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A surrogate-based optimal likelihood function for the Bayesian calibration of catalytic recombination in atmospheric entry protection materials

机译:大气入口保护材料催化重组抗贝叶斯校准的基于代理的最佳似然功能

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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 efficiency. As not all the different quantities needed to simulate a reacting boundary layer can be measured or known (such as the flow enthalpy at the inlet boundary), we propose an optimization procedure built on the construction of the likelihood function to determine their most likely values based on the available experimental data. This procedure avoids the need to introduce any a priori estimates on the nuisance quantities, namely, the boundary layer edge enthalpy, wall temperatures, static and dynamic pressures, which would entail the use of very wide priors. Furthermore, we substitute the optimal likelihood of the experimental measurements with a surrogate model to make the inference procedure both faster and more robust. We show that the resulting Bayesian formulation yields meaningful and accurate posterior probability distributions of the catalytic parameters with a reduction of more than 20% of the standard deviation with respect to previous works. We also study the implications of an extension of the experimental procedure on the improvement of the quality of the inference.
机译:该工作涉及来自等离子体风洞实验的催化重组参数的推断,可重复使用的热保护材料。影响这些材料性能的关键因素之一是对车辆表面的放热重组反应的热通量的贡献。这项工作的主要目标是开发专用贝叶斯框架,使我们能够比较不确定的测量与依赖于催化参数值的模型预测。我们的框架占模型定义中涉及的不确定性,并将所有测量变量与各自的不确定性结合起来。用于估计的物理模型包括沿着停滞线的1D边界层求解器组成。所包含在表面质量平衡中的化学生产术语取决于催化重组效率。不是模拟反应边界层所需的所有不同量(例如入口边界处的流动焓),我们提出了一种在概念函数的构建构建的优化过程,以确定基于最可能的值关于可用的实验数据。该程序避免了需要对滋扰量的任何先验估计,即边界层边缘焓,墙面温度,静态和动态压力,这将需要使用非常宽的前沿。此外,我们用代理模型替代实验测量的最佳可能性,使推理程序既快又更加稳健。我们表明所得到的贝叶斯配方产生催化参数的有意义和准确的后验概率分布,减少了与之前作品的标准偏差的20%以上。我们还研究了实验程序延伸的影响,提高了推理质量的提高。

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