Neural network learned Pauli potential for the advancement of orbital-free density functional theory

被引:4
作者
Gangwar, Aparna [1 ]
Bulusu, Satya S. [1 ]
Banerjee, Arup [2 ,3 ]
机构
[1] Indian Inst Technol Indore, Dept Chem, Indore 453552, India
[2] Raja Ramanna Ctr Adv Technolgy, Theoret & Computat Phys Sect, Indore 452013, India
[3] Homi Bhabha Natl Inst, Training Sch Complex, Mumbai 400094, India
关键词
KINETIC-ENERGY FUNCTIONALS; ELECTRON-DENSITY; GROUND-STATE; SQUARE-ROOT; EXCHANGE; APPROXIMATION; MOLECULES; MODEL; ATOMS;
D O I
10.1063/5.0165524
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 Pauli kinetic energy functional and its functional derivative, termed Pauli potential, play a crucial role in the successful implementation of orbital-free density functional theory for electronic structure calculations. However, the exact forms of these two quantities are not known. Therefore, perforce, one employs the approximate forms for the Pauli functional or Pauli potential for performing orbital-free density functional calculations. In the present study, we developed a feed-forward neural network-based representation for the Pauli potential using a 1-dimensional (1-D) model system. We expanded density in terms of basis functions, and the coefficients of the expansion were used as input to a feed-forward neural network. Using the neural network-based representation of the Pauli potential, we calculated the ground-state densities of the 1-D model system by solving the Euler equation. We calculated the Pauli kinetic energy using the neural network-based Pauli potential employing the exact relation between the Pauli kinetic energy functional and the potential. The sum of the neural network-based Pauli kinetic energy and the von Weizsacker kinetic energy resulted in an accurate estimation of the total kinetic energy. The approach presented in this paper can be employed for the calculation of Pauli potential and Pauli kinetic energy, obviating the need for a functional derivative. The present study is an important step in the advancement of application of machine learning-based techniques toward the orbital-free density functional theory-based methods.
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页数:9
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