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Article

Convergence of Collocation Methods for One Class of Impulsive Delay Differential Equations

College of Sciences, Northeastern University, Shenyang 110819, China
*
Author to whom correspondence should be addressed.
Axioms 2023, 12(7), 700; https://doi.org/10.3390/axioms12070700
Submission received: 7 June 2023 / Revised: 16 July 2023 / Accepted: 17 July 2023 / Published: 19 July 2023
(This article belongs to the Special Issue Differential Equations and Inverse Problems)

Abstract

:
This paper is concerned with collocation methods for one class of impulsive delay differential equations (IDDEs). Some results for the convergence, global superconvergence and local superconvergence of collocation methods are given. We choose a suitable piecewise continuous collocation space to obtain high-order numerical methods. Some illustrative examples are given to verify the theoretical results.

1. Introduction

Impulsive differential equations appear to represent models of several real-life phenomena. In recent decades, systems with impulse effects have arisen in control theory, medicine, biotechnology, economics, population growth, etc. Some work on these systems was presented [1,2,3,4,5]. In recent years, there has been increasing attention on the initial value problem of IDDEs. The corresponding theory of the exact solutions of IDDEs has been studied from different angles (see [6,7,8,9,10,11,12]): oscillation, stability, asymptotic stability and exponential stability in some specific classes of IDDEs.
Collocation methods as numerical methods have a wide range of applications in the treatment of integral–algebraic equations [13,14,15,16], Volterra integral equations [17,18,19] and delay differential equations [20,21,22]. Specifically, the convergence of the collocation methods has received a lot of attention, such as the convergence of collocation methods for weakly singular Volterra integral equations [23], the superconvergence of collocation methods for first-kind Volterra integral equations [24], the convergence of collocation methods for Volterra integral equations [25], the convergence of multistep collocation methods for integral–algebraic equations [16], etc. But to the best of our knowledge, there are no articles referring to the convergence of the collocation method for IDDEs.
In this paper, we consider the following impulsive delay differential equation with collocation methods:
y t = p t y t + q t y t τ , t k τ , k = 1 , 2 , , t I , y = B k y , t = k τ , k = 1 , 2 , , y t = ϕ t , t τ , 0 ,
where I : = 0 , T , y = y t + y t , y t + is the right limit of y t , p : I R , q : I R are two given functions and sufficiently smooth, τ > 0 is a positive constant, ϕ is a continuous function on τ , 0 and y t denotes the left-hand derivative of y t .
The rest of the present paper is organized as follows: Firstly, the existence and uniqueness of collocation methods are presented in Section 2. In Section 3, the global convergence of collocation methods is analytically derived. Following that, Section 4 gives the global and local superconvergence of properties. Finally, two numerical experiments are given in Section 5.
Definition 1
(Jurang Yan [8]). The function y : I R is said to be a solution of system (1) when the following conditions are satisfied:
  • y t = ϕ t , t τ , 0 ;
  • for t I , t k τ , the function y t is differentiable and y t = p t y t + q t y t τ ;
  • the function y t is left-continuous in I, and if t I and t = k τ , then y t + = 1 + B k y t , y t = y t ;
  • B k , 1 1 , + are constants, k = 1 , 2 , .

