人工神经网络
可扩展性
Atom(片上系统)
密度泛函理论
计算机科学
势能面
能量(信号处理)
工作(物理)
过程(计算)
均方误差
物理
算法
统计物理学
人工智能
数学
分子
量子力学
统计
数据库
嵌入式系统
操作系统
作者
Lingzhi Cao,Yibo Guo,Wenhua Han,Wenwu Xu,Linwei Sai,Jie Fu
标识
DOI:10.1088/1361-648x/ac4f7d
摘要
The search of ground-state structures (GSSs) of gold (Au) clusters is a formidable challenge due to the complexity of potential energy surface (PES). In this work, we have built a high-dimensional artificial neural network (ANN) potential to describe the PES of Au20clusters. The ANN potential is trained through learning the GSS search process of Au20by the combination of density functional theory (DFT) method and genetic algorithm. The root mean square errors of energy and force are 7.72 meV atom-1and 217.02 meV Å-1, respectively. As a result, it can find the lowest-energy structure (LES) of Au20clusters that is consistent with previous results. Furthermore, the scalability test shows that it can predict the energy of smaller size Au16-19clusters with errors less than 22.85 meV atom-1, and for larger size Au21-25clusters, the errors are below 36.94 meV atom-1. Extra attention should be paid to its accuracy for Au21-25clusters. Applying the ANN to search the GSSs of Au16-25, we discover two new structures of Au16and Au21that are not reported before and several candidate LESs of Au16-18. In summary, this work proves that an ANN potential trained for specific size clusters could reproduce the GSS search process by DFT and be applied in the GSS search of smaller size clusters nearby. Therefore, we claim that building ANN potential based on DFT data is one of the most promising ways to effectively accelerate the GSS pre-screening of clusters.
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