.,x n
of [A] are dependent. Therefore there exists a vector x k such that x k + ∑ cjxj = 0 for some j≠k
scalars c j . If we replace x k by x k + c j x j , then the determinant of the matrix is unchanged. The same result is true if we replace x xk + ∑ cjxj
(i.e.
k
by
zero).
But
the
j≠k
determinant of a matrix contains a column of zeros is zero.
L
(
)
det [A] = det x1, x2, ....., xk + ∑ cjxj, ....xn = det(x1, x2, ...., 0, ...., xn) j≠k
Double click this page to view clearly
derivatives D 1 f, D 2 f,..., D n f . If the function
D jf
are
themselves
differ enti able, then the secon d order partial derivative of f are defined by D ij f= D i D j f where i = l,2,...,n, j = l,2,...,n. If all these functions D
ij f
are
continuous in E then we say that f is of class ? ”in E (or) f Note:
If
the
F
? ”(E)
derivatives
are
continuous then D ij f = D ji f. #0-7- 5.4.1:
Suppose f is defined- in an open set 2
E O R , and D i f, D 21 f are exist at every point of E. Suppose Q
O
E is a
closed rectang le with sides parallel to
the coordinate axes, having (a,b) and (a+h,b+k) as opposite vertices (h ≠ 0, k ≠ 0). Put (f,Q) = f(a+h,b+k) – f(a+h,b) – f(a,b+k) + f(a,b). Then there is a point (x,y) in the interior of Q such that (f,Q) = hk(D 21 f)(x,y). P77.:
Let u(t) = f(t,b+k Given
) − f(t, b). .....(1)
(f,Q)
=
f(a+h,b+k)
–
f(a+h,b) – f(a,b+k) + f(a,b). = u(a+h) – u(a) = h u'(x) where x is a point lies between a and a+h.
Differe ntiate (1) with respect to t, we get
u'(t) = D 1 f(t,b+k) – D 1 f(t,b) L
u'(x) = D 1 f(x,b+k) – D 1 f(x,b)
L
(f,Q) = h u'(x) = h[D 1 f(x,b+k) –
D 1 f(x,b)] = hk(D 21 f)(x,y) where b < y < b+k. #0-7- 5.4.2:
Suppose f is defined in an open set 2
EO R
, and suppose D
1 f,
D 21 f and
D 2 f are exist at every point of E and D 21 f. is continuous at some point (a,b) and
F
E. Then D 21 f exists at (a,b)
(D 12 f)(a,b) = (D 21 f)(a,b).
P77.:
Suppose A = (D 21 f)(a,b). Given that (D 21 f.) is continuous at (a,b)
F
E.
Let
> 0 be given.
If Q is a rectangle contained in E such that |(D 21 f)(x,y) –(D 21 f)(a,b)|< (i.e.) |(D 21 f)(x,y) –A | < By
theorem
5.4.1,
hk(D 21 f)(x,y). L
L
Δ(f, Q) hk
|
= (D21f)(x, y).
Δ(f, Q) hk
|
− A <ε
(f,Q)
=
h
0, k
A
Δ(f, Q) hk 1
=
..... (1)
0
=
f (a+h,b+k
) − f(a+h,b ) − f(a,b+k ) + f(a, b) hk
f(a+h,b+k
hk 1 h
A
(f, Q) = f(a + h, b + k) − f(a + h, b) f(a, b + k) + f(a, b),
Since
=
Δ(f, Q) hk =A
lim
L
) − f(a+h,b ) − f(a,b+k ) − f(a, b)
(
[
[
f(a+h,b+k
) − f(a+h,b ) k
−
f(a,b+k
k
Keeping h fixed and allowing k
A
=
1 h
1 h
{[ A
A
f(a+h,b+k
lim
0, k
k
0
] [A −
f(a,b+k
lim
k
) − f(a, b) k
0
]}
) − (D2f)(a, b)]
Δ(f, Q) hk = A
) − f(a+h,b )
0
[(D2f)(a+h,b lim
h
0,
0
k
=
A
]
Δ(f, Q) hk
lim
k
)]
) − f(a, b)
1 h
lim h
A
0
[(D2f)(a+h,b
) − (D2f)(a, b)] = D12f(a, b)
From A = D 12 f(a,b) Therefore (D 21 f)(a,b) = (D 12 f)(a,b). C'P $E"#ION": 1.