2. Collocation Methods

For ease of notation, we assume that T = N τ , N is a positive integer. All k τ , k = 1 , 2 , , N , are chosen as numerical nodes to ensure the convergence of collocation methods. Define a positive integer p 1 and the stepsize h = τ p corresponding to the given intervals t n , t n + 1 . t n = n h are fixed time. The global mesh I h on I is defined by
I h : = t n : 0 = t 0 < t 1 < < t N p = T .
Firstly, we will choose the collocation points as follows:
X h : = t n , i = t n + c i h : 0 < c 1 < < c m 1 ,
where c i indicates a series of collocation parameters. Define σ n : = t n , t n + 1 . The exact solution can be approximated by a collocation solution in the piecewise polynomial space
S m 0 ˜ I h : = v : v σ n π m , v = 0 , i f t k τ , t I v = B k v , t = k τ ,
where π m denotes the space of all real polynomials of degree not exceeding m (see [17,21]), and v = v t + v t . The collocation solution u h is the element of the piecewise polynomial space that satisfies the following equation:
u h t = p t u h t + q t u h t τ , t k τ , t X h , u h t k p = B k u h t k p , k = 1 , 2 , , u h t = ϕ t , t τ , 0 ,
where u h t and u h t are left-continuous.
Setting Y n , j : = u h t n + c j h , we have
u h t n + v h = j = 1 m L j v Y n , j ,
where L j v denotes the following Lagrange fundamental corresponding to the collocation parameters c i (see [17,21]):
L j v = Π m i = 1 , i j v c i c j c i .
Integrating (3), we can obtain
u h t n + v h = u h t n + + h j = 1 m β j v Y n , j , v 0 , 1 ,
where
β j v = 0 v L j s d s .
According to the definition of S m 0 ˜ I h , we have
u h t n + = u h t n , t n k τ , k = 1 , 2 , , 1 + B k u h t n , t n = k τ .
By (2) and (4), we obtain
Y n , i = p t n , i u h t n , i + q t n , i u h t n , i τ = p t n , i u h t n + + h j = 1 m β j ( v ) Y n , j + q t n , i u h t n p + + h j = 1 m β j ( v ) Y n p , j ,
where a i j : = β j c i . Let
P ˜ n : = diag p t n , i , A = a i j L R m , P n : = P ˜ n A ,
Q ˜ n : = diag q t n , i , A = a i j L R m , Q n : = Q ˜ n A ,
β v : = β 1 v , β 2 v , , β m v T , Y n : = Y n , 1 , Y n , 2 , , Y n , m T , e : = 1 , , 1 m T .
Then
I m × m h P n Y n = P ˜ n u h t n + + Q ˜ n u h t n p + e + h Q n Y n p .
When the solution Y n has been found by (6), the collocation solution on the interval t n , t n + 1 is determined by
u h t n + v h = u h t n + + h β T ( v ) Y n , v ( 0 , 1 ] .
According to [17], the following theorem is given without proof.
Theorem 1.
There exists an h ¯ > 0 such that for the mesh diameter h belonging to the interval 0 , h ¯ , (7) has unique solutions Y n R m . Then, the collocation solution u h S m 0 ˜ I h for impulsive delay differential Equation (1) is unique and is given by (8) on the subinterval t n , t n + 1 .

