Next Article in Journal
A New Parameter Choice Strategy for Lavrentiev Regularization Method for Nonlinear Ill-Posed Equations
Next Article in Special Issue
Selectivity Estimation of Inequality Joins in Databases
Previous Article in Journal
Efficient Estimation and Inference in the Proportional Odds Model for Survival Data
Previous Article in Special Issue
On One- and Two-Dimensional α–Stancu–Schurer–Kantorovich Operators and Their Approximation Properties
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

The Improved Stability Analysis of Numerical Method for Stochastic Delay Differential Equations

1
School of Economics, Harbin University of Commerce, Harbin 150028, China
2
School of Management, Harbin Institute of Technology, Harbin 150001, China
*
Author to whom correspondence should be addressed.
Mathematics 2022, 10(18), 3366; https://doi.org/10.3390/math10183366
Submission received: 19 July 2022 / Revised: 21 August 2022 / Accepted: 29 August 2022 / Published: 16 September 2022
(This article belongs to the Special Issue Numerical Methods for Approximation of Functions and Data)

Abstract

:
In this paper, the improved split-step θ method, named the split-step composite θ method, is proposed to study the mean-square stability for stochastic differential equations with a fixed time delay. Under the global Lipschitz and linear growth conditions, it is proved that the split-step composite θ method with θ 0.5 shows mean-square stability. An approach to improving numerical stability is illustrated by choices of parameters of this method. Some numerical examples are presented to show the accordance between the theoretical and numerical results.

1. Introduction

Stochastic delay differential equations have been widely applied in many applications such as signal processing, biological systems, and financial engineering [1,2,3]. As one of central problems in numerical analysis of stochastic systems, the stability theory has attracted a great deal of attention [4,5]. Due to the characteristics of stochastic delay differential equations themselves, it is not easy to obtain an analytical solution of equations; therefore, numerical solution analysis has certain theoretical value and practical significance.
Stability analysis of numerical methods for stochastic delay differential equations has made some achievements [6,7]. The split-step θ method, as an important numerical method, has been applied to various stochastic systems. Rathinasamy [8] investigated mean-square stability of the split-step θ method for stochastic delay Hopfield neural networks under suitable conditions. Cao et al. [9] studied the exponential mean-square stability of the split-step θ method for stochastic differential equations with a fixed time delay. Huang [10] proved that the split-step θ method with θ 0.5 still unconditionally preserves the exponential mean-square stability of the underlying systems under a coupled condition on the drift and diffusion coefficients. Rathinasamy and Balachandran [11] analyzed the T-stability of the split-step θ method for linear stochastic delay integro-differential equations. The mean-square stability of the split-step composite θ method for stochastic differential equation has been introduced by Guo et al. [12].
In the paper, we construct the split-step composite θ method for stochastic delay differential equations and improve stability by changing the values of parameters θ and λ . It is proved that the mean-square stability of the split-step composite θ method is superior to that of the split-step θ method. In Section 2, we introduce the split-step composite θ method. The stability of this method for linear stochastic delay differential equations is analyzed in Section 3. In Section 4, corresponding numerical examples further illustrate the obtained theoretical results. The conclusions will be expressed in the last section.

