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Bayesian inference method for model validation and confidence extrapolation

机译:用于模型验证和置信度推断的贝叶斯推理方法

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摘要

This paper presents a Bayesian-hypothesis-testing-based methodology for model validation and confidence extrapolation under uncertainty, using limited test data. An explicit expression of the Bayes factor is derived for the interval hypothesis testing. The interval method is compared with the Bayesian point null hypothesis testing approach. The Bayesian network with Markov Chain Monte Carlo simulation and Gibbs sampling is explored for extrapolating the inference from the validated domain at the component level to the untested domain at the system level. The effect of the number of experiments on the confidence in the model validation decision is investigated. The probabilities of Type I and Type II errors in decision-making during the model validation and confidence extrapolation are quantified. The proposed methodologies are applied to a structural mechanics problem. Numerical results demonstrate that the Bayesian methodology provides a quantitative approach to facilitate rational decisions in model validation and confidence extrapolation under uncertainty.
机译:本文提出了一种基于贝叶斯假设检验的方法,用于使用有限的测试数据进行不确定性下的模型验证和置信外推。贝叶斯因子的明确表达式可用于区间假设检验。将区间方法与贝叶斯点零假设检验方法进行了比较。探索了具有马尔可夫链蒙特卡罗模拟和Gibbs采样的贝叶斯网络,以将从组件级别的有效域到系统级别的未经测试的域的推断推算出来。研究了实验次数对模型验证决策的置信度的影响。在模型验证和置信度推断过程中,对决策中I型和II型错误的概率进行了量化。所提出的方法被应用于结构力学问题。数值结果表明,贝叶斯方法为不确定性下的模型验证和置信度推断提供了一种合理的决策方法。

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