3. Global Convergence

In the following section, the global convergence of the collocation solution for IDDEs will be analyzed.
Theorem 2.
If p , q C m I and the collocation solution u h for (1) is defined by (2), then there exists two constants C 0 and C 1 which are independent of h, satisfying
y u h : = max t I y t u h t C 0 y m + 1 h m ,
y u h : = sup t I y ( t ) u h ( t ) C 1 y ( m + 1 ) h m ,
for h 0 , h ¯ and any collocation parameters with 0 < c 1 < < c m 1 .
Proof. 
Assume that p , q C m I implies y C m + 1 σ n and y C m σ n . The collocation error e h t : = y t u h t satisfies the equation
e h ( t ) = p ( t ) e h ( t ) + q ( t ) e h ( t τ ) , t k τ , t X h ,
with e h t = 0 , t 0 . By Peano’s theorem [17], we can obtain that
y t n + v h = j = 1 m L j ( v ) Z n , j + h m R m + 1 , n ( 1 ) ( v ) , v ( 0 , 1 ] ,
where
R m + 1 , n 1 v : = 0 1 K m v , z y m + 1 t n + z h d z , K m v , z : = 1 m 1 ! v z + m 1 k = 1 m L k v c k z + m 1 , v 0 , 1 ,
and Z n , j : = y t n , j . Integrating (12), we have
y t n + v h = y t n + + h j = 1 m β j v Z n , j + h m + 1 R m + 1 , n v , v 0 , 1 ,
where
R m + 1 , n v : = 0 v R m + 1 , n 1 v d v ,
and
y t n + = y t n , t n k τ , k = 1 , 2 , , 1 + B k y t n , t n = k τ .
Let ε n , j : = Z n , j Y n , j . Comparing (4) and (13), we obtain
e h t n + v h = e h t n + + h j = 1 m β j v ε n , j + h m + 1 R m + 1 , n v , v 0 , 1 ,
where
e h t n + = e h t n , t n k τ , k = 1 , 2 , , 1 + B k e h t n , t n = k τ .
Due to (3) and (12), we can obtain that
e h t n + v h = j = 1 m L j v ε n , j + h m R 1 m + 1 , n v , v 0 , 1 .
By the definition of ε n , j and (14), we obtain
ε n , i = y t n , i u h t n , i = p t n , i e h t n + v h + q t n , i e h t n + v h τ = p t n , i e h t n + v h + q t n , i e h t n p + v h = p t n , i e h t n + + h j = 1 m a i j ε n , j + h m + 1 R m + 1 , n c i + q t n , i e h t n p + + h j = 1 m a i j ε n p , j + h m + 1 R m + 1 , n p c i ,
i.e.,
I m × m h P n ε n = P ˜ n e h t n + + Q ˜ n e h t n p + e + h m + 1 P ˜ n R m + 1 , n + h Q n ε n p + h m + 1 Q ˜ n R m + 1 , n p ,
where R m + 1 , n : = R m + 1 , n c 1 , , R m + 1 , n c m T and ε n : = ε n , 1 , ε n , 2 , , ε n , m T . For ease of notation, we assume n = p k + l l = 1 , 2 , , p , then t n = t p k + l k τ , k + 1 τ . By (14) and (15),
e h t n + = e h t p k + l + = W k + 1 e h t p k + l = W k + 1 e h t p k + l 1 + h = W k + 1 e h t p k + l 1 + h j = 1 m b j ε p k + l 1 , j + h m + 1 R m + 1 , p k + l 1 ( 1 ) = = W k + 1 e h t p k + + i = p k n 1 h j = 1 m b j ε i , j + i = p k n 1 h m + 1 R m + 1 , i ( 1 ) = W k + 1 1 + B k e h t p k + i = p k n 1 h j = 1 m b j ε i , j + i = p k n 1 h m + 1 R m + 1 , i ( 1 ) = = W k + 1 d = 1 k 1 + B d i = 0 p 1 h j = 1 m b j ε i , j + i = 0 p 1 h m + 1 R m + 1 , i ( 1 ) + W k + 1 d = 2 k 1 + B d i = p 2 p 1 h j = 1 m b j ε i , j + i = p 2 p 1 h m + 1 R m + 1 , i ( 1 ) + + W k + 1 1 + B k i = ( k 1 ) p k p 1 h j = 1 m b j ε i , j + i = ( k 1 ) p k p 1 h m + 1 R m + 1 , i ( 1 ) + W k + 1 i = k p p k + l 1 h j = 1 m b j ε i , j + i = k p p k + l 1 h m + 1 R m + 1 , i ( 1 ) ,
where b j : = β j 1 , e h 0 + = 0 , and
W k : = 1 + B k , i f l = p , 1 , l p .
Hence,
