4.7 Article

Ensemble of surrogates

Journal

STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION
Volume 33, Issue 3, Pages 199-216

Publisher

SPRINGER
DOI: 10.1007/s00158-006-0051-9

Keywords

multiple surrogate models; polynomial response surfaces; kriging; radial basis neural networks

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The custom in surrogate-based modeling of complex engineering problems is to fit one or more surrogate models and select the one surrogate model that performs best. In this paper, we extend the utility of an ensemble of surrogates to (1) identify regions of possible high errors at locations where predictions of surrogates widely differ, and (2) provide a more robust approximation approach. We explore the possibility of using the best surrogate or a weighted average surrogate model instead of individual surrogate models. The weights associated with each surrogate model are determined based on the errors in surrogates. We demonstrate the advantages of an ensemble of surrogates using analytical problems and one engineering problem. We show that for a single problem the choice of test surrogate can depend on the design of experiments.

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