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An efficient and robust adaptive sampling method for polynomial chaos expansion in sparse Bayesian learning framework

机译:稀疏贝叶斯学习框架多项式混沌扩展有效且鲁棒的自适应采样方法

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Sparse polynomial chaos expansion has been widely used to tackle problems of function approximation in the field of uncertain quantification. The accuracy of PCE depends on how to construct the experimental design. Therefore, adaptive sampling methods of designs of experiment are raised. Classic designs of experiment for PCE are based on least-square minimization techniques, where the design space is only defined by the inputs without involving the responses of the system. To overcome this limitation, a novel adaptive sampling method is introduced in sparse Bayesian learning framework. The design point is enriched sequentially by maximizing a generalized expectation of loss function criterion which allows an effective use of all the information available, on which two adaptive strategies are derived to get a balance between the global exploration and the local exposition via the error information from the previous iteration. The numerical results show that the proposed method is superior to classic design of experiment in terms of efficiency and robustness. (C) 2019 Elsevier B.V. All rights reserved.
机译:稀疏多项式混沌扩展已被广泛用于解决不确定量化领域的功能近似问题。 PCE的准确性取决于如何构建实验设计。因此,提高了实验设计的自适应采样方法。 PCE实验的经典设计基于最小二乘最小化技术,其中设计空间仅由输入定义而不涉及系统的响应。为了克服这种限制,在稀疏的贝叶斯学习框架中引入了一种新的自适应采样方法。通过最大化损失函数标准的广义期望来顺序地富集设计点,这允许有效使用可用的所有信息,因此通过错误信息获得两个自适应策略,以通过错误信息获得全局探索与本地展会之间的平衡之前的迭代。数值结果表明,在效率和鲁棒性方面,该方法优于经典的实验设计。 (c)2019 Elsevier B.v.保留所有权利。

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