e h t n p + = e h t p ( k 1 ) + l + = W k e h t p ( k 1 ) + l = W k e h t p ( k 1 ) + l 1 + h = = W k d = 1 k 1 1 + B d i = 0 p 1 h j = 1 m b j ε i , j + i = 0 p 1 h m + 1 R m + 1 , i ( 1 ) + W k d = 2 k 1 1 + B d i = p 2 p 1 h j = 1 m b j ε i , j + i = p 2 p 1 h m + 1 R m + 1 , i ( 1 ) + + W k 1 + B k 1 i = ( k 2 ) p k p p 1 h j = 1 m b j ε i , j + i = ( k 2 ) p k p p 1 h m + 1 R m + 1 , i ( 1 ) + W k i = k p p p k p + l 1 h j = 1 m b j ε i , j + i = k p p p k p + l 1 h m + 1 R m + 1 , i ( 1 ) ,
where b : = b 1 , b 2 , , b m T . In view of Theorem 1, we can easily obtain that the matrices I m h P n h Q n have bounded inverses whenever h 0 , h ¯ , and there exists a constant D 0 < such that
I m h P n h Q n 1 1 D 0 , n = 0 , 1 , 2 , .
By (18),
ε n 1 D 0 h m + 1 P ˜ n R m + 1 , n + h m + 1 Q ˜ n R m + 1 , n p + P ˜ n e W k + 1 d = 1 k 1 + B d i = 0 p 1 h j = 1 m b j ε i , j + i = 0 p 1 h m + 1 R m + 1 , i ( 1 ) + P ˜ n e W k + 1 d = 2 k 1 + B d i = p 2 p 1 h j = 1 m b j ε i , j + i = p 2 p 1 h m + 1 R m + 1 , i ( 1 ) + + P ˜ n e W k + 1 1 + B k i = ( k 1 ) p k p 1 h j = 1 m b j ε i , j + i = ( k 1 ) p k p 1 h m + 1 R m + 1 , i ( 1 ) + P ˜ n e W k + 1 i = k p p k + l 1 h j = 1 m b j ε i , j + i = k p p k + l 1 h m + 1 R m + 1 , i ( 1 ) + Q ˜ n e W k d = 1 k 1 1 + B d i = 0 p 1 h j = 1 m b j ε i , j + i = 0 p 1 h m + 1 R m + 1 , i ( 1 ) + Q ˜ n e W k d = 2 k 1 1 + B d i = p 2 p 1 h j = 1 m b j ε i , j + i = p 2 p 1 h m + 1 R m + 1 , i ( 1 ) + + Q ˜ n e W k 1 + B k 1 i = ( k 2 ) p k p p 1 h j = 1 m b j ε i , j + i = ( k 2 ) p k p p 1 h m + 1 R m + 1 , i ( 1 ) + Q ˜ n e W k i = k p p p k p + l 1 h j = 1 m b j ε i , j + i = k p p p k p + l 1 h m + 1 R m + 1 , i ( 1 ) 1 .
Because B i i = 1 , 2 , , k is finite, there exists a constant R R > 1 , satisfying d = 1 k 1 + B d R d = 1 , 2 , , k . Let
P 0 : = p t , Q 0 : = q t , M m + 1 : = y m + 1 ,
K m : = max v 0 , 1 0 v K m v , z d z , b ¯ : = max j b j .
Consequently, we have
ε n 1 D 0 W k + 1 R P ˜ n e 1 i = 0 n 1 h b T ε i + i = 0 n 1 h m + 1 R m + 1 , i ( 1 ) + D 0 h m + 1 P ˜ n R m + 1 , n 1 + D 0 W k R Q ˜ n e i = 0 n p 1 h b T ε i + i = 0 n p 1 h m + 1 R m + 1 , i ( 1 ) + D 0 h m + 1 Q ˜ n R m + 1 , n p 1 D 0 W k + 1 R P ˜ n e 1 i = 0 n 1 h b T ε i + i = 0 n 1 h m + 1 R m + 1 , i ( 1 ) + D 0 h m + 1 P ˜ n R m + 1 , n 1 + D 0 W k R Q ˜ n e 1 i = 0 n 1 h b T ε i + i = 0 n 1 h m + 1 R m + 1 , i ( 1 ) + D 0 h m + 1 Q ˜ n R m + 1 , n p 1 D 0 max W k , W k + 1 m P 0 + Q 0 R b ¯ i = 0 n 1 h ε i 1 + D 0 max W k , W k + 1 m P 0 + Q 0 R i = 0 n 1 h K m M m + 1 h m + D 0 m P 0 + Q 0 m K m M m + 1 h m + 1 D 0 m P 0 + Q 0 R 2 b ¯ i = 0 n 1 h ε i 1 + D 0 m P 0 + Q 0 R 2 T K m + D 0 m P 0 + Q 0 m K m T M m + 1 h m = : γ 0 i = 0 n 1 h ε i 1 + γ 1 M m + 1 h m ,
with obvious meaning of γ 0 , γ 1 . Due to the discrete Gronwall inequality [17], we obtain
ε n 1 γ 1 M m + 1 h m exp γ 0 T = : B M m + 1 h m , n = 0 , 1 , ,
and
e h t n + R W k + 1 b ¯ i = 0 n 1 h ε i 1 + R W k + 1 h m i = 0 n 1 h K m M m + 1 .
By (14) and (16),
e h t n + v h e h t n + + h β ¯ ε n 1 + h m + 1 K m M m + 1 R W k + 1 b ¯ i = 0 n 1 h ε i 1 + R W k + 1 i = 0 n 1 h K m M m + 1 h m + h β ¯ ε n 1 + h m + 1 K m M m + 1 R W k + 1 i = 0 n 1 h b ¯ B + R W k + 1 i = 0 n 1 h K m + h β ¯ B + h K m M m + 1 h m R 2 T b ¯ B + R 2 T K m + T β ¯ B + T K m M m + 1 h m = : C 0 M m + 1 h m ,
and
e h t n + v h Λ B M m + 1 h m + h m K m M m + 1 = Λ B + K m M m + 1 h m = : C 1 M m + 1 h m ,
where
β ¯ : = max j β j , Λ : = max j L j .
The proof of Theorem 2 is complete. □

