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首页> 外文期刊>Inverse Problems in Science & Engineering >A Generalized Polynomial Chaos-Based Method for Efficient Bayesian Calibration of Uncertain Computational Models
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A Generalized Polynomial Chaos-Based Method for Efficient Bayesian Calibration of Uncertain Computational Models

机译:不确定计算模型的有效贝叶斯校准的基于广义多项式混沌的方法

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摘要

This paper addresses the Bayesian calibration of dynamic models with parametric and structural uncertainties, in particular where the uncertain parameters are unknown/poorly known spatio-temporally varying subsystem models. Independent stationary Gaussian processes with uncertain hyper-parameters describe uncertainties of the model structure and parameters, while Karhunen-Loeve expansion is adopted to spectrally represent these Gaussian processes. The Karhunen-Loeve expansion of a prior Gaussian process is projected on a generalized Polynomial Chaos basis, whereas intrusive Galerkin projection is utilized to calculate the associated coefficients of the simulator output. Bayesian inference is used to update the prior probability distribution of the generalized Polynomial Chaos basis, which along with the chaos expansion coefficients represent the posterior probability distribution. The proposed method is demonstrated for calibration of a simulator of quasi-one-dimensional flow through a divergent nozzle with uncertain nozzle area profile. The posterior distribution of the nozzle area profile and the hyper-parameters obtained using the proposed method are found to match closely with the direct Markov Chain Monte Carlo-based implementation of the Bayesian framework. Efficacy of the proposed method is demonstrated for various choices of prior. Posterior hyper-parameters of the model structural uncertainty are shown to quantify acceptability of the simulator model.
机译:本文针对具有参数和结构不确定性的动力学模型进行贝叶斯校准,尤其是在不确定参数未知/时空变化的子系统模型未知的情况下。具有不确定超参数的独立平稳高斯过程描述了模型结构和参数的不确定性,而采用Karhunen-Loeve展开来频谱表示这些高斯过程。先前的高斯过程的Karhunen-Loeve展开是在广义多项式混沌的基础上进行投影的,而侵入式Galerkin投影用于计算模拟器输出的相关系数。贝叶斯推理用于更新广义多项式混沌基的先验概率分布,该概率分布与混沌扩展系数一起表示后验概率分布。证明了所提出的方法用于校准通过不确定喷嘴面积分布的发散喷嘴的准一维流动的模拟器。发现喷嘴面积轮廓的后验分布和使用所提出的方法获得的超参数与贝叶斯框架的直接基于马尔可夫链蒙特卡罗的实现方式非常匹配。证明了所提方法对先验的各种选择的有效性。显示了模型结构不确定性的后部超参数,以量化模拟器模型的可接受性。

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