2. Preliminaries and the Split-Step Composite θ Method

Throughout this paper, unless otherwise specified, let ( Ω , F , P ) be a complete probability space with a filtration ( F t ) t 0 , which increases and is right-continuous, and F 0 contains all P-null sets. Ω and P are the sample space and probability, respectively. Let | · | be the Euclidean norm. The Wiener process W ( t ) is defined on ( Ω , F , P ) [13].
Consider the following stochastic delay differential equation [13]
d x ( t ) = f ( t , x ( t ) , x ( t τ ) ) d t + g ( t , x ( t ) , x ( t τ ) ) d W ( t ) x ( t ) = φ ( t )
where t [ τ , 0 ] , τ > 0 is a constant. Let the C ( [ τ , 0 ] ; R ) -valued initial segment φ ( t ) be an F 0 -measurable one-dimensional random variable such that E | | φ | | 2 < , where | | φ | | = sup τ t 0 | φ ( t ) | . W ( t ) is one-dimensional Wiener process.
We impose some assumptions for Equation (1).
Assumption 1.
f : [ 0 , T ] × R × R R and g : [ 0 , T ] × R × R R satisfy the global Lipschitz condition and the linear growth condition.
(1). Global Lipschitz condition: there is positive constant K, such that for all x 1 , x 2 , y 1 , y 2 R , and t [ 0 , T ]
max { | f ( t , x 1 , y 1 ) f ( t , x 2 , y 2 ) | 2 , | g ( t , x 1 , y 1 ) g ( t , x 2 , y 2 ) | 2 } K ( | x 1 x 2 | 2 + | y 1 y 2 | 2 ) ;
(2). Linear growth condition: there is positive constant L > 0 , such that
max { | f ( t , x , y ) | 2 , | g ( t , x , y ) | 2 } L ( 1 + | x | 2 + | y | 2 )
holds for every x 1 , y 1 R and t [ 0 , T ] .
The split-step composite θ method is an improved numerical method, parameter λ is introduced on the basis of the split-step θ method. Now, we present the split-step composite θ method [12]
x n = x n + ( θ f ( t n , x n , x n m ) + ( 1 θ ) f ( t n , x n , x n m ) ) h x n + 1 = x n + ( λ g ( t n , x n , x n m ) + ( 1 λ ) g ( t n , x n , x n m ) ) Δ W n
where parameters θ and λ [ 0 , 1 ] , x n is an approximation to analytical solution x ( t n ) , h = T N is the given step-size with τ = m h for a positive integer m, N is a given positive integer, t n = n h , Δ W n = W ( t n + 1 ) W ( t n ) are independent N ( 0 , h ) distributed stochastic variables, x p = x p = φ ( p h ) , and m p 0 . When the parameter λ = 1 , it is the split-step θ method [14,15]. When the parameters θ = 1 and λ = 1 , it is the split-step back-Euler method [16,17]. When the parameters θ = 0 and λ = 1 , it is the split-step forward-Euler method [18]. The split-step θ method, split-step back-Euler method, and split-step forward-Euler method are different numerical methods. The split-step θ method achieves stability by changing the value of θ , while the other two methods are ysed to adjust the stability by changing the step size or equation coefficients [19,20].
Definition 1
([13]). If there is a constant ρ > 0 and φ < ρ , such that
lim t E | x ( t ) | p = 0
then the solution of Equation (1) is said to be pth-moment exponentially stable, E is expectation. When p = 2 , it is said to show mean-square stability.