4. Global Superconvergence and Local Superconvergence

In this part, the global superconvergence of the collocation solution is discussed first and the local superconvergence is analyzed later.
Theorem 3.
Let the given function in (1) satisfy p , q C d I , ϕ C d + 1 τ , 0 , d m + 1 . Assume that the m collocation parameters c i are subject to the orthogonality condition
J 0 : = 0 1 i = 1 m s c i d s = 0 .
Then, the corresponding collocation solution u h on I satisfies the following conditions:
y u h C 2 h m + 1 ,
y u h C 3 h m ,
where h 0 , h ¯ , C 2 and C 3 are two constants which are independent of h.
Proof. 
The (24) can be obtained with (21). The following discussion is for (23). We define the defect δ h t by
δ h ( t ) : = u h ( t ) + p ( t ) u h ( t ) + q ( t ) u h ( t τ ) , t I .
By (1), we can easily obtain the following form:
δ h ( t ) : = e h ( t ) p ( t ) e h ( t ) q ( t ) e h ( t τ ) , t I ,
and δ h t = 0 for all t X h . Due to Theorem 2, we can obtain that
δ h C 1 M m + 1 h m + P 0 C 0 M m + 1 h m + Q 0 C 0 M m + 1 h m = : D 1 M m + 1 h m ,
for any c i in c i : i = 1 , 2 , , m , 0 < c i 1 .
Here, e h t can be treated as the solution of the following equation:
e h ( t ) = p ( t ) e h ( t ) + q ( t ) e h ( t τ ) + δ h ( t ) , t k τ , t I , e h t + = 1 + B k e h ( t ) , t = k τ , e h ( t ) = 0 , t [ τ , 0 ] .
Let r t , s denote the resolvent of (1)
r t , s : = exp s t p v d v , r C m + 1 D ,
where D : = t , s : 0 s t T . So, for t 0 , τ , we have
e h t = 0 t r t , s q s e h s τ + δ h s d s ,
for t τ , 2 τ , we obtain
e h t = 1 + B 1 r t , τ 0 τ r τ , s q s e h s τ + δ h s d s + τ t r t , s q s e h s τ + δ h s d s ,
for t 2 τ , 3 τ , we can obtain that
e h t = 1 + B 2 r t , 2 τ 1 + B 1 r 2 τ , τ 0 τ r τ , s q s e h s τ + δ h s d s + τ 2 τ r t , s q s e h s τ + δ h s d s + 2 τ t r t , s q s e h s τ + δ h s d s ,
for t k τ , k + 1 τ , e h t can be expressed by
e h t = r t , k τ d = 1 k 1 + B d μ = 2 k r μ τ , μ 1 τ 0 τ r τ , s q s e h s τ + δ h s d s + r t , k τ d = 2 k 1 + B d μ = 3 k r μ τ , μ 1 τ τ 2 τ r 2 τ , s q s e h s τ + δ h s d s + + r t , k τ 1 + B k k 1 τ k τ r k τ , s q s e h s τ + δ h s d s + k τ t r t , s q s e h s τ + δ h s d s .
For ease of notation, we assume that n = p k + l , l = 1 , 2 , , p and t = t n + v h = t p k + l + v h k τ , k + 1 τ , v 0 , 1 . Obviously, there exists a constant R ˜ such that
μ = 1 k + 1 r μ τ , μ 1 τ R ˜ .
From the above analysis, we have the following inequality:
e h t R R ˜ 0 t r t , s q s e h s τ + δ h s d s ,
where 0 t r t , s q s e h s τ + δ h s d s can be expressed as
0 t r t , s q s e h s τ + δ h s d s = i = 0 n 1 h 0 1 r t , t i + s h q t i + s h e h t i + s h τ + δ h t i + s h d s + h 0 v r t , t n + s h q t n + s h e h t n + s h τ + δ h t n + s h d s = : i = 0 n 1 h 0 1 ϕ n t i + s h d s + h 0 v ϕ n t n + s h d s .
Now, using an interpolatory m-point quadrature formula with collocation parameters c i to approximate 0 1 ϕ n t i + s h d s , we have
0 1 ϕ n t i + s h d s = j = 1 m b j ϕ n t i + c j h + E n i v = E n i v ,
where v 0 , 1 l < n and E n i indicates quadrature errors. So, we have
0 t r t , s q s e h s τ + δ h s d s = i = 0 n 1 h E n i v + h 0 v ϕ n t n + s h d s .
By the orthogonality condition (22) and the Peano theorem, it is obvious that quadrature errors satisfy
E n i v Q i h m + 1 , v 0 , 1 , i n 1 ,
where Q i are constants. According to (29), (31) and (32), we can obtain
e h ( t ) R R ˜ i = 0 n 1 h E n i ( v ) + R R ˜ h 0 v ϕ n t n + s h d s R R ˜ i = 0 n 1 h E n i ( v ) + R R ˜ h 0 v r t , t n + s h δ h t n + s h d s + R R ˜ h 0 v r t , t n + s h q t n + s h e h t n + s h τ d s R R ˜ i = 0 n 1 h Q i h m + 1 + R R ˜ h r 0 δ h + R R ˜ h r 0 r ˜ 0 C 0 M m + 1 h m ,
where r 0 = max t I 0 t r t , s d s , r ˜ 0 = max t I q t . By (27), we have
e h ( t ) R R ˜ Q i = 0 n 1 h h m + 1 + R R ˜ r 0 D 1 M m + 1 h m + 1 + R R ˜ h r 0 r ˜ 0 C 0 M m + 1 h m R R ˜ Q T + R R ˜ r 0 D 1 M m + 1 + R R ˜ r 0 r ˜ 0 C 0 M m + 1 h m + 1 = : C 2 h m + 1 .
Here, Q : = max Q i : 0 i n 1 . The estimation (24) follows from (26). The proof is completed. □
Theorem 4.
Assume that the solution of (1) lies in C m + k I 1 k m and the m distinct collocation parameters c i are selected such that the general orthogonality condition (33) holds, with J k 0 ,
J v : = 0 1 s v i = 1 m s c i d s = 0 , v = 0 , 1 , . . , k 1 .
Then, for all meshes I h : = t 0 , t 1 , with h 0 , h ¯ , the collocation solution u h with the above collocation parameters c i satisfies
max y t u h t : t I h C 4 h m + k ,
where C 4 is a constant and independent of h.
Proof. 
When v = 0 , (31) is changed into
0 t r t , s q s e h s τ + δ h s d s = i = 0 n 1 h E n i 0 .
Due to the general orthogonality condition (33) and the Peano theorem for quadrature, we can obtain
E n i 0 Q i h m + k , i n 1 .
Then, on meshes I h , by (31), we have
e h t R R ˜ 0 t r t , s q s e h s τ + δ h s d s = R R ˜ i = 0 n 1 h E n i 0 R R ˜ i = 0 n 1 h Q i h m + k R R ˜ Q i = 0 n 1 h h m + k R R ˜ Q T h m + k : = C 4 h m + k .
The proof is completed. □

