De novo exploration and self-guided learning of potential-energy surfaces

被引:147
作者
Bernstein, Noam [1 ]
Csanyi, Gabor [2 ]
Deringer, Volker L. [2 ,3 ]
机构
[1] US Naval Res Lab, Ctr Mat Phys & Technol, Washington, DC 20375 USA
[2] Univ Cambridge, Dept Engn, Cambridge CB2 1PZ, England
[3] Univ Oxford, Dept Chem, Oxford OX1 3QR, England
基金
英国工程与自然科学研究理事会;
关键词
NEURAL-NETWORK POTENTIALS; CRYSTAL; SOLIDS; PHASE; DFT;
D O I
10.1038/s41524-019-0236-6
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
Interatomic potential models based on machine learning (ML) are rapidly developing as tools for material simulations. However, because of their flexibility, they require large fitting databases that are normally created with substantial manual selection and tuning of reference configurations. Here, we show that ML potentials can be built in a largely automated fashion, exploring and fitting potential-energy surfaces from the beginning (de novo) within one and the same protocol. The key enabling step is the use of a configuration-averaged kernel metric that allows one to select the few most relevant and diverse structures at each step. The resulting potentials are accurate and robust for the wide range of configurations that occur during structure searching, despite only requiring a relatively small number of single-point DFT calculations on small unit cells. We apply the method to materials with diverse chemical nature and coordination environments, marking an important step toward the more routine application of ML potentials in physics, chemistry, and materials science.
引用
收藏
页数:9
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