Convolutional network learning of self-consistent electron density via grid-projected atomic fingerprints

被引:2
作者
Lee, Ryong-Gyu [1 ]
Kim, Yong-Hoon [1 ]
机构
[1] Korea Adv Inst Sci & Technol KAIST, Sch Elect Engn, 291 Daehak Ro, Daejeon 34141, South Korea
基金
新加坡国家研究基金会;
关键词
EXCHANGE; ENERGY;
D O I
10.1038/s41524-024-01433-0
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
The self-consistent field (SCF) generation of the three-dimensional (3D) electron density distribution (rho) represents a fundamental aspect of density functional theory (DFT) and related first-principles calculations, and how one can shorten or bypass the SCF loop represents a critical question in electronic structure theory from both practical and fundamental standpoints. Herein, a machine learning strategy, DeepSCF, is presented in which the map between the SCF rho and the initial guess density (rho 0) constructed by the summation of neutral atomic densities is learned using 3D convolutional neural networks (CNNs). High accuracy and transferability of DeepSCF are achieved by first encoding rho 0 on a 3D grid and then expanding the input features to include atomic fingerprints beyond rho 0. The prediction of the residual density (delta rho) rather than rho itself is targeted, and given that delta rho is indicative of chemical bonding information, a dataset of small-sized organic molecules featuring diverse bonding characters is adopted. The fidelity of DeepSCF is finally enhanced by subjecting the atomic geometries of the dataset to random rotations and strains. The effectiveness of DeepSCF is demonstrated using a complex carbon nanotube-based DNA sequencer model. This work evidences that the nearsightedness in electronic structure can be optimally represented via the spatial locality in CNNs, offering insight into the success of various machine learning-based atomistic materials simulations.
引用
收藏
页数:8
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