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An adaptive local reduced basis method for solving PDEs with uncertain inputs and evaluating risk

机译:求解输入不确定的偏微分方程并评估风险的自适应局部约简方法

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Many physical systems are modeled using partial differential equations (PDEs) with uncertain or random inputs. For such systems, naively propagating a fixed number of samples of the input probability law (or an approximation thereof) through the PDE is often inadequate to accurately quantify the "risk" associated with critical system responses. In this paper, we develop a goal-oriented, adaptive sampling and local reduced basis approximation for PDEs with random inputs. Our method determines a set of samples and an associated (implicit) Voronoi partition of the parameter domain on which we build local reduced basis approximations of the PDE solution. The samples are selected in an adaptive manner using an a posteriori error indicator. A notable advantage of the proposed approach is that the computational cost of the approximation during the adaptive process remains constant. We provide theoretical error bounds for our approximation and numerically demonstrate the performance of our method when compared to widely used adaptive sparse grid techniques. In addition, we tailor our approach to accurately quantify the risk of quantities of interest that depend on the PDE solution. We demonstrate our method on an advection-diffusion example and a Helmholtz example. (C) 2018 Elsevier B.V. All rights reserved.
机译:许多物理系统是使用具有不确定或随机输入的偏微分方程(PDE)建模的。对于这样的系统,仅仅通过PDE幼稚地传播固定数量的输入概率定律样本(或其近似值)通常不足以准确地量化与关键系统响应相关的“风险”。在本文中,我们为具有随机输入的PDE开发了一种面向目标的自适应采样和局部约简方法。我们的方法确定了一组样本以及参数域的关联(隐式)Voronoi分区,在该分区上我们构建了PDE解决方案的局部约简近似。使用后验误差指示符以自适应方式选择样本。所提出的方法的显着优点是自适应过程中的近似计算成本保持恒定。我们提供了近似的理论误差范围,并与广泛使用的自适应稀疏网格技术进行了数值比较,证明了我们方法的性能。此外,我们调整了方法,以准确量化取决于PDE解决方案的感兴趣数量的风险。我们在对流扩散实例和亥姆霍兹实例上演示了我们的方法。 (C)2018 Elsevier B.V.保留所有权利。

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