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A Bayesian framework for functional calibration of expensive computational models through non-isometric matching

机译:通过非等距匹配的昂贵计算模型功能校准的贝叶斯框架

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摘要

We study statistical calibration, i.e., adjusting features of a computational model that are not observable or controllable in its associated physical system. We focus on functional calibration, which arises in many manufacturing processes where the unobservable features, called calibration variables, are a function of the input variables. A major challenge in many applications is that computational models are expensive and can only be evaluated a limited number of times. Furthermore, without making strong assumptions, the calibration variables are not identifiable. We propose Bayesian Non-isometric Matching Calibration (BNMC) that allows calibration of expensive computational models with only a limited number of samples taken from a computational model and its associated physical system. BNMC replaces the computational model with a dynamic Gaussian process whose parameters are trained in the calibration procedure. To resolve the identifiability issue, we present the calibration problem from a geometric perspective of non-isometric curve to surface matching, which enables us to take advantage of combinatorial optimization techniques to extract necessary information for constructing prior distributions. Our numerical experiments demonstrate that in terms of prediction accuracy BNMC outperforms, or is comparable to, other existing calibration frameworks.
机译:我们研究统计校准,即调整在其相关的物理系统中不可观察或控制的计算模型的特征。我们专注于功能校准,它在许多制造过程中出现,其中不可接受的功能,称为校准变量,是输入变量的函数。许多应用中的主要挑战是计算模型昂贵,只能评估有限的次数。此外,在没有强大的假设的情况下,校准变量不可识别。我们提出贝叶斯非等距匹配校准(BNMC),允许校准昂贵的计算模型,只有有限数量的来自计算模型及其相关的物理系统。 BNMC用动态高斯进程替换计算模型,该过程在校准过程中培训参数。为了解决可识别性问题,我们将校准问题从非等距曲线的几何视角呈现到表面匹配,这使我们能够利用组合优化技术来提取用于构建现有分布的必要信息。我们的数值实验表明,就预测精度BNMC优于其他现有校准框架而言。

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