Perio&.a
Mathenmtica
Hungarica
VoZ. 21 (4), (1990),
(0, 1, 2, 4) INTERPOLiiTION A.
SAXENA
pp. 261-271
BY G-SPLINE...
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Perio&.a
Mathenmtica
Hungarica
VoZ. 21 (4), (1990),
(0, 1, 2, 4) INTERPOLiiTION A.
SAXENA
pp. 261-271
BY G-SPLINES
(Lucknow)
1. Introduction Saxena and Tripathi [3], [4] h ave introduced spline methods for solving the (0, 1, 3) interpolation problem. They have used spline interpolants aA c L$$\ *t3) of degree six for functions / c C6 to solve the problems ad 8: C fin,6 @(a$
= yp), q = 0, 1, 3, k = O(1) n, $&J
= 9;;
and
are given reals. Their Let / c (Y(I).
convergence
results are as follows:
Then for q = o(l)& /j@’ - fq’ ~~~-~x~,x~+~~ < &h5-’
%@h
II sZq) - fq) lL.-[x~,x~+J < w5-q(%m~ where 14whenk=O 60 when k = l(l)n
-
1,
and I&= Here ti6( -) is the modulus
591 when k = 0 60 when k=l(l)m--2 27 when k = n - 1. of continuity
of f@.
AMS (MOS) Subject du-v~+cutkns (1980/85). Key words ati phmwx. Deficient Chpline.
Primary
4lA.
262
SAXENA:
(0, 1, 2, 4) INTERPOLATION
BY
G-SPLINES
Fawzy [2], in one of his very recent, papers, has solved the (0, 1,3) interpolation problem by constructing a spline method using piecewise polynomials such that for functions f c C4, the method converges faster than the method given in [5] for solving the same interpolation problem, and for functions f c C5, the order of approximation is the same as the best order of approximation using quintic splines. For this purpose he has used special kind of g-splines, to which he refers as lacunary g-splines. Motivated by the method and results of Fawzy [2], we solve here a different interpolation problem, namely, the (0, I, 2,4) interpolation problem, which is formulated as follows: Given a uniform
partition
A: of the interval
q
1 = [0, 1] and real numbers
find 8 in a suitable (1.1)
o=~o<~~<...<~~-~~~~=l
class such that sql$
= yp, q = 0, 1,2,4,
k = O(l)?&.
Our aim here is to introduce a spline method for solving the above problem such that for functions f c C6, the method converges faster than the methods given in [3] and [4]; and a method which, for functions f c C’, gives the same order of approximation as the best order of approximation using splines of degree seven. We find the solution in the class of deficient g-splines S$) for functions f c C6 and in SFfj for f c C7. In Section 2 we define the class Sz$) and construct the spline a* c S$) which is the unique solution of the problem (1.1). Error bound of the spline interpolant is given in Section 3. Same scheme for the class S$$ is carried out in Section 4. Application of these spline interpolants is given in Section 5. We finish the paper by making some remarks in Section 6.
2. The
Class
S:,(g) -
Existence
and
Uniqueness
We define the class of spline functions Sz$) as follows: .T~ c SE(i) if the following conditions are fulfilled: s* c P(1),
(2.1) (5w
aA C n6 in bk
and
zjl+l ] for each k = O(l)n sA
C
x7
in LznMl,4.
-
2, and
Any element
SAXENA:
(0, 1, 2, 4) INTERPOLATION
263
BY G-SPLINES
We construct sA in order that it is a solution of (1.1) for functions For this purpose we set s
sk(x) when xk < x < x~+~, k = O(l)% A - L s~-~(x) when xnmI 5 x < x~.
f c C6( I).
2,
Owing to (1.1) and (2.2), we can write
The coefficients Thus we have
ak,j are determined
in terms of the given data using (2.1).
1
{2.,5)
ak,3
=
-ak
-
+k
d-
$k?
24
(2.6)
h2ak$ = -.&zak
w71
h3tZk,6 = 5ak -
+ 4,%‘ - t yk, 14j3k + 10yk;
and 1 an-l,3 = Ean-l
(2.10)
h3anvl,6=
{2.11)
h4an-l,,
3%-,
-
= --6anml
+ 21&-l
-
21~~-,
+ 7dn-l;
where
hyk = 24 Y;+~ -
h2 y; ---yjf) .
I
;
264
EAXENA:
(0, 1, 2, 4) INTERPOLATION
BY W3PLINF,S
and
THEOREM 2.1. For a uniform unique epline function aA C S$j problem (1.1).
partition /J of the interval I, there exists a which is the solution of the interpolation
3. Error Let f c @(I) and d$) = fd(zk), prove the following
Bounds q = 0, 1, 2,4;
k = O(l)n -
1. We shall
THEOREM 3.1. Let sA c S$i) 3 be the eolution of the problem (1.1). Then for f c @(I), we huve
where q = 0(1)6, k = O(l)n table:
1, and the wn.stants c~,~ are given in the follin&g Table.
ck, @
O
1
-$j-
1ooa
ck,z
ck,8
‘k,4
ck,s
ck,e
11
56 -iii-
-
23 2
19
16
-
-ii-
245
k=n-1
ck, I
1
63
-
3-
For the proof of this theorem
8
739 120
-
-- p’(xk)]
218
5
we shall need the following
LEMMA 3.1. We have for all k = O(l)?a 1ak,j
118
< %,jh6-‘%(h)y
2, j = 3, 5
lemmas:
SAXENA:
(0, 1, 2, 4) INTERPOLATION
BY
265
G-SPLINES
where
If f c @(I),
l?ROOF.
