Journal of Physics Communications (Jan 2023)

Towards the construction of an accurate kinetic energy density functional and its functional derivative through physics-informed neural networks

  • Luis Rincón,
  • Luis E Seijas,
  • Rafael Almeida,
  • F Javier Torres

DOI
https://doi.org/10.1088/2399-6528/acd90e
Journal volume & issue
Vol. 7, no. 6
p. 061001

Abstract

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One of the primary obstacles in the development of orbital–free density functional theory is the lack of an accurate functional for the Kohn–Sham non-interacting kinetic energy, which, in addition to its accuracy, must also render a good approximation for its functional derivative. To address this critical issue, we propose the construction of a kinetic energy density functional throught physical- informed neural network, where the neural network’s loss function is designed to simultaneously reproduce the atom’s shell structures, and also, an analytically calculated functional derivative. As a proof-of-concept, we have tested the accuracy of the kinetic energy potential by optimizing electron densities for atoms from Li to Xe.

Keywords