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A nonparametric belief propagation method for uncertainty quantification with applications to flow in random porous media

机译:用于不确定性定量的非参数置信传播方法及其在随机多孔介质中流动的应用

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摘要

A probabilistic graphical model approach to uncertainty quantification for flows in random porous media is introduced. Model reduction techniques are used locally in the graph to represent the random permeability. Then the conditional distribution of the multi-output responses on the low dimensional representation of the permeability field is factorized into a product of local potential functions. An expectation-maximization algorithm is used to learn the nonparametric representation of these potentials using the given input/output data. We develop a nonparametric belief propagation method for uncertainty quantification by employing the loopy belief propagation algorithm. The nonparametric nature of our model is able to capture non-Gaussian features of the response. The proposed framework can be used as a surrogate model to predict the responses for new input realizations as well as our confidence on these predictions. Numerical examples are presented to demonstrate the accuracy and efficiency of the proposed framework for solving uncertainty quantification problems in flows through porous media using stationary and non-stationary permeability fields.
机译:介绍了一种用于随机多孔介质中流量不确定性量化的概率图形模型方法。模型还原技术在图中局部使用,以表示随机渗透率。然后,将渗透率场的低维表示上的多输出响应的条件分布分解为局部势函数的乘积。期望最大化算法用于使用给定的输入/输出数据来学习这些电势的非参数表示。我们采用循环置信度传播算法,开发了一种用于不确定性量化的非参数置信度传播方法。我们模型的非参数性质能够捕获响应的非高斯特征。所提出的框架可以用作替代模型,以预测新输入实现的响应以及我们对这些预测的信心。数值算例表明了所提出的框架的准确性和效率,该框架用于利用固定和非平稳渗透率场解决流经多孔介质的不确定性量化问题。

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