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Solving the master equation without kinetic Monte Carlo: Tensor train approximations for a CO oxidation model

机译:在没有动力学蒙特卡洛的情况下求解主方程:CO氧化模型的张量链近似

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摘要

In multiscale modeling of heterogeneous catalytic processes, one crucial point is the solution of a Markovian master equation describing the stochastic reaction kinetics. Usually, this is too high-dimensional to be solved with standard numerical techniques and one has to rely on sampling approaches based on the kinetic Monte Carlo method. In this study we break the curse of dimensionality for the direct solution of the Markovian master equation by exploiting the Tensor Train Format for this purpose. The performance of the approach is demonstrated on a first principles based, reduced model for the CO oxidation on the RuO2(110) surface. We investigate the complexity for increasing system size and for various reaction conditions. The advantage over the stochastic simulation approach is illustrated by a problem with increased stiffness. (C) 2016 Elsevier Inc. All rights reserved.
机译:在多相催化过程的多尺度建模中,一个关键点是描述随机反应动力学的马尔可夫主方程的解。通常,这太高了,无法使用标准数值技术解决,而且必须依靠基于动力学蒙特卡洛方法的采样方法。在这项研究中,我们通过利用张量火车格式为此目的,打破了维氏对直接求解马尔可夫主方程的诅咒。该方法的性能在基于第一原理的还原模型上证明了RuO2(110)表面上的CO氧化。我们研究增加系统规模和各种反应条件的复杂性。刚度增加的问题说明了优于随机仿真方法的优势。 (C)2016 Elsevier Inc.保留所有权利。

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