Unified graph neural network force-field for the periodic table: solid state applications

被引:41
作者
Choudhary, Kamal [1 ,2 ]
Decost, Brian [3 ]
Major, Lily [4 ,5 ]
Butler, Keith [5 ]
Thiyagalingam, Jeyan [5 ]
Tavazza, Francesca [3 ]
机构
[1] NIST, Mat Measurement Lab, Gaithersburg, MD 20899 USA
[2] Theiss Res, La Jolla, CA 92037 USA
[3] NIST, Mat Measurement Lab, Gaithersburg, MD 20899 USA
[4] Aberystwyth Univ, Dept Comp Sci, Aberystwyth SY23 3DB, Wales
[5] Sci & Technol Facil Council, Rutherford Appleton Lab, Sci Comp Dept, Harwell Campus, Didcot OX11 0QX, England
来源
DIGITAL DISCOVERY | 2023年 / 2卷 / 02期
基金
英国工程与自然科学研究理事会;
关键词
TOTAL-ENERGY CALCULATIONS; HYDROCARBONS; SCIENCE;
D O I
10.1039/d2dd00096b
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Classical force fields (FFs) based on machine learning (ML) methods show great potential for large scale simulations of solids. MLFFs have hitherto largely been designed and fitted for specific systems and are not usually transferable to chemistries beyond the specific training set. We develop a unified atomisitic line graph neural network-based FF (ALIGNN-FF) that can model both structurally and chemically diverse solids with any combination of 89 elements from the periodic table. To train the ALIGNN-FF model, we use the JARVIS-DFT dataset which contains around 75 000 materials and 4 million energy-force entries, out of which 307 113 are used in the training. We demonstrate the applicability of this method for fast optimization of atomic structures in the crystallography open database and by predicting accurate crystal structures using a genetic algorithm for alloys. Classical force fields (FFs) based on machine learning (ML) methods show great potential for large scale simulations of solids.
引用
收藏
页码:346 / 355
页数:10
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