热导率
斯库特绿铁矿
声子
原子间势
格子(音乐)
材料科学
统计物理学
量子
热的
玻尔兹曼方程
凝聚态物理
分子动力学
物理
计算机科学
热力学
量子力学
热电材料
声学
作者
Pavel Korotaev,I.I. Novoselov,Aleksey Yanilkin,Alexander V. Shapeev
出处
期刊:Physical review
日期:2019-10-22
卷期号:100 (14)
被引量:95
标识
DOI:10.1103/physrevb.100.144308
摘要
While lattice thermal conductivity is an important parameter for many technological applications, its calculation is a time-consuming task, especially for compounds with a complex crystal structure. In this paper, we solve this problem using machine learning interatomic potentials. These potentials trained on the density functional theory results and provide an accurate description of lattice dynamics. Additionally, active learning was applied to significantly reduce the number of expensive quantum-mechanical calculations required for training and increases reliability of the potential. The ${\mathrm{CoSb}}_{3}$ skutterudite was considered as an example, and the solution of the Boltzmann transport equation for phonons was compared with the Green-Kubo method. We demonstrated that accurate and reliable potentials can be obtained by performing just a few hundred quantum-mechanical calculations. The potentials reproduce not only the vibrational spectrum, but also the lattice thermal conductivity, as calculated by various methods.
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