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Universal materials model of deep-learning density functional theory Hamiltonian

Authors :
Wang, Yuxiang
Li, Yang
Tang, Zechen
Li, He
Yuan, Zilong
Tao, Honggeng
Zou, Nianlong
Bao, Ting
Liang, Xinghao
Chen, Zezhou
Xu, Shanghua
Bian, Ce
Xu, Zhiming
Wang, Chong
Si, Chen
Duan, Wenhui
Xu, Yong
Publication Year :
2024

Abstract

Realizing large materials models has emerged as a critical endeavor for materials research in the new era of artificial intelligence, but how to achieve this fantastic and challenging objective remains elusive. Here, we propose a feasible pathway to address this paramount pursuit by developing universal materials models of deep-learning density functional theory Hamiltonian (DeepH), enabling computational modeling of the complicated structure-property relationship of materials in general. By constructing a large materials database and substantially improving the DeepH method, we obtain a universal materials model of DeepH capable of handling diverse elemental compositions and material structures, achieving remarkable accuracy in predicting material properties. We further showcase a promising application of fine-tuning universal materials models for enhancing specific materials models. This work not only demonstrates the concept of DeepH's universal materials model but also lays the groundwork for developing large materials models, opening up significant opportunities for advancing artificial intelligence-driven materials discovery.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.10536
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.scib.2024.06.011