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Adaptive sparse polynomial chaos expansions for global sensitivity analysis based on support vector regression

机译:基于支持向量回归的自适应稀疏多项式混沌展开用于全局灵敏度分析

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摘要

In the context of uncertainty analysis, Polynomial chaos expansion (PCE) has been proven to be a powerful tool for developing meta-models in a wide range of applications, especially for sensitivity analysis. But the computational cost of classic PCE grows exponentially with the size of the input variables. An efficient approach to address this problem is to build a sparse PCE. In this paper, a full PCE meta-model is first developed based on support vector regression (SVR) technique using an orthogonal polynomials kernel function. Then an adaptive algorithm is proposed to select the significant basis functions from the kernel function. The selection criterion is based on the variance contribution of each term to the model output. In the adaptive algorithm, an elimination procedure is used to delete the nonsignificant bases, and a selection procedure is used to select the important bases. Due to the structural risk minimization principle employing by SVR model, the proposed method provides better generalization ability compared to the common least square regression algorithm. The proposed method is examined by several examples and the global sensitivity analysis is performed. The results show that the proposed method establishes accurate meta-model for global sensitivity analysis of complex models. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在不确定性分析的背景下,多项式混沌扩展(PCE)已被证明是在广泛的应用程序中开发元模型的强大工具,尤其是在灵敏度分析中。但是,经典PCE的计算成本随输入变量的大小呈指数增长。解决此问题的有效方法是构建稀疏的PCE。在本文中,首先基于支持向量回归(SVR)技术,使用正交多项式核函数,开发了完整的PCE元模型。然后提出一种自适应算法,从核函数中选择有效基函数。选择标准基于每个项对模型输出的方差贡献。在自适应算法中,使用消除程序来删除不重要的碱基,并且使用选择程序来选择重要的碱基。由于SVR模型采用了结构风险最小化原理,因此与通用最小二乘回归算法相比,该方法具有更好的泛化能力。通过几个实例对提出的方法进行了研究,并进行了全局灵敏度分析。结果表明,该方法为复杂模型的全局敏感性分析建立了准确的元模型。 (C)2017 Elsevier Ltd.保留所有权利。

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