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A machine learning approach for efficient uncertainty quantification using multiscale methods

机译:一种使用多尺度方法有效不确定性量化的机器学习方法

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Several multiscale methods account for sub-grid scale features using coarse scale basis functions. For example, in the Multiscale Finite Volume method the coarse scale basis functions are obtained by solving a set of local problems over dual-grid cells. We introduce a data-driven approach for the estimation of these coarse scale basis functions. Specifically, we employ a neural network predictor fitted using a set of solution samples from which it learns to generate subsequent basis functions at a lower computational cost than solving the local problems. The computational advantage of this approach is realized for uncertainty quantification tasks where a large number of realizations has to be evaluated. Weattribute the ability to learn these basis functions to the modularity of the local problems and the redundancy of the permeability patches between samples. The proposed method is evaluated on elliptic problems yielding very promising results. (C) 2017 Elsevier Inc. All rights reserved.
机译:几种多尺度方法使用粗略标度基础函数的子网格尺度特征算法。例如,在多尺度有限体积方法中,通过在双网格单元上求解一组局部问题来获得粗略刻度基函数。我们介绍了一种数据驱动方法,用于估计这些粗略标度基本函数。具体地,我们采用了使用一组解决方案样本的神经网络预测器,其从中学习以较低的计算成本生成后续基本函数而不是解决局部问题。这种方法的计算优点是实现了必须评估大量实现的不确定性量化任务。对学习这些基础函数的能力进行了追击到当地问题的模块化以及样品之间的渗透斑块的冗余。所提出的方法是对椭圆问题的评估产生非常有前途的结果。 (c)2017年Elsevier Inc.保留所有权利。

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