Surrogate-assisted global sensitivity analysis: an overview

Surrogate models are popular tool to approximate the functional relationship of expensive simulation models in multiple scientific and engineering disciplines. Successful use of surrogate models can provide significant savings of computational cost. However, with a variety of surrogate model approac...

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Veröffentlicht in:Structural and multidisciplinary optimization 2020-03, Vol.61 (3), p.1187-1213
Hauptverfasser: Cheng, Kai, Lu, Zhenzhou, Ling, Chunyan, Zhou, Suting
Format: Artikel
Sprache:eng
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Zusammenfassung:Surrogate models are popular tool to approximate the functional relationship of expensive simulation models in multiple scientific and engineering disciplines. Successful use of surrogate models can provide significant savings of computational cost. However, with a variety of surrogate model approaches available in literature, it is a difficult task to select an appropriate one at hand. In this paper, we present an overview of surrogate model approaches with an emphasis of their application for variance-based global sensitivity analysis, including polynomial regression model, high-dimensional model representation, state-dependent parameter, polynomial chaos expansion, Kriging/Gaussian Process, support vector regression, radial basis function, and low rank tensor approximation. The accuracy and efficiency of these approaches are compared with several benchmark examples. The strengths and weaknesses of these surrogate models are discussed, and the recommendations are provided for different types of applications. For ease of implementations, the packages, as well as toolboxes, of surrogate model techniques and their applications for global sensitivity analysis are collected.
ISSN:1615-147X
1615-1488
DOI:10.1007/s00158-019-02413-5