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Machine-Learning Potential Driven Simulations of Carbon in the Expanded Regime

ORAL

Abstract

Experimental validation of equation of state (EOS) models for high-energy-density applications typically involves measuring the shock Hugoniot, which helps constrain the high-pressure, high-density EOS. However, EOS measurements at below ambient density in the so-called expanded regime are less common. Recent experimental advances allow the isentrope to be inferred from measurements of the density profile of an adiabatically expanding proton-heated plasma, offering the potential to assess various theoretical EOS models over a wide range of below ambient density conditions.

On the theoretical side, determining the expanded regime EOS poses a considerable challenge for ab initio methods like density functional theory based molecular dynamics (DFT-MD) due to the big simulation cells and large number of orbitals required to simulate these low density, high temperature conditions. We thus take a more computationally friendly approach by leveraging the power of MD driven by quantum accurate machine learning potentials. We directly simulate the adiabatic expansion of proton-heated diamond at conditions relevant to experiments using multi-million atom cells. From these simulations, we both extract the isentrope and elucidate the microscopic chemistry at play, such as the formation of graphene- or carbyne-like rings and chains. These insights gained from our MD simulations can serve to guide and interpret experimental design and observations.

Presenters

  • Justin X D'Souza

    University of Rochester

Authors

  • Justin X D'Souza

    University of Rochester

  • Sheng Jiang

    Lawrence Livermore National Laboratory

  • Lorin Benedict

    Lawrence Livermore National Laboratory

  • Nir Goldman

    Lawrence Livermore National Laboratory

  • Mark E Foord

    Lawrence Livermore National Laboratory, Lawrence Livermore Natl Lab

  • Richard A London

    Lawrence Livermore National Laboratory

  • Evan Bauer

    Lawrence Livermore National Laboratory

  • Matthew P. Hill

    Lawrence Livermore National Laboratory

  • Yuan Ping

    Lawrence Livermore National Laboratory

  • Amy E Lazicki

    Lawrence Livermore National Laboratory

  • Shuai Zhang

    University of Rochester