5. Numerical Experiments

In the last section, two examples are given to illustrate the conclusions. Consider two IDDEs as follows:
y ( t ) = 2 y ( t ) + y ( t 1 ) , t k , t I , y = 0.2 ( 1 ) k y , t = k , y ( t ) = 1 , t [ 1 , 0 ] ,
y ( t ) = 2 t y ( t ) + t y ( t 1 ) , t k , t I , y = 0.2 y , t = k , y ( t ) = 1 , t [ 1 , 0 ] .
In Figure 1, the image of the 2-Lobatto IIIA collocation solution with p = 2 for (38) is drawn. In Figure 2, we use the same method to draw the image for (39).
Table 1 and Table 2 illustrate the ratios of the absolute errors between p = 8 and p = 16 at non-impulsive nodes and impulsive nodes using four different collocation methods for (38). Table 3 and Table 4 illustrate the ratios of the absolute errors between p = 8 and p = 16 at non-impulsive nodes and impulsive nodes using four different collocation methods for (39). We can obtain that the convergence orders of the 2-Lobatto IIIA, 2-Radau IIA, 2-Gauss methods and 3-Gauss methods are 2 , 3 , 4 and 6, respectively. The ratios indicate that our numerical process can preserve the convergence order of collocation methods for IDDEs.

