Nonparametric Local Pseudopotentials with Machine Learning: A Tin Pseudopotential Built Using Gaussian Process Regression

被引:10
|
作者
Luder, Johann [1 ,2 ]
Manzhos, Sergei [3 ]
机构
[1] Natl Sun Yat Sen Univ, Dept Mat & Optoelect Sci, Kaohsiung, Taiwan
[2] Natl Sun Yat Sen Univ, Ctr Crystal Res, Kaohsiung, Taiwan
[3] Inst Natl Rech Sci, Ctr Energie Mat Telecommun, Varennes, PQ J3X 1S2, Canada
来源
JOURNAL OF PHYSICAL CHEMISTRY A | 2020年 / 124卷 / 52期
关键词
DENSITY-FUNCTIONAL-THEORY; POLYETHYLENE TEREPHTHALATE; SEMICONDUCTORS; GE; NANOPARTICLES; DYNAMICS; OXIDE;
D O I
10.1021/acs.jpca.0c05723
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
We present novel nonparametric representation math for local pseudopotentials (PP) based on Gaussian Process Regression (GPR). Local pseudopotentials are needed for materials simulations using Orbital-Free Density Functional Theory (OF-DFT) to reduce computational cost and to allow kinetic energy functional (KEF application only to the valence density. Moreover, local PPs are important for the development of accurate KEFs for OF-DFT, but they are only available for a limited number of elements. We optimize local PPs of tin (Sn) represented with GPR to reproduce the experimental lattice constants of alpha- and beta-Sn and the energy difference between these two phases as well as their electronic structure and charge density distributions which are obtained with Kohn-Sham Density Functional Theory employing semilocal PPs. The use of a nonparametric GPR-based PP representation avoids difficulties associated with the use of parametrized functions and has the potential to construct an optimal local PP independent of prior assumptions. The GPR-based Sn local PP results in well-reproduced bulk properties of alpha- and beta-tin and electronic valence densities similar to those obtained with semilocal PP.
引用
收藏
页码:11111 / 11124
页数:14
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