计算
人工神经网络
密度泛函理论
计算机科学
声子
微扰理论(量子力学)
功能理论
暖稠密物质
从头算
摄动(天文学)
统计物理学
物理
人工智能
理论物理学
电子
量子力学
算法
作者
He Li,Zechen Tang,Jingheng Fu,Wen-Han Dong,Nianlong Zou,Xiaoxun Gong,Wenhui Duan,Yong Xu
标识
DOI:10.1103/physrevlett.132.096401
摘要
Calculating perturbation response properties of materials from first principles provides a vital link between theory and experiment, but is bottlenecked by the high computational cost. Here, a general framework is proposed to perform density functional perturbation theory (DFPT) calculations by neural networks, greatly improving the computational efficiency. Automatic differentiation is applied on neural networks, facilitating accurate computation of derivatives. High efficiency and good accuracy of the approach are demonstrated by studying electron-phonon coupling and related physical quantities. This work brings deep-learning density functional theory and DFPT into a unified framework, creating opportunities for developing ab initio artificial intelligence.Received 6 September 2023Revised 1 January 2024Accepted 31 January 2024DOI:https://doi.org/10.1103/PhysRevLett.132.096401© 2024 American Physical SocietyPhysics Subject Headings (PhySH)Research AreasElectron-phonon couplingFirst-principles calculationsSuperconductivityTechniquesDeep learningDensity functional theoryNeural network simulationsCondensed Matter, Materials & Applied Physics
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