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A generalized multi-fidelity simulation method using sparse polynomial chaos expansion

机译:稀疏多项式混沌扩展的广义多保真仿真方法

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The polynomial chaos expansion (PCE) method has received considerable attention in uncertainty quantification (UQ). Nevertheless, it is well known that the computational cost of PCE becomes expensive, or even unaffordable for high-dimensional problems (i.e., curse of dimensionality). To alleviate the computational burden, many multi-fidelity PCE methods have been proposed, which work by approximating the high-fidelity (HF) model with the sum of a low-fidelity (LF) model and a correction function. Although the current multi-fidelity PCE methods have proven to be effective in the examples they tested, their accuracy has a strong dependence on the LF model selection. Aimed at this issue, we develop a generalized multi-fidelity PCE (GMF-PCE) using the control variate method. Specifically, an adjustable coefficient is assigned to the LF model and its optimal value is theoretically derived. Furthermore, a flexible yet still simple enough way is provided to implement the developed method, i.e., the sparse PCE based on the least angle regression (LAR) is employed to approximate the LF model, and then the subset of LF-PCE expansion is automatically detected using LAR and corrected via HF computations. Two classic algebraic examples for UQ, namely the borehole problem and the Ishigami function, as well as an unsaturated flow and heat transport problem are used to examine the performance of GMF-PCE. The results show that with the same computational cost, GMF-PCE can achieve much higher accuracy compared to the sparse LAR-based PCE and MF-PCE (non-generalized version). (C) 2021 Elsevier B.V. All rights reserved.
机译:多项式混沌展开(PCE)方法在不确定性量化(UQ)中受到了广泛关注。然而,众所周知,对于高维问题(即维度诅咒),PCE的计算成本变得昂贵,甚至是负担不起的。为了减轻计算负担,许多多保真度PCE方法被提出,其工作原理是用一个低保真度(LF)模型和一个校正函数的和来近似高保真(HF)模型。尽管目前的多保真度PCE方法在他们测试的示例中已被证明是有效的,但它们的准确性强烈依赖于LF模型的选择。针对这个问题,我们使用控制变量方法开发了一种广义多保真PCE(GMF-PCE)。具体来说,为LF模型指定一个可调系数,并从理论上推导出其最佳值。此外,还提供了一种灵活但仍然足够简单的方法来实现所开发的方法,即使用基于最小角度回归(LAR)的稀疏PCE来近似LF模型,然后使用LAR自动检测LF-PCE扩展的子集,并通过HF计算进行校正。用两个经典的UQ代数例子,即钻孔问题和Ishigami函数,以及一个非饱和流动和热传输问题来检验GMF-PCE的性能。结果表明,在计算量相同的情况下,GMF-PCE比基于稀疏LAR的PCE和MF-PCE(非广义版本)具有更高的精度。(c)2021爱思唯尔B.V.保留所有权利。

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