Parallel kinetic Monte Carlo simulation of Al3Sc precipitation

Alfredo Moura , António Esteves
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引用次数: 1

Abstract

The present paper reports the precipitation process of Al3Sc structures in an aluminum scandium alloy, which has been simulated with a synchronous parallel kinetic Monte Carlo (spkMC) algorithm. The spkMC implementation is based on the vacancy diffusion mechanism. To filter the raw data generated by the spkMC simulations, the density-based clustering with noise (DBSCAN) method has been employed. spkMC and DBSCAN algorithms were implemented in the C language and using MPI library. The simulations were conducted in the SeARCH cluster located at the University of Minho. The Al3Sc precipitation was successfully simulated at the atomistic scale with spkMC. DBSCAN proved to be a valuable aid to identify the precipitates by performing a cluster analysis of the simulation results. The achieved simulations results are in good agreement with those reported in the literature under sequential kinetic Monte Carlo simulations (kMC). The parallel implementation of kMC has provided a 4x speedup over the sequential version.

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Al3Sc沉淀的平行动力学蒙特卡罗模拟
本文报道了铝钪合金中Al3Sc组织的析出过程,并用同步并行动力学蒙特卡罗(spkMC)算法对其进行了模拟。spkMC的实现基于空位扩散机制。为了过滤spkMC模拟产生的原始数据,采用了基于密度的噪声聚类(DBSCAN)方法。spkMC和DBSCAN算法采用C语言和MPI库实现。模拟是在Minho大学的SeARCH集群中进行的。用spkMC在原子尺度上成功地模拟了Al3Sc的析出过程。通过对模拟结果进行聚类分析,DBSCAN证明是识别沉淀的有价值的辅助工具。所获得的模拟结果与文献报道的顺序动力学蒙特卡罗模拟(kMC)结果吻合较好。kMC的并行实现比顺序版本提供了4倍的加速。
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