Automatic selection of atomic fingerprints and reference configurations for machine-learning potentials

被引:227
|
作者
Imbalzano, Giulio [1 ]
Anelli, Andrea [1 ]
Giofre, Daniele [1 ]
Klees, Sinja [2 ]
Behler, Joerg [2 ,3 ]
Ceriotti, Michele [1 ]
机构
[1] Ecole Polytech Fed Lausanne, Lab Computat Sci & Modeling, IMX, CH-1015 Lausanne, Switzerland
[2] Ruhr Univ Bochum, Lehrstuhl Theoret Chem, D-44801 Bochum, Germany
[3] Univ Gottingen, Inst Phys Chem, Theoret Chem, Tammannstr 6, D-37077 Gottingen, Germany
来源
JOURNAL OF CHEMICAL PHYSICS | 2018年 / 148卷 / 24期
基金
欧洲研究理事会;
关键词
PROTON-TRANSFER MECHANISMS; FINDING SADDLE-POINTS; WATER; INFORMATION; SURFACES;
D O I
10.1063/1.5024611
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 of atomic-scale properties is revolutionizing molecular modeling, making it possible to evaluate inter-atomic potentials with first-principles accuracy, at a fraction of the costs. The accuracy, speed, and reliability of machine learning potentials, however, depend strongly on the way atomic configurations are represented, i.e., the choice of descriptors used as input for the machine learning method. The raw Cartesian coordinates are typically transformed in "fingerprints," or "symmetry functions," that are designed to encode, in addition to the structure, important properties of the potential energy surface like its invariances with respect to rotation, translation, and permutation of like atoms. Here we discuss automatic protocols to select a number of fingerprints out of a large pool of candidates, based on the correlations that are intrinsic to the training data. This procedure can greatly simplify the construction of neural network potentials that strike the best balance between accuracy and computational efficiency and has the potential to accelerate by orders of magnitude the evaluation of Gaussian approximation potentials based on the smooth overlap of atomic positions kernel. We present applications to the construction of neural network potentials for water and for an Al-Mg-Si alloy and to the prediction of the formation energies of small organic molecules using Gaussian process regression. Published by AIP Publishing.
引用
收藏
页数:9
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