Author Contributions

Conceptualization, Z.W.; Methodology, Z.W. Software, Z.W.; Validation, Z.W.; Formal analysis, Z.W.; Resources, G.Z.; Data curation, Z.W.; Writing—original draft, Z.W.; Writing—review&editing, Z.W. and G.Z.; Visualization, Z.W.; Supervision, G.Z.; Project administration, G.Z. and Y.S. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Two-stage Lobatto IIIA for (38).
Figure 1. Two-stage Lobatto IIIA for (38).
Axioms 12 00700 g001
Figure 2. Two-stage Lobatto IIIA for (39).
Figure 2. Two-stage Lobatto IIIA for (39).
Axioms 12 00700 g002
Table 1. The absolute error of 2-Lobatto IIIA and 2-Gauss methods for (38).
Table 1. The absolute error of 2-Lobatto IIIA and 2-Gauss methods for (38).
p2-Lobatto IIIA2-Gauss
t = 0.5t = 1t = 0.5t = 1
21.7240 × 10−21.2168 × 10−22.7472 × 10−42.0228 × 10−4
43.9397 × 10−32.8676 × 10−31.4879 × 10−51.0948 × 10−5
89.3972 × 10−47.0782 × 10−41.0017 × 10−67.3700 × 10−7
162.3991 × 10−41.7640 × 10−46.2500 × 10−84.6000 × 10−8
Ratio3.91704.012516.027216.0217
Table 2. The absolute error of 2-Radau IIA and 3-Gauss methods for (38).
Table 2. The absolute error of 2-Radau IIA and 3-Gauss methods for (38).
p2-Radau IIA3-Gauss
t = 0.5t = 1t = 0.5t = 1
22.1397 × 10−31.5676 × 10−31.8968 × 10−61.3955 × 10−6
42.3972 × 10−41.6764 × 10−42.8791 × 10−82.1183 × 10−8
83.7523 × 10−52.7605 × 10−54.4659 × 10−103.2858 × 10−10
164.8319 × 10−63.5550 × 10−66.9650 × 10−125.1240 × 10−12
Ratio7.76577.765164.119564.1261
Table 3. The absolute error of 2-Lobatto IIIA and 2-Gauss methods for (39).
Table 3. The absolute error of 2-Lobatto IIIA and 2-Gauss methods for (39).
p2-Lobatto IIIA2-Gauss
t = 0.5t = 1t = 0.5t = 1
21.0600 × 10−21.6060 × 10−21.6962 × 10−42.6848 × 10−4
42.7996 × 10−33.8603 × 10−31.0462 × 10−51.5195 × 10−5
86.9520 × 10−49.6125 × 10−46.5040 × 10−79.2360 × 10−7
161.7417 × 10−42.3971 × 10−44.0600 × 10−85.7300 × 10−8
Ratio3.99154.010116.019716.1187
Table 4. The absolute error of 2-Radau IIA and 3-Gauss methods for (39).
Table 4. The absolute error of 2-Radau IIA and 3-Gauss methods for (39).
p2-Radau IIA3-Gauss
t = 0.5t = 1t = 0.5t = 1
21.4042 × 10−31.5269 × 10−33.1785 × 10−74.0601 × 10−6
41.9795 × 10−42.1244 × 10−48.6487 × 10−86.6899 × 10−8
82.5980 × 10−52.8380 × 10−51.4918 × 10−101.0551 × 10−9
163.3200 × 10−63.6800 × 10−62.3850 × 10−121.6521 × 10−11
Ratio7.82537.712062.548963.8865
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Wang, Z.; Zhang, G.; Sun, Y. Convergence of Collocation Methods for One Class of Impulsive Delay Differential Equations. Axioms 2023, 12, 700. https://doi.org/10.3390/axioms12070700

AMA Style

Wang Z, Zhang G, Sun Y. Convergence of Collocation Methods for One Class of Impulsive Delay Differential Equations. Axioms. 2023; 12(7):700. https://doi.org/10.3390/axioms12070700

Chicago/Turabian Style

Wang, Zhiwei, Guilai Zhang, and Yang Sun. 2023. "Convergence of Collocation Methods for One Class of Impulsive Delay Differential Equations" Axioms 12, no. 7: 700. https://doi.org/10.3390/axioms12070700

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