A surrogate-based optimal likelihood function for the Bayesian calibration of catalytic recombination in atmospheric entry protection materials
Anabel del Val, Olivier P. Le Ma\^itre, Olivier Chazot, Thierry E., Magin, Pietro M. Congedo

TL;DR
This paper introduces a surrogate-based Bayesian framework for accurately estimating catalytic recombination parameters in atmospheric entry materials, improving inference speed and robustness while reducing uncertainty.
Contribution
It develops a novel Bayesian calibration method that incorporates surrogate models and optimization to infer catalytic parameters without wide priors on nuisance variables.
Findings
Achieved over 20% reduction in posterior standard deviation.
Developed a faster, more robust inference procedure.
Provided meaningful posterior distributions for catalytic parameters.
Abstract
This work deals with the inference of catalytic recombination parameters from plasma wind tunnel experiments for reusable thermal protection materials. One of the critical factors affecting the performance of such materials is the contribution to the heat flux of the exothermic recombination reactions at the vehicle surface. The main objective of this work is to develop a dedicated Bayesian framework that allows us to compare uncertain measurements with model predictions which depend on the catalytic parameter values. Our framework accounts for uncertainties involved in the model definition and incorporates all measured variables with their respective uncertainties. The physical model used for the estimation consists of a 1D boundary layer solver along the stagnation line. The chemical production term included in the surface mass balance depends on the catalytic recombination…
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