Accelerated computation of lattice thermal conductivity using neural network interatomic potentials

被引:12
作者
Choi, Jeong Min [1 ]
Lee, Kyeongpung [1 ]
Kim, Sangtae [1 ]
Moon, Minseok [1 ]
Jeong, Wonseok [2 ]
Han, Seungwu [1 ]
机构
[1] Seoul Natl Univ, Dept Mat Sci & Engn, Seoul 08826, South Korea
[2] Lawrence Livermore Natl Lab, 7000 East Ave, Livermore, CA 94550 USA
基金
新加坡国家研究基金会;
关键词
Machine learning potential; Lattice thermal conductivity; Phonon Boltzmann transport equation; Accelerated computation; TOTAL-ENERGY CALCULATIONS; MOLECULAR-DYNAMICS;
D O I
10.1016/j.commatsci.2022.111472
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
With the development of the density functional theory (DFT) and ever-increasing computational capacity, an accurate prediction of lattice thermal conductivity based on the Boltzmann transport theory becomes computationally feasible, contributing to a fundamental understanding of thermal conductivity as well as a choice of the optimal materials for specific applications. However, steep costs in evaluating third-order force constants limit the theoretical investigation to crystals with high symmetry and few atoms in the unit cell. Currently, machine learning potentials are garnering attention as a computationally efficient high-fidelity model of DFT, and several studies have demonstrated that the lattice thermal conductivity could be computed accurately via the machine learning potentials. However, test materials were mostly crystals with high symmetries, and the applicability of machine learning potentials to a wide range of materials has yet to be demonstrated. Furthermore, establishing a standard training set that provides consistent accuracy and computational efficiencies across a wide range of materials would be useful. To address these issues, herein we compute lattice thermal conductivities at 300 K using neural network interatomic potentials. As test materials, we select 25 materials with diverse symmetries and a wide range of lattice thermal conductivities between 10-1 and 10(3) Wm(-1)K(-1). Among various choices of training sets, we find that molecular dynamics trajectories at 50-700 K consistently provide results at par with DFT for the test materials. In contrast to pure DFT approaches, the computational cost in the present approach is uniform over the test materials, yielding a speed gain of 2-10 folds. When a smaller reduced training set is used, the relative efficiency increases by up to ~50 folds without sacrificing accuracy significantly. The current work will broaden the application scope of machine learning potentials by establishing a robust framework for accurately computing lattice thermal conductivity with machine learning potentials.
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页数:8
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