Predicting charge density distribution of materials using a local-environment-based graph convolutional network
Author(s)
Gong, Sheng; Xie, Tian; Zhu, Taishan; Wang, Shuo; Fadel, Eric R.; Grossman, Jeffrey C.; ... Show more Show less
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The electron charge density distribution of materials is one of the key quantities in computational materials science as theoretically it determines the ground state energy and practically it is used in many materials analyses. However, the scaling of density functional theory calculations with number of atoms limits the usage of charge-density-based calculations and analyses. Here we introduce a machine-learning scheme with local-environment-based graphs and graph convolutional neural networks to predict charge density on grid points from the crystal structure. We show the accuracy of this scheme through a comparison of predicted charge densities as well as properties derived from the charge density, and that the scaling is O(N). More importantly, the transferability is shown to be high with respect to different compositions and structures, which results from the explicit encoding of geometry.
Date issued
2019-11Department
Massachusetts Institute of Technology. Research Laboratory of ElectronicsJournal
Physical Review B
Publisher
American Physical Society (APS)
Citation
Gong, Sheng et al. “Predicting charge density distribution of materials using a local-environment-based graph convolutional network.” Physical Review B, 100, 18 (Noember 2019): 184103 © 2019 The Author(s)
Version: Final published version
ISSN
2469-9969