Pokharel Kanun, Furness James W, Yao Yi, Blum Volker, Irons Tom J P, Teale Andrew M, Sun Jianwei
Department of Physics and Engineering Physics, Tulane University, New Orleans, Louisiana 70118, USA.
Thomas Lord Department of Mechanical Engineering and Material Science, Duke University, Durham, North Carolina 27708, USA.
J Chem Phys. 2022 Nov 7;157(17):174106. doi: 10.1063/5.0111183.
Machine learning techniques have received growing attention as an alternative strategy for developing general-purpose density functional approximations, augmenting the historically successful approach of human-designed functionals derived to obey mathematical constraints known for the exact exchange-correlation functional. More recently, efforts have been made to reconcile the two techniques, integrating machine learning and exact-constraint satisfaction. We continue this integrated approach, designing a deep neural network that exploits the exact constraint and appropriate norm philosophy to de-orbitalize the strongly constrained and appropriately normed (SCAN) functional. The deep neural network is trained to replicate the SCAN functional from only electron density and local derivative information, avoiding the use of the orbital-dependent kinetic energy density. The performance and transferability of the machine-learned functional are demonstrated for molecular and periodic systems.
机器学习技术作为开发通用密度泛函近似的一种替代策略受到了越来越多的关注,它增强了人类设计泛函这一历史上成功的方法,该方法旨在遵循精确交换相关泛函所熟知的数学约束。最近,人们努力协调这两种技术,将机器学习与精确约束满足相结合。我们延续这种集成方法,设计了一个深度神经网络,该网络利用精确约束和适当的范数理念对强约束适当范数(SCAN)泛函进行去轨道化。深度神经网络经过训练,仅从电子密度和局部导数信息复制SCAN泛函,避免使用与轨道相关的动能密度。该机器学习泛函在分子和周期性系统中的性能及可转移性得到了证明。