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Numerical solution to highly nonlinear neutral-type stochastic differential equation

机译:高度非线性中立型随机微分方程的数值解

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摘要

In the paper, our main aim is to investigate the strong convergence of the implicit numerical approximations for neutral-type stochastic differential equations with super linearly growing coefficients. After providing mean-square moment boundedness and mean-square exponential stability for the exact solution, we show that a backward Euler-Maruyama approximation converges strongly to the true solution under polynomial growth conditions for sufficiently small step size. Imposing a few additional conditions, we examine the p-th moment uniform boundedness of the exact and approximate solutions by the stopping time technique, and establish the convergence rate of one half, which is the same as the convergence rate of the classical Euler-Maruyama scheme. Finally, several numerical simulations illustrate our main results. (C) 2019 IMACS. Published by Elsevier B.V. All rights reserved.
机译:在本文中,我们的主要目的是研究具有超线性增长系数的中立型随机微分方程隐式数值逼近的强收敛性。在为精确解提供均方矩有界性和均方指数稳定性之后,我们表明在多项式增长条件下,对于足够小的步长,向后的Euler-Maruyama逼近强烈收敛于真实解。施加一些附加条件,我们用停止时间技术检查精确解和近似解的p阶矩一致有界性,并确定一半的收敛速度,这与经典的Euler-Maruyama的收敛速度相同方案。最后,一些数值模拟说明了我们的主要结果。 (C)2019年IMACS。由Elsevier B.V.发布。保留所有权利。

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