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Iterative Semi-implicit Splitting Methods for Stochastic Chemical Kinetics

机译:随机化学动力学的迭代半隐式分裂方法

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In this paper, we present splitting methods that are based on iterative schemes and applied to stochastic models for chemical kinetics. The motivation arose of solving chemical kinetics with respect to stochastic influences in their models. The parameters and variables that describe the concentrations are based on extending the deterministic models to stochastic models. Such an extension is important to simulate the uncertainties of the concentrations. For the modelling equations, we deal with stochastic differential equations and it is important to extend the deterministic methods to stochastic methods. Here, we consider iterative splitting methods, based on Picard's successive approximations, to solve the underlying stochastic differential equations. The benefit of relaxation behaviour of the iterative solvers is also obtained in the stochastic method and based on the stochastic process we obtain 1/2 of the accuracy as for the deterministic method, which is also given for non-iterative methods. We present the numerical analysis of the schemes and verified the results in numerical experiments of different chemical reaction systems.
机译:在本文中,我们介绍了基于迭代方案的分裂方法,并将其应用于化学动力学的随机模型。在他们的模型中产生了针对随机影响的化学动力学解决方案。描述浓度的参数和变量基于将确定性模型扩展到随机模型的基础。这种扩展对于模拟浓度的不确定性很重要。对于建模方程,我们处理随机微分方程,将确定性方法扩展到随机方法很重要。在这里,我们考虑基于Picard的逐次逼近的迭代拆分方法,以求解底层的随机微分方程。在随机方法中也获得了迭代求解器的松弛行为的好处,并且基于随机过程,我们获得了确定性方法的1/2精度,对于非迭代方法也是如此。我们对方案进行了数值分析,并在不同化学反应系统的数值实验中验证了结果。

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