= O(l)?& -
then
using
Taylor’s
formula
we have
for
2, cxk= 12Oy;’
+ 6h2yf) + h3f@)(lk),
= 6Oy;’
+ 5hzyf)
+ hsf@+j,J,
yk = 24yi”
+ 4h2yf)
+ h3f@)(zYk);
bk
and where xk
SubstituCng LEMMA
<
lkp
qky
‘k
<
xk+l*
these values in (2.5)-(2.7),
3.2. The foh?owing 1 f&l,j
-
e&mat@
fG’(XnpJ]
1*&,6
-
f@‘td~
we at once get the lemma.
are valid.
< Cn-l,jh6-‘C06(h), < 7hV4
%-l
j =
3, 5,
< x < x,,,
and
where cn-
PROOF.
For
f c@(I)
17 -120
and q-l,3
= 11.
we have by Taylor’s
formula
I,3
=
anMl = 840~;:~
+ 42h2y$il
+ 7h?f@)(&-J,
&-I
= 3W&‘Ll
A- 30h2y$yl
+ 6h3f@+jn-J,
yn-l
= 12oy;:1
+ 20h2yfll
+ 5h3f@)(Ql),
and dnml = 6h2yzLl Substituting PROOF
+ 3h3fc6)(A,&
these values in (2.8)-(2.11) of Theorem
3.1. Let first be
we get the lemma.
k E
266
SAXENA:
From (2.3) and writing
(0, 1, 2, 4) INTERPOLATION
finite Taylor
-t- ‘xt~~~~q
BY
G-SPLINES
sums for j(z) and its derivatives,
(G,~ - f6~(i%,q)) when
we have
q = 0, 1, 2, 3,
when q = 4,5, a k,6 -
f@)(x) when q = 6;
where xk
Now
using the estimates
<
tk,q
c
‘k+l-
given in Lemma
3.1 we obtain
the theorem
for
k=O(l)n-2.
The other part of the theorem, the same way using Lemma 3.2.
4 . The
when xn-r < x < x~, can be. obtained
Class
L5$$ denotes the class of functions (4.1) (4.2)
in
Surf’
GA(x) such that
a* c Q2Uh GA C 7z7 in [xk, xk+J,
for each k = O(l)n
-
1,
and (4.3)
GF(xk + 0) = Gz)(xk - 0), k = O(l)n
We construct GA such that it is the solution f c V(I). For this purpose we set GA = Gk(x), k = O(1) n Owing to conditions
(1.1) and (4.2), we can write
-
1.
of the problem 1.
(1.1)
for
SAXENA:
(0, 1, 2, 4) INTERPOLATIOX
BY G-SPLIKES
267
If we apply the continuity requirement (4.1) and the condition (4.3), we obtain the coefficients bk,j, (j = 3, 5,6, 7) in terms of t,he given data as follows:
(4.6) (4.7)
h3bk,C = 3ak - T,fIk
+ 10~~ -f&,
and (4.8)
h4bk,7 = -6q.
+ 21& -
21yk + 7&;
where
and dk = 6h(yfi
I -
yj,?)).
It is now obvious that GA is a unique element of Se!) which solution of! the interpolation problem (1 .l). The following convergence theorem can easily be established.
is t,he
THEOREM 4.1. Let GA c S,,, c2d be the unique solution of the interpolation problem (1.1). Then for f c V(I), we have for aU q = O(l)? and k = O(l)n - 1,
where the co&ants
c& are given in the following Table
2
table:
SAXENA:
(0, 1, 2, 4) INTERPOLATION
5. Application
BY G-SPLINES
to Differential
Equation
In this section we develope a global method for approximating solution Y(X) of the Gauchy’s initial value problem (5-l)
9” = fb
the exact
92 Y’L !/@I = !/II, Y’o4 = z.4;
over the entire interval [0, 11. Here we wurne that
and that it satisfies the Lipschitz (5.2)
lfqT%
3% 99
-
f@%%
condition
Y27 !A)1
<
q
(1.2). !Jl
-
Y2l
+ I 34 - !I; II?
(q = O(l)?-) for all x c [0, 1] and all reals yi, y2, &, &. These conditions ensure the existence of unique solution of problem (5.1). Our method consists in converting a discrete variable method into a global method through spline interpolation. For this purpose we use Fawzy’s definition given in [l] to obtain the numerical value of
which are approximations
to the exact values
With these values we construct a spline function ZA c AS$ (respectively aA c E$$‘)) which will be an approximation to the exact solution of (5.1). The set F@J)is defined as:
Xk
=-,
’ n
k=O(l)a,
h=L n
SAXENA:
The error qualities (5.3)
jygl
(0, 1, 2, 4) INTERPOLATION
of the approximate
- g&j
values $&I
< cjcor+2(h)h~+~,
BY
269
G-SPLINES
are estimated
AT= O(l)% -
by the ine-
I, j = O(l)?. + 2.
