Metadata only
Datum
2021Typ
- Journal Article
ETH Bibliographie
yes
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Abstract
Constructing approximations that can accurately mimic the behavior of complex models at reduced computational costs is an important aspect of uncertainty quantification. Despite their flexibility and efficiency, classical surrogate models such as kriging or polynomial chaos expansions tend to struggle with highly nonlinear, localized, or nonstationary computational models. We hereby propose a novel sequential adaptive surrogate modeling method based on recursively embedding locally spectral expansions. It is achieved by means of disjoint recursive partitioning of the input domain, which consists in sequentially splitting the latter into smaller subdomains, and constructing simpler local spectral expansions in each, exploiting the trade-off complexity vs. locality. The resulting expansion, which we refer to as "stochastic spectral embedding" (SSE), is a piecewise continuous approximation of the model response that shows promising approximation capabilities, and good scaling with both the problem dimension and the size of the training set. We finally show how the method compares favorably against state-of-the-art sparse polynomial chaos expansions on a set of models with different complexity and input dimension. © 2021 by Begell House, Inc. Mehr anzeigen
Publikationsstatus
publishedZeitschrift / Serie
International Journal for Uncertainty QuantificationBand
Seiten / Artikelnummer
Verlag
Begell HouseThema
Stochastic spectral embedding; Surrogate modeling; Spectral expansions; Sparse regression; Uncertainty quantificationOrganisationseinheit
03962 - Sudret, Bruno / Sudret, Bruno
ETH Bibliographie
yes
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