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Estimating material properties under extreme conditions by using Bayesian model calibration with functional outputs

机译:通过使用具有功能输出的贝叶斯模型校准在极端条件下估算材料特性

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摘要

Dynamic material properties experiments provide access to the most extreme temperatures and pressures attainable in a laboratory setting; the data from these experiments are often used to improve our understanding of material models at these extreme conditions. We apply Bayesian model calibration to dynamic material property applications where the experimental output is a function: velocity over time. This framework can accommodate more uncertainties and facilitate analysis of new types of experiments relative to techniques traditionally used to analyse dynamic material experiments. However, implementation of Bayesian model calibration requires more sophisticated statistical techniques, because of the functional nature of the output as well as parameter and model discrepancy identifiability. We propose a novel Bayesian model calibration process to simplify and improve the estimation of the material property calibration parameters. Specifically, we propose scaling the likelihood function by an effective sample size rather than modelling the auto-correlation function to accommodate the functional output. Additionally, we propose sensitivity analyses by using the notion of 'modularization' to assess the effect of experiment-specific nuisance input parameters on estimates of the physical parameters. The Bayesian model calibration framework proposed is applied to dynamic compression of tantalum to extreme pressures, and we conclude that the procedure results in simple, fast and valid inferences on the material properties for tantalum.
机译:动态材料特性实验提供对实验室环境中最极端的温度和压力的进入;来自这些实验的数据通常用于改善我们对这些极端条件的材料模型的理解。我们将贝叶斯模型校准应用于动态材料性能应用,其中实验输出是函数:速度随着时间的推移。该框架可以采取更多的不确定性,并促进相对于传统上用于分析动态材料实验的技术的新型实验的分析。然而,由于输出的功能性以及参数和模型差异可识别性,实现贝叶斯模型校准的实施需要更复杂的统计技术。我们提出了一种新颖的贝叶斯模型校准过程,简化和改进了材料性能校准参数的估计。具体而言,我们提出通过有效的样本大小来缩放似然函数,而不是建模自动关联功能以适应功能输出。此外,我们通过使用“模块化”的概念来评估实验特定的滋扰输入参数对物理参数估计的影响来提出敏感性分析。提出的贝叶斯模型校准框架应用于动态压缩钽至极端压力,我们得出结论,程序导致对钽材料性质的简单,快速和有效的推论。

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