Show that the existence of D
12 f
does not imply the existence of D 21 f. For example, let f(x,y) = g(x),
where
g
is
nowhere
differentiable. Double click this page to view clearly
SECION-5.5
:
DIFFERENIAION OF INEGRALS
#0-7- 5.5.1: "=887;(x,t) is defined for a ≤ x ≤ b, c
a.
≤ t ≤d; is
b.
an
increasing
function
on[a,b]; c. d.
φ' R (
) for every t
[c,d];
c < s < d, and to every corresponds a |(D 2
> 0 such that
(x,t) –(D2
)(x,s)| <
all x [a,b] and for all t s+
> 0
(s –
for ,
). b
Define f(t) =
∫φ(x, t) dα(x)
(c≤t≤d
a
Then (D 2 φ)
s
=
(
),f'(s) exists,
)
b
and f' (s) =
∫(D φ)(x, s) dα(x) 2
a
P77.:
Consider the difference quotients ψ(x, t) =
φ(x, t) − φ(x, s) t−s
for0<|t−s|<
By Mean vale theorem, (x,t) –
(x,s) = (t – s) D2
(x,u),
where t < u < s. L
φ(x, t) − φ(x, s) t−s
(i.e.)
= D2φ(x, u).
(x,t) = D 2
By (d), |(D 2
(x,u).
(x,t) –(D2
(x,s)| <
for all x F [a,b] and for all t s+
F
(s –
).
(i. e.) |ψ(x, t) − D2φ(x, s)| <
.....(1)
,
b
Define f(t) =
∫φ(x, t) dα (x). a
b
Then f(s) =
∫φ(x, s) dα (x). a
b f(t) − f(s) t−s
=
∫
φ(x, t) − φ(x, s) dα (x) t−s
a b
=
∫ψ(x, t) dα(x) a
From D2
(1),
(x,t)
converges
to
(x,s), t
Therefore on [a,b].
(x)
By theorem 2.4.1,
A
s
(D 2 φ)
uniformly
is monotonically
increasing on [a,b] and
fnF
=
(
).on [a,b], for n =
and suppose f n [a,b]. Then f b
A
1,2,3,....,
f uniformly on
F =
(
)on [a,b], and
(
) (since
b
∫fd
= lim n
a
A
∫f
∞ a
we have (D 2 φ) (
n dα
s
F =
t
F =
)) b
Since
f (t) − f(s) t−s
=
∫ψ(x, t) dα (x), a b
lim
t
As
f(t) − f(s) = t−s
A s ∫a
lim t
b
ψ(x, t) dα(x) =
lim ∫A a
t
ψ(x, t) dα (x) s
b
=
∫(D φ)(x, s) dα(x) (by (1)) 2
a b
herefore f'(s) =
∫(D φ)(x, s) dα (x) 2
a
Double click this page to view clearly
E?)584-: Compute
the
integrals
∞ 2
f(t) =
∫e
− x
cos(xt) dx
cos(xt)dx
− ∞
and ∞
g(t) = −
∫
2
xe
− x
sin (xt) dx, where − ∞ < t < ∞.
− ∞
We claim that f is differentiable and f’(t) = g(t). If
>0,then = sin
=
sin
−
cos(α + β) − c os β −
sin
+ cos (α +β) − c os β
+ cos (α + β) − c os β
sin
= (α + β) sin
+sin
+cos (α + β) − ( β
+
sin
+sin sin
+cos )
α+β
=
1 β
∫( sin
− sin t ) dt
α
|
cos(α + β) − co s β
+sin
|
α+β
| = ∫( sin 1 β
α
Double click this page to view clearly
|
− sin t ) dt
α+β 1
∫| sin
≤ |β|
− sin t | dt
α α+β
≤
1 |β|
∫| t −
| |dt|
α
(by Mean value theorem) 1
≤ | β|
[
(t− 2
2
)
]
α+β
1
[
≤ |β| (
α
1
+
−
2
1
2
]
)− 0 2
| |=
≤ |β| β = |β| β
(i. e.)
