Neural-network Density Functional Theory Based on Variational Energy Minimization

Deep-learning density functional theory (DFT) shows great promise to significantly accelerate material discovery and potentially revolutionize materials research. However, current research in this field primarily relies on data-driven supervised learning, making the developments of neural networks a...

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Veröffentlicht in:arXiv.org 2024-08
Hauptverfasser: Yang, Li, Tang, Zechen, Chen, Zezhou, Sun, Minghui, Zhao, Boheng, He, Li, Tao, Honggeng, Yuan, Zilong, Duan, Wenhui, Xu, Yong
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Sprache:eng
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Zusammenfassung:Deep-learning density functional theory (DFT) shows great promise to significantly accelerate material discovery and potentially revolutionize materials research. However, current research in this field primarily relies on data-driven supervised learning, making the developments of neural networks and DFT isolated from each other. In this work, we present a theoretical framework of neural-network DFT, which unifies the optimization of neural networks with the variational computation of DFT, enabling physics-informed unsupervised learning. Moreover, we develop a differential DFT code incorporated with deep-learning DFT Hamiltonian, and introduce algorithms of automatic differentiation and backpropagation into DFT, demonstrating the capability of neural-network DFT. The physics-informed neural-network architecture not only surpasses conventional approaches in accuracy and efficiency, but also offers a new paradigm for developing deep-learning DFT methods.
ISSN:2331-8422
DOI:10.48550/arxiv.2403.11287