3. Stability of the Split-Step Composite θ Method

In this section, we will discuss the stability of the split-step composite θ method for linear stochastic delay differential equations
d x ( t ) = a x ( t ) d t + ( b x ( t ) + c x ( t τ ) ) d W ( t ) , t 0 x ( t ) = φ ( t ) , t [ τ , 0 ]
where a , b , c R .
Definition 2
([13]). The numerical method applied to Equation (1) is said to present mean-square stability if for every step size h, the numerical approximation { x n } produced by the split-step composite θ method satisfies
lim n E | X n | 2 = 0
Theorem 1.
Let a , b , c be the coefficients of Equation (4), θ and λ be parameters, and h be the step size. If a , b , c satisfy
a + 1 2 ( | b | + | c | ) 2 < 0
and the parameter θ max { 1 2 , λ 2 | a | h } , then the split-step composite θ method shows mean-square stability.
Proof. 
The split-step composite θ method is applied to Equation (4). The numerical scheme is constructed as follows:
x n = x n + [ θ a x n + ( 1 θ ) a x n ] h x n + 1 = x n + [ λ ( b x n + c x n m ) + ( 1 λ ) ( b x n + c x n m ] ) Δ W n
namely
( 1 θ a h ) x n = ( 1 + ( 1 θ ) a h ) x n ,
x n = 1 + ( 1 θ ) a h 1 θ a h x n ,
x n m = 1 + ( 1 θ ) a h 1 θ a h x n m ,
substituting (8) into the second equation of (7), we have
x n + 1 = ( 1 + λ b Δ W n ) x n + λ c Δ W n x n m + [ ( 1 λ ) ( b x n + c x n m ) ] Δ W n = [ ( 1 + λ b Δ W n ) ( 1 + ( 1 θ ) a h ) 1 θ a h + ( 1 λ ) b Δ W n ] x n + [ ( λ c Δ W n ) ( 1 + ( 1 θ ) a h ) 1 θ a h + ( 1 λ ) c Δ W n ] x n m .
Squaring both the above equation, we obtain
( 1 θ a h ) 2 x n + 1 2 = [ 1 + ( 1 θ ) a h + b Δ W n + ( λ θ ) a b h Δ W n ] 2 x n 2 +   [ c Δ W n + ( λ θ ) a c h Δ W n ] 2 x n m 2 + 2 [ 1 + ( 1 θ ) a h +   b Δ W n + ( λ θ ) a b h Δ W n ] [ c Δ W n + ( λ θ ) a c h Δ W n ] x n x n m .
Using the inequality 2 α β α 2 + β 2 and taking mathematical expectation on (9), we obtain
( 1 θ a h ) 2 E | x n + 1 | 2 [ ( 1 + ( 1 θ ) a h ) 2 + b 2 h + ( λ θ ) 2 a 2 b 2 h 3 +   2 ( λ θ ) a b 2 h 2 ] E x n 2 + [ c 2 h + ( λ θ ) 2 a 2 c 2 h 3 +   2 ( λ θ ) a c 2 h 2 ] E x n m 2 + [ | b c | h + 2 ( λ θ ) | a b c | h 2 +   ( λ θ ) 2 a 2 | b c | h 3 ] ( E x n 2 + E x n m 2 ) .
that is
( 1 θ a h ) 2 E | x n + 1 | 2 A ( a , b , c , h , θ , λ ) E x n 2 + B ( a , b , c , h , θ , λ ) E x n m 2 ,
where
A ( a , b , c , h , θ , λ ) = ( 1 + ( 1 θ ) a h ) 2 + b 2 h + ( λ θ ) 2 a 2 b 2 h 3 + 2 ( λ θ ) a b 2 h 2 +     | b c | h + 2 ( λ θ ) | a b c | h 2 + ( λ θ ) 2 a 2 | b c | h 3
B ( a , b , c , h , θ , λ ) = c 2 h + ( λ θ ) 2 a 2 c 2 h 3 + 2 ( λ θ ) a c 2 h 2 + | b c | h +   2 ( λ θ ) | a b c | h 2 + ( λ θ ) 2 a 2 | b c | h 3 ,
1 θ a h > 0 and the condition (6) holds. It is obvious that if
A ( a , b , c , h , θ , λ ) + B ( a , b , c , h , θ , λ ) < ( 1 θ a h ) 2 ,
the above inequality is equivalent to
( 1 2 θ ) a 2 h + 2 a + ( 1 + ( λ θ ) a h ) 2 ( | b | + | c | ) 2 < 0 ,
If | 1 + ( λ θ ) a h | 1 , then from condition (6) we have a < 0 and
2 a + ( 1 + ( λ θ ) a h ) 2 ( | b | + | c | ) 2 < 0 ,
Thus, when θ 0.5 , the inequality (12) holds. We obtain the relationship of h , θ , λ from | 1 + ( λ θ ) a h | 1 , that is
θ λ 2 ( | a | h ) ,
The theorem is proven. □

