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arxiv: 1705.03944 · v1 · pith:BHSO3Y7Tnew · submitted 2017-05-10 · 📊 stat.CO

Efficient design of experiments for sensitivity analysis based on polynomial chaos expansions

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keywords designindicessensitivitysobolanalysischaosexpansionsexperiments
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Global sensitivity analysis aims at quantifying respective effects of input random variables (or combinations thereof) onto variance of a physical or mathematical model response. Among the abundant literature on sensitivity measures, Sobol' indices have received much attention since they provide accurate information for most of models. We consider a problem of experimental design points selection for Sobol' indices estimation. Based on the concept of $D$-optimality, we propose a method for constructing an adaptive design of experiments, effective for calculation of Sobol' indices based on Polynomial Chaos Expansions. We provide a set of applications that demonstrate the efficiency of the proposed approach.

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