Insight into the effect of force error on the thermal conductivity from machine-learned potentials

被引:1
|
作者
Zhou, Wenjiang [1 ,2 ]
Liang, Nianjie [1 ]
Wu, Xiguang [3 ]
Xiong, Shiyun [3 ]
Fan, Zheyong [4 ]
Song, Bai [1 ,5 ,6 ]
机构
[1] Peking Univ, Dept Energy & Resources Engn, Beijing 100871, Peoples R China
[2] Great Bay Univ, Sch Adv Engn, Dongguan 523000, Peoples R China
[3] Guangdong Univ Technol, Sch Mat & Energy, Guangzhou Key Lab Low Dimens Mat & Energy Storage, Guangzhou 510006, Peoples R China
[4] Bohai Univ, Coll Phys Sci & Technol, Jinzhou 121013, Peoples R China
[5] Peking Univ, Dept Adv Mfg & Robot, Beijing 100871, Peoples R China
[6] Natl Key Lab Adv MicroNanoManufacture Technol, Beijing 100871, Peoples R China
基金
中国国家自然科学基金;
关键词
Thermal conductivity; Machine-learned molecular dynamics; Anharmonic lattice dynamics; Boltzmann transport equation; Boron arsenide; IRREVERSIBLE-PROCESSES;
D O I
10.1016/j.mtphys.2024.101638
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Machine-learned potentials (MLPs) have been extensively used to obtain the lattice thermal conductivity (kappa) via atomistic simulations. However, the impact of force errors in various MLPs on thermal transport has not been widely recognized and remains to be fully understood. Here, we employ MLP-driven molecular dynamics (MD) and anharmonic lattice dynamics (LD) to systematically investigate how the calculated kappa varies with the force errors, using boron arsenide as a prototypical material to emphasize the challenges associated with high thermal conductivity. We consistently observe an underestimation of kappa in MD simulations with different MLPs including the neuroevolution potential, deep potential, and moment tensor potential (MTP). We propose a robust second- order extrapolation scheme based on controlled force noises via the Langevin thermostat to correct this underestimation. The corrected results achieve a good agreement with previous experimental measurements from 200 K to 600 K. In contrast, the kappa values from LD calculations with MLPs readily align with the experimental data, which is attributed to the much smaller effects of the force errors on the force-constant calculations. Our findings provide deeper physical insight into the effect of the force errors in machine-learned potentials on thermal transport, and are particularly instrumental for simulating and seeking high-kappa materials. In addition, we also make our modified version of the MLIP package publicly accessible in order to facilitate the accurate calculation of heat current in MTP-based MD simulations.
引用
收藏
页数:8
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