4. Numerical Example

Taking coefficients of Equation (4) as a = 20 , b = 4 , c = 2 . The coefficients satisfy the condition (6). We use Matlab to randomly generate 2000 discrete trajectories, that is
Y j = 1 2000 i = 1 2000 | y j i | 2
where y j i is the numerical solution of i trajectories at the time t j .
Parameter λ = 0.8 can be fixed with step-size h = 1 . Figure 1 shows that the split-step composite θ method does not show mean-square stability when θ = 0.5 , while for θ = 0.8 , the split-step composite θ method is stable. When the parameter θ is closer to 1, the split-step composite θ method is more stable.
Parameter θ = 0.5 can be fixed with step-size h = 0.25 . We change the value of parameter λ = 1 to λ = 0.8 , as shown in Figure 2. From Figure 2, the second-order moment of numerical solution blows up when λ = 1 and tends to be zero for λ = 0.8 , as observed. Appropriately adjusting the parameter value λ can improve stability.
Fix parameters θ = 0.5 when λ = 0.8 . We choose the step-size h = 0.5 , h = 0.25 , and the computer simulation result is shown in Figure 3. It is shown that the split-step composite θ method can maintain stability when h = 0.25 .

5. Conclusions

We discuss the stability of the split-step composite θ method for stochastic delay differential equations in the paper. It is proven that the split-step composite θ method with θ 0.5 shows mean-square stability. We can maintain and improve the stability of the split-step composite θ method for stochastic systems by adjusting the values of parameters θ and λ . Meanwhile, it is proven that the split-step composite θ method is superior to that of the split-step θ method.

