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Weighted Bayesian uncertainty quantification for the high explosive reactants using limited data

Bayesian uncertainty analysis is a highly effective tool for estimating model uncertainty, thereby improving the prediction ability with limited data. The data quality plays a role in uncertainty analysis. This… Click to show full abstract

Bayesian uncertainty analysis is a highly effective tool for estimating model uncertainty, thereby improving the prediction ability with limited data. The data quality plays a role in uncertainty analysis. This paper presents a novel approach to assess the quality of limited experiment data for high explosives. By assigning varying weights to the data based on their quality, we adopt a Bayesian statistical framework to quantify the uncertainties associated with the reactant equation of state for high explosives. The resulting quantification not only elucidates the current physical knowledge but also paves the way for more informed experimental and simulation strategies in future studies. The technique employed in this paper is not limited to high explosives and could be potentially used for uncertainty quantification of other materials.

Keywords: quantification; limited data; uncertainty quantification; uncertainty; bayesian uncertainty; high explosives

Journal Title: AIP Advances
Year Published: 2025

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