4.3 Article

A universal graph deep learning interatomic potential for the periodic table

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NATURE COMPUTATIONAL SCIENCE
卷 2, 期 11, 页码 718-+

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SPRINGERNATURE
DOI: 10.1038/s43588-022-00349-3

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  1. US Department of Energy, Office of Science, Office of Basic Energy Sciences, Materials Sciences and Engineering Division [DE-AC02-05-CH11231, KC23MP]
  2. LG Energy Solution through the Frontier Research Laboratory (FRL) Program
  3. National Science Foundation [ACI-1548562]

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This study presents a universal interatomic potential (IAP) model for materials based on graph neural networks, which has broad applications in structural relaxation, dynamic simulations, and property prediction. The study also identifies a large number of synthesizable materials with stability and exceptional properties.
Interatomic potentials (IAPs), which describe the potential energy surface of atoms, are a fundamental input for atomistic simulations. However, existing IAPs are either fitted to narrow chemistries or too inaccurate for general applications. Here we report a universal IAP for materials based on graph neural networks with three-body interactions (M3GNet). The M3GNet IAP was trained on the massive database of structural relaxations performed by the Materials Project over the past ten years and has broad applications in structural relaxation, dynamic simulations and property prediction of materials across diverse chemical spaces. About 1.8 million materials from a screening of 31 million hypothetical crystal structures were identified to be potentially stable against existing Materials Project crystals based on M3GNet energies. Of the top 2,000 materials with the lowest energies above the convex hull, 1,578 were verified to be stable using density functional theory calculations. These results demonstrate a machine learning-accelerated pathway to the discovery of synthesizable materials with exceptional properties.

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