Machine Learning a General-Purpose Interatomic Potential for Silicon

被引:448
作者
Bartok, Albert P. [1 ]
Kermode, James [2 ]
Bernstein, Noam [3 ]
Csanyi, Gabor [4 ]
机构
[1] Rutherford Appleton Lab, Comp Sci Dept, Sci & Technol Facil Council, Didcot OX11 0QX, Oxon, England
[2] Univ Warwick, Warwick Ctr Predict Modelling, Sch Engn, Coventry CV4 7AL, W Midlands, England
[3] US Naval Res Lab, Ctr Mat Phys & Technol, Washington, DC 20375 USA
[4] Univ Cambridge, Engn Lab, Trumpington St, Cambridge CB2 1PZ, England
来源
PHYSICAL REVIEW X | 2018年 / 8卷 / 04期
基金
英国工程与自然科学研究理事会;
关键词
DENSITY-FUNCTIONAL THEORY; NEURAL-NETWORK POTENTIALS; EMBEDDED-ATOM POTENTIALS; TIGHT-BINDING MODEL; MOLECULAR-DYNAMICS; THERMAL-EXPANSION; MAGIC NUMBERS; CONCERTED EXCHANGE; ENERGY SURFACES; STACKING-FAULTS;
D O I
10.1103/PhysRevX.8.041048
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
The success of first-principles electronic-structure calculation for predictive modeling in chemistry, solid-state physics, and materials science is constrained by the limitations on simulated length scales and timescales due to the computational cost and its scaling. Techniques based on machine-learning ideas for interpolating the Born-Oppenheimer potential energy surface without explicitly describing electrons have recently shown great promise, but accurately and efficiently fitting the physically relevant space of configurations remains a challenging goal. Here, we present a Gaussian approximation potential for silicon that achieves this milestone, accurately reproducing density-functional-theory reference results for a wide range of observable properties, including crystal, liquid, and amorphous bulk phases, as well as point, line, and plane defects. We demonstrate that this new potential enables calculations such as finite-temperature phase-boundary lines, self-diffusivity in the liquid, formation of the amorphous by slow quench, and dynamic brittle fracture, all of which are very expensive with a first-principles method. We show that the uncertainty quantification inherent to the Gaussian process regression framework gives a qualitative estimate of the potential's accuracy for a given atomic configuration. The success of this model shows that it is indeed possible to create a useful machine-learning-based interatomic potential that comprehensively describes a material on the atomic scale and serves as a template for the development of such models in the future.
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页数:32
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