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Sensitivity analysis via Karhunen-Loeve expansion of a random field model: Estimation of Sobol' indices and experimental design

机译:随机场模型Karhunen-Loeve扩展的敏感性分析:索泊索偿指数和实验设计的估算

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We use the Karhunen-Loeve expansion of a random-field model to construct a tensorised Bayesian linear model from which Sobol' sensitivity indices can be estimated straightforwardly. The method combines the advantages of models built from families of orthonormal functions, which facilitate computations, and Gaussian-process models, which offer a lot of flexibility. The posterior distribution of the indices can be derived, and its normal approximation can be used to design experiments especially adapted to their estimation. Implementation details are provided, and values of tuning parameters are indicated that yield precise estimation from a small number of function evaluations. Several illustrative examples are included that show the good performance of the method, in particular in comparison with estimation based on polynomial chaos expansion. (C) 2018 Elsevier Ltd. All rights reserved.
机译:我们使用随机场模型的Karhunen-Loeve扩展来构造一个巨大的贝叶斯线性模型,可以直截了当地估计Sobol'敏感性指数。该方法结合了由正交功能家族构建的模型的优点,便于计算,高斯过程模型,提供了很多灵活性。可以导出索引的后部分布,并且其正常近似可用于设计特别适合于其估计的实验。提供了实现细节,并指示调整参数值,从少量函数评估产生精确估计。包括一些说明性实施例,其显示该方法的良好性能,特别是与基于多项式混沌扩展的估计相比。 (c)2018年elestvier有限公司保留所有权利。

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