从头算
声子
石墨烯
机器学习
人工智能
原子间势
统计物理学
色散(光学)
计算机科学
从头算量子化学方法
密度泛函理论
电子结构
能量(信号处理)
势能
高斯分布
拉曼光谱
代表(政治)
分子动力学
高斯过程
人工神经网络
算法
物理
实验数据
布里渊区
计算物理学
材料科学
分子物理学
作者
Rowe, Patrick,Csányi, Gábor,Alfè, Dario,Michaelides, Angelos
出处
期刊:Cornell University - arXiv
日期:2017-10-11
标识
DOI:10.48550/arxiv.1710.04187
摘要
We present an accurate interatomic potential for graphene, constructed using the Gaussian Approximation Potential (GAP) machine learning methodology. This GAP model obtains a faithful representation of a density functional theory (DFT) potential energy surface, facilitating highly accurate (approaching the accuracy of ab initio methods) molecular dynamics simulations. This is achieved at a computational cost which is orders of magnitude lower than that of comparable calculations which directly invoke electronic structure methods. We evaluate the accuracy of our machine learning model alongside that of a number of popular empirical and bond-order potentials, using both experimental and ab initio data as references. We find that whilst significant discrepancies exist between the empirical interatomic potentials and the reference data - and amongst the empirical potentials themselves - the machine learning model introduced here provides exemplary performance in all of the tested areas. The calculated properties include: graphene phonon dispersion curves at 0 K (which we predict with sub-meV accuracy), phonon spectra at finite temperature, in-plane thermal expansion up to 2500 K as compared to NPT ab initio molecular dynamics simulations and a comparison of the thermally induced dispersion of graphene Raman bands to experimental observations. We have made our potential freely available online at [http://www.libatoms.org].
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