Matter and Radiation at Extremes (Jan 2024)

Combining stochastic density functional theory with deep potential molecular dynamics to study warm dense matter

  • Tao Chen,
  • Qianrui Liu,
  • Yu Liu,
  • Liang Sun,
  • Mohan Chen

DOI
https://doi.org/10.1063/5.0163303
Journal volume & issue
Vol. 9, no. 1
pp. 015604 – 015604-14

Abstract

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In traditional finite-temperature Kohn–Sham density functional theory (KSDFT), the partial occupation of a large number of high-energy KS eigenstates restricts the use of first-principles molecular dynamics methods at extremely high temperatures. However, stochastic density functional theory (SDFT) can overcome this limitation. Recently, SDFT and the related mixed stochastic–deterministic density functional theory, based on a plane-wave basis set, have been implemented in the first-principles electronic structure software ABACUS [Q. Liu and M. Chen, Phys. Rev. B 106, 125132 (2022)]. In this study, we combine SDFT with the Born–Oppenheimer molecular dynamics method to investigate systems with temperatures ranging from a few tens of eV to 1000 eV. Importantly, we train machine-learning-based interatomic models using the SDFT data and employ these deep potential models to simulate large-scale systems with long trajectories. Subsequently, we compute and analyze the structural properties, dynamic properties, and transport coefficients of warm dense matter.