For the values fjI and gi, even sharper estimates (5.4)
IYl - ?&I < %%+*wr+49
are valid (see [1] Lemma 2.2.1 and IZ++~(~) is the modulus of For the construction of Here we replace yk’a by &‘a in Gk,]. We prove the following
IY; - !xj < w%+2v4~r+3
and 2.2.3). Here cj’s denote different constants continuity of y@+‘)(z). g*(z) we use the spline method of Section 2. the definition of S*(Z) and the numbers u@,~by
5.1. Let g(x) be the exact .soWion of (5.1). Then
THEOREM
1y(q+-$ - $,$f(x)j < Aqh6-qm6(h), q = 0(1)6.
(5.5)
The proof of this theorem
is an easy consequence of the following
LEMMA
is the spline function
5.1. If Q(X)
c fl;$’
wnstvucted with the exact
values yi?, then (5.6)
1s?(x) - gcq)(x)/ < Kqh6-qco6(h),
q = 0(1)6.
PROOF. Owing to (2.3) we have
k = O(l)n - 2. using (1.3) for Y = 4 we have from (2.5)-(2.7) 1 ak,3
-
‘k,3
J <
K,,$3w4~~~
and 1 ‘k,6
-
‘k,6
1<
K6,3%th)s
270
SAXENA:(O,l,2,4)INTERPOLATION
BY G-SPLINES
This proves the lemma for q = 0. For other values of q, the lemma proved by successive differentiation.
Now using Theorem
3.1 and Lemma
1y@)(x)
- #l)(x)/
proves the theorem. The following theorem (5.1) as n + co.
<
can be
5.1, we obtain ~qh6-qu6(h),
q = 0(1)6;
which
Therefore
owing to Lipschitz I w4
shows that iA
condition
- f(G q&L +mt4
which, on using Theorem
q&9)
- &Jxll
satisfies the differential
equation
(5.2) we have 1 < 1T;(x) - !f(x)j + j!/t4
+
- gJx)lJ
5.1 for q = 0, 1, 2 at once gives (5.7).
Using the method of Section 3 and adopting the same procedure as above, we construct the spline function GA(z) c iS’$$ which will be an approximation to the solution when j 6 C’(I). We omit all details and only state the convergence theorems. THEOREM
5.3.
If
y(x)
THEOREM
5.4. We have
i8 the exact aohtion
oj (5.1), then
SAZiENA:
(0, 1, 2, 4) INTERPOLATION
BY G-SPLINES
271
6. Conclwion
Looking at the results of this’paper and those of [2], one finds the soluproblem in the class S$) for f c 0?(I) and in the tion of (0, 2) interpolation , denotes the class of functions gA(z) c C(1) class S$$ for f c C3(I). Here S z(i) which is quadratic in [x~, x,,+~1, lc = 0(1)~& - 2 and cubic in [xnWI, xJ; and Se$ is the class of functions GA(x) c C(1) which is a, cubic in [x~, Q+J, k = O(l).T&- 1. Regarding the efficacy of approximation of these interpolants, we have 11ii2) - icqJjjm < ~~h’-~q(h),
if / c (F(I),
~~@jf - fq) ]I= < c~~~-~u@),
if / c C3(I).
and
It will be int,eresting tion for T 2 5.
to generalize the result to (0, 1, . . . , Y -
2, T) interpola-
REFERENCES [1]
T.
[2]
T.
[3] [4] [6]
FAWZY, Spline functions and the Cauchy’s problem II, A&z A4d. Aad. Sci. Hungur., vol. 29 (3-4), (1977), pp. 269-271. MR 80~: 66148 FAWZY, (0, 1, 3) Lacunwy int,erpoMion by G-splinea, Ann&es Univ. Sci. Budapest,
(1986), pp. 63-67. ZbZ 664, 41006 (0, 2, 3) and (0, 1, 3) int,erpol&,ion through splines, Acta M&h. Acad. Sci. Hungar., vol. 60 (l-2) (1987), pp. 63-69. R. B. SAXENA and H. C. !CRIPATHI, (0, 2, 3) and (0, l., 3) interpolation by six degree splines, J. of Comptutional ad Applied Mathem&cs, vol. 18 (1987), pp. 396-401. VARMA, A. K., Lacunary int,erpol&ion by splines II, Acta M&h. Acad. Sci. HungaT.. vol. 31 (3-4), (1978), pp. 193-203. Section Mathematics, R. B. SAXENA and H.
vol.
XXIX
C. TRIPATFII,
(Received ANJULA SAXENA DEPARTMENT OF IvlATHE&fATICZ & ASTRONOMY LUCKNOW UNIVERSITY, LUCEi?OW INDIA
October 5, 1988)