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Convergence and stability of split-step theta methods with variable step-size for stochastic pantograph differential equations

机译:随机受电弓微分方程的变步长分步θ方法的收敛性和稳定性

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摘要

In this paper, we are interested in numerical methods with variable stepsize for stochastic pantograph differential equations (SPDEs). SPDEs are very special stochastic delay differential equations (SDDEs) with unbounded memory. The problem of computer memory hold, when the numerical methods with constant step-size are applied to the SPDEs. In this work, we construct split-step theta (SS.) methods with variable step-size for SPDEs. The boundedness and strong convergence of the numerical methods are investigated under a local Lipschitz condition and a coupled condition on the drift and diffusion coefficients. It is proved that, the SS. methods with variable step-size for.. [12, 1] converge strongly to the exact solution. In addition, the strong order 0.5 is given under mild assumptions. The mean-square stability (MS-Stability) of the numerical methods with.. (1 2, 1] is given. Finally, some illustrative numerical examples are presented to show the efficiency of the methods, and how MS-Stability of SS. methods depends on the parameter theta for both linear and nonlinear models.
机译:在本文中,我们对随机缩放缩放微分方程(SPDE)的可变步长数值方法感兴趣。 SPDE是具有无限内存的非常特殊的随机延迟微分方程(SDDE)。当将具有恒定步长的数值方法应用于SPDE时,存在计算机内存问题。在这项工作中,我们为SPDE构造了步长可变的分步theta(SS。)方法。研究了数值方法的有界性和强收敛性,研究了局部Lipschitz条件和耦合条件下的漂移系数和扩散系数。事实证明,SS。 [。[12,1]]具有可变步长的方法很容易收敛到精确解。此外,在温和的假设下给出了0.5的强阶。给出了具有(.1,2,1)的数值方法的均方稳定性(MS-Stability),最后,给出了一些说明性的数值例子,说明了方法的有效性以及SS的MS-Stability。方法取决于线性模型和非线性模型的参数theta。

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