Convergence and stability of the compensated split-step theta method for stochastic differential equations with piecewise continuous arguments driven by Poisson random measure

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摘要

This paper deals with the numerical solutions of stochastic differential equations with piecewise continuous arguments (SDEPCAs) driven by Poisson random measure in which the coefficients are highly nonlinear. It is shown that the compensated split-step theta (CSST) method with θ∈[0,1] is strongly convergent in pth(p≥2) moment under some polynomially Lipschitz continuous conditions. It is also obtained that the convergence order is close to 1p. In terms of the stability, it is proved that the CSST method with θ∈(12,1] reproduces the exponential mean square stability of the underlying system under the monotone condition and some restrictions on the step-size. Without any restriction on the step-size, there exists θ∗∈(12,1] such that the CSST method with θ∈(θ∗,1] is exponentially stable in mean square. Moreover, if the drift and jump coefficients satisfy the linear growth condition, the CSST method with θ∈[0,12] also preserves the exponential mean square stability. Some numerical simulations are presented to verify the conclusions.

论文关键词:60H35,65C20,65L20,Stochastic differential equations with piecewise continuous arguments driven by Poisson random measure,The compensated split-step theta (CSST) method,Strongly convergent in pth moment,Exponential mean square stability

论文评审过程:Received 24 June 2017, Revised 25 February 2018, Available online 7 March 2018, Version of Record 22 March 2018.

论文官网地址:https://doi.org/10.1016/j.cam.2018.02.039