Author Contributions

Conceptualization, Y.Z.; methodology, Y.Z.; software, Y.Z.; formal analysis, E.Z.; investigation, E.Z.; data curation, Y.Z.; writing—original draft preparation, Y.Z.; writing—review and editing, E.Z. and L.L.; visualization, L.L.; supervision, L.L. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by Youth Scholars Fund of Harbin Universities of Commerce under Grant 18XN010, Doctor’s fund of Harbin Universities of Commerce under Grant 2019DS048, and the National Social Science Fund of China under Grant 21BTJ061.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Zhao, G.H.; Song, M.H.; Yang, Z.W. Mean-square stability of analytic solution and Euler–Maruyama method for impulsive stochastic differential equations. Appl. Math. Comput. 2015, 251, 527–538. [Google Scholar] [CrossRef]
  2. Lu, C.; Ding, X.H. Persistence and extinction for a stochastic logistic model with infinite delay. Electron. J. Differ. Equ. 2013, 262, 1–16. [Google Scholar]
  3. Zhou, Q.; Wan, L. Exponential stability of stochastic delayed Hopfield neural networks. Appl. Math. Comput. 2008, 199, 84–89. [Google Scholar] [CrossRef]
  4. Baker, C.T.H.; Buckwar, E. Numerical analysis of explicit one-step methods for stochastic delay differential equations. LMS J. Comput. Math. 2000, 3, 315–335. [Google Scholar] [CrossRef]
  5. Wu, F.; Mao, X.; Szpruch, L. Almost sure exponential stability of numerical solutions for stochastic delay differential equations. Numer. Math. 2010, 115, 681–697. [Google Scholar] [CrossRef]
  6. Wang, X.; Gan, S. The improved split-step backward Euler method for stochastic differential delay equations. Int. J. Comput. Math. 2011, 88, 2359–2378. [Google Scholar] [CrossRef]
  7. Wang, Z.; Zhang, C. Mean-square stability of milstein method for solving nonlinear stochastic delay differential equations. Math. Appl. 2008, 21, 201–206. [Google Scholar]
  8. Rathinasamy, A. The split-step θ methods for stochastic delay Hopfield neural networks. Appl. Math. Model. 2012, 36, 3477–3485. [Google Scholar] [CrossRef]
  9. Cao, W.R.; Hao, P.; Zhang, Z.Q. Split-step θ method for stochastic delay differential equations. Appl. Numer. Math. 2012, 76, 19–33. [Google Scholar] [CrossRef]
  10. Huang, C.M. Mean square stability and dissipativity of two classes of theta methods for systems of stochastic delay differential equations. J. Comput. Appl. Math. 2014, 259, 77–86. [Google Scholar] [CrossRef]
  11. Rathinasamy, A.; Balachandran, K. T-stability of the split-step θ methods for linear stochastic delay integro-differential equations. Nonlinear Anal. Hybrid Syst. 2011, 5, 639–646. [Google Scholar] [CrossRef]
  12. Guo, Q.; Li, H.Q.; Zhu, Y. The improved split-step θ methods for stochastic differential equation. Math. Meth. Appl. 2014, 37, 2245–2256. [Google Scholar] [CrossRef]
  13. Mao, X.R. Stochastic Differential Equations and Their Applications; Harwood: New York, NY, USA, 1997. [Google Scholar]
  14. Ding, X.; Ma, Q.; Zhang, L. Convergence and stability of the split-step θ method for stochastic differential equations. Comput. Math. Appl. 2010, 60, 1310–1321. [Google Scholar] [CrossRef]
  15. Zhao, J.J.; Yi, Y.L.; Xu, Y. Strong convergence and stability of the split -step theta method for highly nonlinear neutral stochastic delay integro differential equation. Appl. Numer. Math. 2020, 157, 385–404. [Google Scholar] [CrossRef]
  16. Higham, D.J.; Mao, X.R.; Stuart, A.M. Strong convergence of Euler-type methods for nonlinear stochastic differential equations. SIAM J. Numer. Anal. 2002, 40, 1041–1063. [Google Scholar] [CrossRef]
  17. Yue, C.; Zhao, L.B. Strong convergence of split-step backward Euler method for stochastic delay differential equations with a nonlinear diffusion coefficient. J. Comput. Appl. Math. 2021, 382, 113068. [Google Scholar] [CrossRef]
  18. Wang, P.; Li, Y. Split-step forward methods for stochastic differential equations. J. Comput. Appl. Math. 2010, 233, 2641–2651. [Google Scholar] [CrossRef]
  19. Liu, L.N.; Mo, H.Y.; Deng, F.Q. Split-step theta method for stochastic delay integro-differential equations with mean square exponential stability. Appl. Math. Comput. 2019, 353, 320–328. [Google Scholar] [CrossRef]
  20. Liu, X.H.; Deng, F.Q.; Liu, L.N.; Luo, S.X.; Zhao, X.Y. Mean square stability of two classes of θ methods for neutral stochastic delay integro-differential equation. Appl. Math. Lett. 2020, 109, 106544. [Google Scholar] [CrossRef]
Figure 1. The split-step composite θ method with (a) θ = 0.5 ; (b) θ = 0.8 .
Figure 1. The split-step composite θ method with (a) θ = 0.5 ; (b) θ = 0.8 .
Mathematics 10 03366 g001
Figure 2. The split-step composite θ method with (a) λ = 1 ; (b) λ = 0.8 .
Figure 2. The split-step composite θ method with (a) λ = 1 ; (b) λ = 0.8 .
Mathematics 10 03366 g002
Figure 3. The split-step composite θ method with (a) h = 0.5 ; (b) h = 0.25 .
Figure 3. The split-step composite θ method with (a) h = 0.5 ; (b) h = 0.25 .
Mathematics 10 03366 g003
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Zhang, Y.; Zhang, E.; Li, L. The Improved Stability Analysis of Numerical Method for Stochastic Delay Differential Equations. Mathematics 2022, 10, 3366. https://doi.org/10.3390/math10183366

AMA Style

Zhang Y, Zhang E, Li L. The Improved Stability Analysis of Numerical Method for Stochastic Delay Differential Equations. Mathematics. 2022; 10(18):3366. https://doi.org/10.3390/math10183366

Chicago/Turabian Style

Zhang, Yu, Enying Zhang, and Longsuo Li. 2022. "The Improved Stability Analysis of Numerical Method for Stochastic Delay Differential Equations" Mathematics 10, no. 18: 3366. https://doi.org/10.3390/math10183366

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop