Quantifying uncertainty in equation-of-state and opacity models
ORAL · Invited
Abstract
Materials properties models – opacity, equation-of-state (EOS), and others – underpin our understanding of condensed matter, high-energy-density and laboratory astrophysics experiments due to their critical role in hydrodynamics simulations. These models are built from a complex combination of first-principles simulations, physics-based approximations, and experimental data, making it difficult to quantify and represent uncertainty. Even state-of-the-art materials properties tables rarely provide uncertainty information, and even when available they usual neglect potentially important contributions like model form error, physical constraints, and systematics. How should the next generation of tabular models represent uncertainty? How can they provide a complete accounting of all uncertainty sources from all sources of information? How can those uncertainties be used to improve first-principles simulations and hydrocode predictions?
In this talk we will describe ongoing work to develop an uncertainty quantification framework for material properties models. Our approach aims to combine first-principles calculations, experiments, and hydrocode simulations in a unified framework to learn uncertainties from data and propagate them into tabular models and hydrocode outputs. We will discuss the key components of our framework, including physics-informed machine learning for EOS, uncertainty-aware tabular model formats, and uncertainty-enabled experimental design and interpretation. Finally, we will demonstrate the application of these components to new laser-driven shock experiments at the Omega laser facility.
In this talk we will describe ongoing work to develop an uncertainty quantification framework for material properties models. Our approach aims to combine first-principles calculations, experiments, and hydrocode simulations in a unified framework to learn uncertainties from data and propagate them into tabular models and hydrocode outputs. We will discuss the key components of our framework, including physics-informed machine learning for EOS, uncertainty-aware tabular model formats, and uncertainty-enabled experimental design and interpretation. Finally, we will demonstrate the application of these components to new laser-driven shock experiments at the Omega laser facility.
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Presenters
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Jim A Gaffney
Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory
Authors
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Jim A Gaffney
Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory
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Suzanne J Ali
Lawrence Livermore Natl Lab
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Connor Krill
Johns Hopkins University
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Gin Li
Johns Hopkins University
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Gennady Miloshevsky
Virginia Commonwealth University
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Peter Muto
Virginia Commonwealth University
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Juniper Savchick
Virginia Commonwealth University
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Himanshu Sharma
Johns Hopkins University
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Michael Shields
Johns Hopkins University
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Philip A Sterne
Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory
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Dimitrios Tsapetis
Johns Hopkins University
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June K Wicks
Johns Hopkins University
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Lin H Yang
Lawrence Livermore Natl Lab
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Zixuan YE
Johns Hopkins University