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  4. Plug-and-play adaptive surrogate modeling of parametric nonlinear dynamics in frequency domain
 
preprint

Plug-and-play adaptive surrogate modeling of parametric nonlinear dynamics in frequency domain

Huwiler, Phillip  
•
Pradovera, Davide  
•
Schiffmann, Jürg Alexander  
2023

We present an algorithm for constructing efficient surrogate frequency-domain models of (nonlinear) parametric dynamical systems in a non-intrusive way. To capture the dependence of the underlying system on frequency and parameters, our proposed approach combines rational approximation and smooth interpolation. In the approximation effort, locally adapted sparse grids are applied to effectively explore the parameter domain even if the number of parameters is modest or high. Adaptivity is also employed to build rational approximations that efficiently capture the frequency dependence of the problem. These two features enable our method to build surrogate models that achieve a user-prescribed approximation accuracy, without wasting too many resources in ``oversampling'' the frequency and parameter domains. Thanks to its non-intrusiveness, our proposed method, as opposed to projection-based techniques for model order reduction, can be applied regardless of the complexity of the underlying physical model. Notably, our algorithm for adaptive sampling can be used even when prior knowledge of the problem structure is not available. To showcase the effectiveness of our approach, we apply it in the study of an aerodynamic bearing. Our method allows us to build surrogate models that adequately identify the bearing's behavior with respect to both design and operational parameters, while still achieving significant speedups.

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Type
preprint
DOI
10.1002/nme.7487
Author(s)
Huwiler, Phillip  
Pradovera, Davide  
Schiffmann, Jürg Alexander  
Date Issued

2023

Publisher

Wiley

Subjects

model order reduction

•

gas bearing

•

frequency domain

•

nonlinear dynamics

•

high-dimensional approximation

Editorial or Peer reviewed

NON-REVIEWED

Written at

EPFL

EPFL units
LAMD  
RelationURL/DOI

IsSupplementedBy

https://github.com/pradovera/rational_lasg_matlab
Available on Infoscience
February 9, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/203543
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