Progress Towards Quantum Accurate Atomistic Simulations of Shock Propagation and Release in DT
POSTER
Abstract
Large-scale atomistic simulations of inertial confinement fusion (ICF) experiments naturally include microscopic physics missing from traditional radiation-hydrodynamic codes. Thus, they can better model kinetic processes such as species separation in CH ablators and the subsequent hydrogen streaming and mixing into the deuterium-tritium fuel that occur during strong shocks in these experiments.
We will present progress towards quantum accurate atomistic simulations of ICF using machine learning interatomic potentials (ML-IAPs). First, we will discuss using a recently developed quantum-accurate potential for deuterium gas using the Chebyshev Interaction Model for Efficient Simulations (ChIMES) framework. We show that due to an improved description of the molecular-to-atomic transition, this model can better reproduce the ab initio equation of state, radial distribution functions, and principal Hugoniot than bond order potentials.
Second, we will show that even ML-IAPs struggle to be truly transferable across the entire range of thermodynamic conditions. We will discuss strategies for how to augment existing ML-IAP models with temperature dependent corrections to more accurately describe interatomic interactions including ionization in these simulations.
We will present progress towards quantum accurate atomistic simulations of ICF using machine learning interatomic potentials (ML-IAPs). First, we will discuss using a recently developed quantum-accurate potential for deuterium gas using the Chebyshev Interaction Model for Efficient Simulations (ChIMES) framework. We show that due to an improved description of the molecular-to-atomic transition, this model can better reproduce the ab initio equation of state, radial distribution functions, and principal Hugoniot than bond order potentials.
Second, we will show that even ML-IAPs struggle to be truly transferable across the entire range of thermodynamic conditions. We will discuss strategies for how to augment existing ML-IAP models with temperature dependent corrections to more accurately describe interatomic interactions including ionization in these simulations.
Presenters
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Justin X D'Souza
University of Rochester
Authors
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Justin X D'Souza
University of Rochester