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Combining Integral Transforms and Bayesian Inference in the Simultaneous Identification of Variable Thermal Conductivity and Thermal Capacity in Heterogeneous Media

机译:结合积分变换和贝叶斯推断,同时识别非均质介质中的可变导热系数和热容

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摘要

This work presents the combined use of the integral transform method, for the direct problem solution, and of Bayesian inference, for the inverse problem analysis, in the simultaneous estimation of spatially variable thermal conductivity and thermal capacity for one-dimensional heat conduction within heterogeneous media. The direct problem solution is analytically obtained via integral transforms and the related eigenvalue problem is solved by the generalized integral transform technique (GITT), offering a fast, precise, and robust solution for the transient temperature field. The inverse problem analysis employs a Markov chain Monte Carlo (MCMC) method, through the implementation of the Metropolis-Hastings sampling algorithm. Instead of seeking the functions estimation in the form of local values for the thermal conductivity and capacity, an alternative approach is employed based on the eigenfunction expansion of the thermophysical properties themselves. Then, the unknown parameters become the corresponding series coefficients for the properties eigenfunction expansions. Simulated temperatures obtained via integral transforms are used in the inverse analysis, for a prescribed concentration distribution of the dispersed phase in a heterogeneous media such as particle filled composites. Available correlations for the thermal conductivity and theory of mixtures relations for the thermal capacity are employed to produce the simulated results with high precision in the direct problem solution, while eigenfunction expansions with reduced number of terms are employed in the inverse analysis itself, in order to avoid the inverse crime. Gaussian distributions were used as priors for the parameter estimation procedure. In addition, simulated results with different randomly generated errors were employed in order to test the inverse analysis robustness.
机译:这项工作提出了积分变换方法(用于直接问题解决方案)和贝叶斯推理(用于贝叶斯推理)用于逆问题分析的组合用法,用于同时估算非均质介质中一维热传导的空间可变导热系数和热容。通过积分变换来分析直接问题的解决方案,并通过广义积分变换技术(GITT)解决相关的特征值问题,从而为瞬态温度场提供了一种快速,精确且鲁棒的解决方案。通过Metropolis-Hastings采样算法的实现,逆问题分析采用了马尔可夫链蒙特卡洛(MCMC)方法。代替以热导率和热容量的局部值的形式寻求功能估计,而是基于热物理性质本身的本征函数扩展而采用替代方法。然后,未知参数成为属性本征函数展开的相应级数。通过积分变换获得的模拟温度用于反分析中,用于在异质介质(例如颗粒填充的复合材料)中分散相的规定浓度分布。在直接问题解决方案中,利用热导率的可用相关性和热容量的混合关系理论来产生高精度的模拟结果,而在逆分析本身中使用具有减少项数的本征函数展开式来避免反犯罪。高斯分布用作参数估计过程的先验。另外,采用具有不同随机产生误差的模拟结果来测试逆分析的鲁棒性。

著录项

  • 来源
    《Journal of Heat Transfer》 |2011年第11期|p.111301.1-111301.10|共10页
  • 作者单位

    LTTC—Laboratory of Transmission and Technology of Heat, Mechanical Engineering Department - Escola Polittaiica & COPPE,Universidade Federal do Rio de Janeiro, UFRJ,Cx. Postal 68503—Cidade Universitaria,21945-970 Rio de Janeiro, RJ, Brasil;

    LTTC—Laboratory of Transmission and Technology of Heat, Mechanical Engineering Department - Escola Polittaiica & COPPE,Universidade Federal do Rio de Janeiro, UFRJ,Cx. Postal 68503—Cidade Universitaria,21945-970 Rio de Janeiro, RJ, Brasil;

    LTTC—Laboratory of Transmission and Technology of Heat, Mechanical Engineering Department - Escola Polittaiica & COPPE,Universidade Federal do Rio de Janeiro, UFRJ,Cx. Postal 68503—Cidade Universitaria,21945-970 Rio de Janeiro, RJ, Brasil;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    heat conduction; integral transforms; inverse problem; bayesian inference; monte carlo markov chain (MCMC); thermophysical properties; heterogeneous media; dispersed systems;

    机译:导热积分变换反问题贝叶斯推理;蒙特卡罗马尔可夫链(MCMC);热物理性质;异构介质;分散系统;

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