原子间势
分子动力学
材料科学
星团(航天器)
人工神经网络
工作(物理)
从头算
化学物理
统计物理学
热力学
计算机科学
机器学习
计算化学
物理
化学
量子力学
程序设计语言
作者
Huaijun Sun,Chao Zhang,Ling Tang,Renhai Wang,Weiyi Xia,Cai‐Zhuang Wang
出处
期刊:Physical review
日期:2023-06-02
卷期号:107 (22)
被引量:4
标识
DOI:10.1103/physrevb.107.224301
摘要
Interatomic potential development using machine learning (ML) approaches has attracted a lot of attention in recent years because these potentials can effectively describe the structural and dynamical properties of complex materials at the atomistic level. In this work, we present the development of a neural network (NN) deep ML interatomic potential for Fe-Si alloys, and we demonstrate the effectiveness of the NN-ML potential in predicting the structures and energies of liquid and crystalline phases of Fe-Si alloys in comparison with the results from ab initio molecular dynamics simulations or experimental data. The developed NN-ML potential is also used to perform molecular dynamics simulations to study the structures of Fe-Si alloys with various compositions under rapid solidification conditions. The short-ranged orders in the rapidly solidified Fe-Si alloys are also analyzed by a cluster alignment method.
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