Machine learning of kinetic energy densities with target and feature smoothing: Better results with fewer training data

被引:8
作者
Manzhos, Sergei [1 ]
Luder, Johann [2 ,3 ,4 ]
Ihara, Manabu [1 ]
机构
[1] Tokyo Inst Technol, Sch Mat & Chem Technol, Ookayama 2-12-1,Meguro Ku, Tokyo 1528552, Japan
[2] Natl Sun Yat Sen Univ, Dept Mat & Optoelect Sci, 70 Lien Hai Rd, Kaohsiung 80424, Taiwan
[3] Natl Sun Yat Sen Univ, Ctr Crystal Res, 70 Lien Hai Rd, Kaohsiung 80424, Taiwan
[4] Natl Sun Yat Sen Univ, Ctr Theoret & Computat Phys, Kaohsiung 80424, Taiwan
关键词
FUNCTIONAL THEORY; LOCAL PSEUDOPOTENTIALS; APPROXIMATION; ACCURATE; MG; AL;
D O I
10.1063/5.0175689
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
Machine learning (ML) of kinetic energy functionals (KEFs), in particular kinetic energy density (KED) functionals, is a promising way to construct KEFs for orbital-free density functional theory (DFT). Neural networks and kernel methods including Gaussian process regression (GPR) have been used to learn Kohn-Sham (KS) KED from density-based descriptors derived from KS DFT calculations. The descriptors are typically expressed as functions of different powers and derivatives of the electron density. This can generate large and extremely unevenly distributed datasets, which complicates effective application of ML techniques. Very uneven data distributions require many training datapoints, can cause overfitting, and can ultimately lower the quality of an ML KED model. We show that one can produce more accurate ML models from fewer data by working with smoothed density-dependent variables and KED. Smoothing palliates the issue of very uneven data distributions and associated difficulties of sampling while retaining enough spatial structure necessary for working within the paradigm of KEDF. We use GPR as a function of smoothed terms of the fourth order gradient expansion and KS effective potential and obtain accurate and stable (with respect to different random choices of training points) kinetic energy models for Al, Mg, and Si simultaneously from as few as 2000 samples (about 0.3% of the total KS DFT data). In particular, accuracies on the order of 1% in a measure of the quality of energy-volume dependence B'=EV0-Delta V-2EV(0)+E(V-0+Delta V)/Delta V/V0(2) (where V(0 )is the equilibrium volume and Delta V is a deviation from it) are obtained simultaneously for all three materials.
引用
收藏
页数:10
相关论文
共 62 条
[1]  
Bishop C., 2006, Pattern Recognition and Machine Learning
[2]   Calculations for millions of atoms with density functional theory: linear scaling shows its potential [J].
Bowler, D. R. ;
Miyazaki, T. .
JOURNAL OF PHYSICS-CONDENSED MATTER, 2010, 22 (07)
[3]   Bypassing the Kohn-Sham equations with machine learning [J].
Brockherde, Felix ;
Vogt, Leslie ;
Li, Li ;
Tuckerman, Mark E. ;
Burke, Kieron ;
Mueller, Klaus-Robert .
NATURE COMMUNICATIONS, 2017, 8
[4]   Orbital-free density functional theory calculations of the properties of Al, Mg and Al-Mg crystalline phases [J].
Carling, KM ;
Carter, EA .
MODELLING AND SIMULATION IN MATERIALS SCIENCE AND ENGINEERING, 2003, 11 (03) :339-348
[5]   NONLOCAL KINETIC-ENERGY FUNCTIONAL FOR NONHOMOGENEOUS ELECTRON-SYSTEMS [J].
CHACON, E ;
ALVARELLOS, JE ;
TARAZONA, P .
PHYSICAL REVIEW B, 1985, 32 (12) :7868-7877
[6]   Orbital-free density functional theory:: Kinetic potentials and ab initio local pseudopotentials [J].
Chai, Jeng-Da ;
Weeks, John D. .
PHYSICAL REVIEW B, 2007, 75 (20)
[7]   Orbital-free density functional theory: Linear scaling methods for kinetic potentials, and applications to solid Al and Si [J].
Chai, Jeng-Da ;
Ligneres, Vincent L. ;
Ho, Gregory ;
Carter, Emily A. ;
Weeks, John D. .
CHEMICAL PHYSICS LETTERS, 2009, 473 (4-6) :263-267
[8]   Petascale Orbital-Free Density Functional Theory Enabled by Small-Box Algorithms [J].
Chen, Mohan ;
Jiang, Xiang-Wei ;
Zhuang, Houlong ;
Wang, Lin-Wang ;
Carter, Emily A. .
JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2016, 12 (06) :2950-2963
[9]   The melting point of lithium: an orbital-free first-principles molecular dynamics study [J].
Chen, Mohan ;
Hung, Linda ;
Huang, Chen ;
Xia, Junchao ;
Carter, Emily A. .
MOLECULAR PHYSICS, 2013, 111 (22-23) :3448-3456
[10]   Real-space formulation of orbital-free density functional theory using finite-element discretization: The case for Al, Mg, and Al-Mg intermetallics [J].
Das, Sambit ;
Iyer, Mrinal ;
Gavini, Vikram .
PHYSICAL REVIEW B, 2015, 92 (01)