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Erschienen in: Computational Mechanics 4/2021

17.08.2021 | Original Paper

MFNets: data efficient all-at-once learning of multifidelity surrogates as directed networks of information sources

verfasst von: A. A. Gorodetsky, J. D. Jakeman, G. Geraci

Erschienen in: Computational Mechanics | Ausgabe 4/2021

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Abstract

We present an approach for constructing a surrogate from ensembles of information sources of varying cost and accuracy. The multifidelity surrogate encodes connections between information sources as a directed acyclic graph, and is trained via gradient-based minimization of a nonlinear least squares objective. While the vast majority of state-of-the-art assumes hierarchical connections between information sources, our approach works with flexibly structured information sources that may not admit a strict hierarchy. The formulation has two advantages: (1) increased data efficiency due to parsimonious multifidelity networks that can be tailored to the application; and (2) no constraints on the training data—we can combine noisy, non-nested evaluations of the information sources. Numerical examples ranging from synthetic to physics-based computational mechanics simulations indicate the error in our approach can be orders-of-magnitude smaller, particularly in the low-data regime, than single-fidelity and hierarchical multifidelity approaches.

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Fußnoten
1
A directed graph is weakly connected if the graph obtained by replacing the directed edges with undirected ones is connected. In other words, there is a path between every pair of nodes in the graph, if direction of the edge is ignored.
 
4
There are two possible hierarchical orderings. We found that the errors and weight functions obtained using both orderings are almost identical and so not reported.
 
5
The error in the full graph surrogate is dominated by the noise in the data. If noise is removed the error drops below \(1\times 10^{-8}\).
 
6
The absolute standard deviation of the noise is 1, but the relative standard deviation, normalized by \(\Vert u_3\Vert _2\) (the same factor used to normalize the relative error) is \(6.3\times 10^{-4}\). This implies that 3 standard deviations of relative noise is approximately \(2\times 10^{-3}\), which roughly corresponds to the minimum error in Fig. 13.
 
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Metadaten
Titel
MFNets: data efficient all-at-once learning of multifidelity surrogates as directed networks of information sources
verfasst von
A. A. Gorodetsky
J. D. Jakeman
G. Geraci
Publikationsdatum
17.08.2021
Verlag
Springer Berlin Heidelberg
Erschienen in
Computational Mechanics / Ausgabe 4/2021
Print ISSN: 0178-7675
Elektronische ISSN: 1432-0924
DOI
https://doi.org/10.1007/s00466-021-02042-0

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