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A Computational Statistics Approach to Stochastic Inverse Problems and Uncertainty Quantification in Heat Transfer

机译:传热中随机反问题和不确定性量化的计算统计方法

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摘要

As most engineering systems and processes operate in an uncertain environment, it becomes increasingly important to address their analysis and inverse design in a stochastic manner using statistical data-driven methods. Recent advances in computational Bayesian and spatial statistics enable complete and efficient solution procedures to such problems. Herein, a novel framework based on Bayesian inference is presented for the solution of stochastic inverse problems in heat transfer. The posterior probability density function (PPDF) of unknowns (modeled as random variables or stochastic processes), such as material thermal properties and boundary heat flux, is computed given finite set of thermocouple temperature measurements. Markov Chain Monte Carlo (MCMC) algorithms are exploited to obtain estimates of statistics of random unknowns. A parameter estimation problem is first solved using simple, hierarchical and augmented Bayesian models. Boundary heat flux reconstruction in heat conduction is then studied. Simulation results demonstrate the great potential of applying a Bayesian approach to stochastic estimation and design problems. Although discussed in the context of thermal systems, the methodology presented is general and applicable to design and estimation problems in diverse areas of engineering.
机译:随着大多数工程系统和过程在不确定的环境中运行,使用统计数据驱动的方法以随机方式解决其分析和逆向设计变得越来越重要。计算贝叶斯和空间统计的最新进展使此类问题的解决方案更完整,更有效。在此,提出了一种基于贝叶斯推理的新颖框架,用于求解传热中的随机逆问题。给定有限的热电偶温度测量值,可以计算未知数(建模为随机变量或随机过程)的后验概率密度函数(PPDF),例如材料的热特性和边界热通量。利用马尔可夫链蒙特卡洛(MCMC)算法来获得对随机未知数统计量的估计。首先使用简单的,分层的和增强的贝叶斯模型解决参数估计问题。然后研究了热传导中的边界热通量重建。仿真结果证明了将贝叶斯方法应用于随机估计和设计问题的巨大潜力。尽管在热系统的背景下进行了讨论,但所提供的方法是通用的,适用于工程各个领域的设计和估算问题。

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