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Deep Variational Free Energy Approach to Dense Hydrogen

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arxiv 2209.06095 v2 pith:AXYQXP3S submitted 2022-09-13 cond-mat.str-el cs.LGphysics.comp-ph

Deep Variational Free Energy Approach to Dense Hydrogen

classification cond-mat.str-el cs.LGphysics.comp-ph
keywords denseenergyfreehydrogenmodelvariationalapproachcalculation
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We developed a deep generative model-based variational free energy approach to the equations of state of dense hydrogen. We employ a normalizing flow network to model the proton Boltzmann distribution and a fermionic neural network to model the electron wave function at given proton positions. By jointly optimizing the two neural networks we reached a comparable variational free energy to the previous coupled electron-ion Monte Carlo calculation. The predicted equation of state of dense hydrogen under planetary conditions is denser than the findings of ab initio molecular dynamics calculation and empirical chemical model. Moreover, direct access to the entropy and free energy of dense hydrogen opens new opportunities in planetary modeling and high-pressure physics research.

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