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首页> 外文期刊>Journal of Physics. Condensed Matter >A three-dimensional self-learning kinetic Monte Carlo model: Application to Ag(111)
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A three-dimensional self-learning kinetic Monte Carlo model: Application to Ag(111)

机译:三维自学习动力学蒙特卡洛模型:在Ag(111)中的应用

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The reliability of kinetic Monte Carlo (KMC) simulations depends on accurate transition rates. The self-learning KMC method (Trushin etal 2005 Phys.Rev.B 72 115401) combines the accuracy of rates calculated from a realistic potential with the efficiency of a rate catalog, using a pattern recognition scheme. This work expands the original two-dimensional method to three dimensions. The concomitant huge increase in the number of rate calculations on the fly needed can be avoided by setting up an initial database, containing exact activation energies calculated for processes gathered from a simpler KMC model. To provide two representative examples, the model is applied to the diffusion of Ag monolayer islands on Ag(111), and the homoepitaxial growth of Ag on Ag(111) at low temperatures.
机译:动力学蒙特卡洛(KMC)仿真的可靠性取决于准确的过渡速率。自学习KMC方法(Trushin et al 2005 Phys.Rev.B 72 115401)使用模式识别方案将根据实际潜力计算出的费率准确性与费率目录的效率相结合。这项工作将原始的二维方法扩展到三个维度。可以通过建立一个初始数据库来避免伴随的即时速率计算数量的巨大增加,该数据库包含从简化的KMC模型中收集的过程所计算出的精确活化能。为了提供两个有代表性的例子,将模型应用于Ag(111)上Ag单层岛的扩散,以及低温下Ag在Ag(111)上的同质外延生长。

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