Equation of state predictions for ScF3 and CaZrF6 with neural network-driven molecular dynamics
John P. Stoppelman,
Angus P. Wilkinson,
Jesse G. McDaniel
Abstract:In silico property prediction based on density functional theory (DFT) is increasingly performed for crystalline materials. Whether quantitative agreement with experiment can be achieved with current methods is often an unresolved question, and may require detailed examination of physical effects such as electron correlation, reciprocal space sampling, phonon anharmonicity, and nuclear quantum effects (NQE), among others. In this work, we attempt first-principles equation of state prediction for the crystallin… Show more
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