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Explicit Methods for Stiff Stochastic Differential Equations

机译:刚性随机微分方程的显式方法

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摘要

Multiscale differential equations arise in the modeling of many important problems in the science and engineering. Numerical solvers for such problems have been extensively studied in the deterministic case. Here, we discuss numerical methods for (mean-square stable) stiff stochastic differential equations. Standard explicit methods, as for example the Euler-Maruyama method, face severe stepsize restriction when applied to stiff problems. Fully implicit methods are usually not appropriate for stochastic problems and semi-implicit methods (implicit in the deterministic part) involve the solution of possibly large linear systems at each time-step. In this paper, we present a recent generalization of explicit stabilized methods, known as Chebyshev methods, to stochastic problems. These methods have much better (mean-square) stability properties than standard explicit methods. We discuss the construction of this new class of methods and illustrate their performance on various problems involving stochastic ordinary and partial differential equations.
机译:在科学和工程学中许多重要问题的建模中都出现了多尺度微分方程。在确定性情况下,已经广泛研究了此类问题的数值求解器。在这里,我们讨论(均方稳定)刚性随机微分方程的数值方法。当应用于刚性问题时,标准的显式方法(例如Euler-Maruyama方法)面临严格的步长限制。完全隐式方法通常不适用于随机问题,半隐式方法(在确定性部分隐式)涉及在每个时间步上求解大型线性系统的问题。在本文中,我们介绍了最近的将稳定化方法(称为Chebyshev方法)推广到随机问题的方法。这些方法具有比标准显式方法更好的(均方)稳定性。我们讨论了这类新方法的构造,并说明了它们在涉及随机常微分方程和偏微分方程的各种问题上的性能。

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