2024
DOI: 10.1063/5.0165298
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Learning thermodynamically constrained equations of state with uncertainty

Himanshu Sharma,
Jim A. Gaffney,
Dimitrios Tsapetis
et al.

Abstract: Numerical simulations of high energy-density experiments require equation of state (EOS) models that relate a material’s thermodynamic state variables—specifically pressure, volume/density, energy, and temperature. EOS models are typically constructed using a semi-empirical parametric methodology, which assumes a physics-informed functional form with many tunable parameters calibrated using experimental/simulation data. Since there are inherent uncertainties in the calibration data (parametric uncertainty) and… Show more

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