|
cos(α + β) − co s β
| β|
|≤
+sin
|β| 2
.....(1)
2
∞
Given that f(t) =
∫e
2
− x
cos(xt) dx
− ∞
∞
f(t + h) − f(t) =
∞
∫e
− x
2
cos(x(t + h)) dx −
∫e
− ∞
2
− x
cos(xt) dx
− ∞
∞ f(t + h) − f(t) h
=
1 h
∫e
− x
2
[cos(xt+xh )) − cos (xt)] dx
− ∞
Let
=xt,
f(t + h) − f(t) h
=xh. − g( t ) ∞
=
1 h
∫
∞ 2
e
− x
[
cos(xt+xh
]
))
− cos (xt) dx +
− ∞
∫xe
2
− x
sin(xt) dx
− ∞
∞
=
1 h
∫e
2
− x
[cos(xt+xh )) − cos (xt) +xhsin (xt)] dx
− ∞ ∞
=
1 h
∫e
2
− x
[cos(α + β) − c os
+
sin ] dx
− ∞
∞
|
f(t + h) − f(t) h
From (1)
|
|
− g(t) ≤
1 |h|
cos(α + β) − cos + β
∫e
− x
2
|cos(α + β) − c os
sin
|≤
sin | dx
|β| 2 2
(i. e.) |cos(α + β) − c os
+
− ∞
+
sin | ≤
|β| 2
2
< |β| .
Double click this page to view clearly
∞ L
|
f(t + h) − f(t) h
|
1 |h|
− g(t) <
∫e
1
2
2
|β| dx
− ∞
∞
< |h|
− x
∞
∫
2
e
− x
2
∞ 2
2
2
2
− x − x 2 x dx |x| |h| dx = ∫e |x| dx = ∫e
− ∞
− ∞
When h
− ∞
0, f is differentiable at t
A
and f’(t) = g(t). Next to find f(t): ∞
f(t) =
∫
− x
e
2
cos(xt)dx.
− ∞ − x
Letu=e Then
L
du dx
2
,dv=cos
= − 2xe
f(t) =
[
2
e
− x
− x
sin(xt) t
2
(xt) dx. v=sin (xt) / t ∞
∞
]
+2 − ∞
∫
xe
− x
2
sin xt dx t
− ∞
∞ 2
=0+
t
− x
∫xe − ∞
2
sin xtdx = −
2 t
g(t)
(i. e.) tf(t) = − 2g (t) Since f’(t) = g(t), f satisfies the differential equation 2f’(t) + tf(t) = 0
Double click this page to view clearly
I.F=e
∫ 2t dt = e
2
t 4
2
t
∫
Therefore e 4 f(t) =
0+c=c. ∞
∞ 2
Initially, when t = 0, f(0) =
e
− x
2
dx+2
∫
Letz=x
. Then
dz dx
− x
dx
∫
− ∞
2
e 0
= 2x.
dz (i. e.) dx = dz 2x = d(z) ∞
f(0) = 2
∞
∫e 0
L
1
−z
2 √z
dz =
∫z
∞ −1 2
e
−z
dz =
∫z
0
1 2
− 1
e
−z
dz = √π
0
c = √π. 2
t 4
The required solution is e f(t) = √π. 2
f(t) = √πe
−
t 4
.
C'P $E"#ION": 1.
For t ≥ 0, put
φ(x, t) =
and put
{
x
(0 ≤ x ≤ √ t )
− x + 2 √t
(√ t ≤ x ≤ 2 √ t )
0
otherwise
(x,t) = –
(x,|t|) if t <
0. Double click this page to view clearly
2
Show that and (D 2
is continuous on R ,
)(x,0) = 0 for all x. 1
Define f(t) =
∫φ(x, t) dx −1
Show that f(t) =tif
|t | <
1
f'(0) ≠
∫(D φ)(x, 0) dx 2
−1
1 4
Hence