Physical Review Research (May 2022)

Neural-network quantum states for periodic systems in continuous space

  • Gabriel Pescia,
  • Jiequn Han,
  • Alessandro Lovato,
  • Jianfeng Lu,
  • Giuseppe Carleo

DOI
https://doi.org/10.1103/PhysRevResearch.4.023138
Journal volume & issue
Vol. 4, no. 2
p. 023138

Abstract

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We introduce a family of neural quantum states for the simulation of strongly interacting systems in the presence of spatial periodicity. Our variational state is parametrized in terms of a permutationally invariant part described by the Deep Sets neural-network architecture. The input coordinates to the Deep Sets are periodically transformed such that they are suitable to directly describe periodic bosonic systems. We show example applications to both one- and two-dimensional interacting quantum gases with Gaussian interactions, as well as to ^{4}He confined in a one-dimensional geometry. For the one-dimensional systems we find very precise estimations of the ground-state energies and the radial distribution functions of the particles. In two dimensions we obtain good estimations of the ground-state energies, comparable to results obtained from more conventional methods.