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Improved Stochastic Approximation Methods for Discretized Parabolic Partial Differential Equations

机译:用于离散化抛物线偏微分方程的改进的随机近似方法

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We present improvements of the stochastic direct simulation method, a known numerical scheme based on Markov jump processes which is used for approximating solutions of ordinary differential equations. This scheme is suited especially for spatial discretizations of evolution partial differential equations (PDEs). By exploiting the full path simulation of the stochastic method, we use this first approximation as a predictor and construct improved approximations by Picard iterations, Runge-Kutta steps, or a combination. This has as consequence an increased order of convergence. We illustrate the features of the improved method at a standard benchmark problem, a reaction-diffusion equation modeling a combustion process in one space dimension (ID) and two space dimensions (2D).
机译:我们提高了随机直接仿真方法的改进,一种基于马尔可夫跳跃过程的已知数值方案,该方法用于近似常微分方程的解。该方案特别适用于进化部分微分方程(PDE)的空间离散化。通过利用随机方法的完整路径模拟,我们将第一个近似作为预测器,并通过图卡迭代,runge-kutta步或组合构造改进的近似。这是由于增加的收敛顺序。我们示出了在标准基准问题中改进方法的特征,一种在一个空间尺寸(ID)和两个空间尺寸(2D)中建模燃烧过程的反作用 - 扩散方程。

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