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用于自学习动力学蒙特卡罗模拟的扩展模式识别方案。

Extended pattern recognition scheme for self-learning kinetic Monte Carlo simulations.

机构信息

Department of Physics, University of Central Florida, Orlando, FL 32816, USA.

出版信息

J Phys Condens Matter. 2012 Sep 5;24(35):354004. doi: 10.1088/0953-8984/24/35/354004. Epub 2012 Aug 16.

Abstract

We report the development of a pattern recognition scheme that takes into account both fcc and hcp adsorption sites in performing self-learning kinetic Monte Carlo (SLKMC-II) simulations on the fcc(111) surface. In this scheme, the local environment of every under-coordinated atom in an island is uniquely identified by grouping fcc sites, hcp sites and top-layer substrate atoms around it into hexagonal rings. As the simulation progresses, all possible processes, including those such as shearing, reptation and concerted gliding, which may involve fcc-fcc, hcp-hcp and fcc-hcp moves are automatically found, and their energetics calculated on the fly. In this article we present the results of applying this new pattern recognition scheme to the self-diffusion of 9-atom islands (M(9)) on M(111), where M  =  Cu, Ag or Ni.

摘要

我们开发了一种模式识别方案,该方案考虑了 fcc 和 hcp 吸附位,以便在 fcc(111)表面上执行自学习动力学蒙特卡罗 (SLKMC-II) 模拟。在该方案中,通过将 fcc 位、hcp 位和周围的顶层衬底原子分组到六边形环中,唯一地确定了岛上每个配位不足原子的局部环境。随着模拟的进行,会自动发现所有可能的过程,包括可能涉及 fcc-fcc、hcp-hcp 和 fcc-hcp 移动的剪切、蠕动和协同滑动等过程,并即时计算其能量。在本文中,我们介绍了将这种新的模式识别方案应用于 M(111)上 9 原子岛 (M(9)) 自扩散的结果,其中 M = Cu、Ag 或 Ni。

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