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首页> 外文期刊>International journal of computer mathematics >Split-step double balanced approximation methods for stiff stochastic differential equations
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Split-step double balanced approximation methods for stiff stochastic differential equations

机译:刚性随机微分方程的分流步骤双平衡近似方法

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摘要

In the modelling of many important problems in science and engineering we face stiff stochastic differential equations (SDEs). In this paper, a new class of split-step double balanced (SSDB) approximation methods is constructed for numerically solving systems of stiff Ito SDEs with multi-dimensional noise. In these methods, an appropriate control function has been used twice to improve the stability properties. Under global Lipschitz conditions, convergence with order one in the mean-square sense is established. Also, the mean-square stability (MS-stability) properties of the SSDB methods have been analysed for a one-dimensional linear SDE with multiplicative noise. Therefore, the MS-stability functions of SSDB methods are determined and in some special cases, their regions of MS-stability have been compared to the stability region of the original equation. Finally, simulation results confirm that the proposed methods are efficient with respect to accuracy and computational cost.
机译:在科学与工程中许多重要问题的建模中,我们面临僵硬的随机微分方程(SDES)。在本文中,为具有多维噪声的刚性ITO SDES的数值求解系统构建了一种新的分流步骤双平衡(SSDB)近似方法。在这些方法中,两次适当的控制功能以改善稳定性。在全球嘴唇奇茨条件下,建立了平均方向均线的趋同。此外,已经分析了SSDB方法的平均方稳定性(MS-稳定性)特性,用于具有乘法噪声的一维线性SDE。因此,确定了SSDB方法的MS-稳定功能,并在一些特殊情况下,与原始方程的稳定区域进行了比较了它们的MS-稳定区域。最后,仿真结果证实,所提出的方法对准确性和计算成本有效。

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