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Computational and training requirements for interatomic potential based on artificial neural network for estimating low thermal conductivity of silver chalcogenides.

作者信息

Shimamura Kohei, Takeshita Yusuke, Fukushima Shogo, Koura Akihide, Shimojo Fuyuki

机构信息

Department of Physics, Kumamoto University, Kumamoto 860-8555, Japan.

出版信息

J Chem Phys. 2020 Dec 21;153(23):234301. doi: 10.1063/5.0027058.

DOI:10.1063/5.0027058
PMID:33353316
Abstract

We examined the estimation of thermal conductivity through molecular dynamics simulations for a superionic conductor, α-AgSe, using the interatomic potential based on an artificial neural network (ANN potential). The training data were created using the existing empirical potential of AgSe to help find suitable computational and training requirements for the ANN potential, with the intent to apply them to first-principles calculations. The thermal conductivities calculated using different definitions of heat flux were compared, and the effect of explicit long-range Coulomb interaction on the conductivities was investigated. We clarified that using a rigorous heat flux formula for the ANN potential, even for highly ionic α-AgSe, the resulting thermal conductivity was reasonably consistent with the reference value without explicitly considering Coulomb interaction. It was found that ANN training including the virial term played an important role in reducing the dependency of thermal conductivity on the initial values of the weight parameters of the ANN.

摘要

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