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Beyond mean-field approximations for accurate and computationally efficient models of on-lattice chemical kinetics

机译:除了晶格化学动力学的准确和计算高效模型的平均场近似之外

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Modeling the kinetics of surface catalyzed reactions is essential for the design of reactors and chemical processes. The majority of microkinetic models employ mean-field approximations, which lead to an approximate description of catalytic kinetics by assuming spatially uncorrelated adsorbates. On the other hand, kinetic Monte Carlo (KMC) methods provide a discrete-space continuous-time stochastic formulation that enables an accurate treatment of spatial correlations in the adlayer, but at a significant computation cost. In this work, we use the so-called cluster mean-field approach to develop higher order approximations that systematically increase the accuracy of kinetic models by treating spatial correlations at a progressively higher level of detail. We further demonstrate our approach on a reduced model for NO oxidation incorporating first nearest-neighbor lateral interactions and construct a sequence of approximations of increasingly higher accuracy, which we compare with KMC and mean-field. The latter is found to perform rather poorly, overestimating the turnover frequency by several orders of magnitude for this system. On the other hand, our approximations, while more computationally intense than the traditional mean-field treatment, still achieve tremendous computational savings compared to KMC simulations, thereby opening the way for employing them in multiscale modeling frameworks. (C) 2017 Author(s).
机译:建模表面催化反应的动力学对于反应器和化学过程的设计是必不可少的。大多数微因模型采用平均场近似,这通过假设空间不胶合的吸附物来导致催化动力学的近似描述。另一方面,动力学蒙特卡罗(KMC)方法提供了一种离散空间连续时间随机配方,其能够精确地处理adlayer中的空间相关性,但是以显着的计算成本。在这项工作中,我们使用所谓的集群均值现场方法来开发更高阶近似,通过在逐步更高的细节水平处理空间相关性来系统地提高动力学模型的准确性。我们进一步展示了我们对没有氧化模型的方法,包括第一邻居横向相互作用,并构建一种越来越高的准确度的近似序列,我们与KMC和平均字段相比。后者被发现表现相当差,以这种系统的几个级别高估了营业额频率。另一方面,我们的近似虽然比传统的平均场地处理更加强烈,但与KMC仿真相比,仍然实现了巨大的计算节省,从而开启了在多尺度建模框架中使用它们的方式。 (c)2017年作者。

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