journal article Aug 01, 2025

Physics-informed non-intrusive reduced-order modeling of parameterized dynamical systems

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Published
Aug 01, 2025
Vol/Issue
443
Pages
118045
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Funding
European Commission Award: 801505
Fonds De La Recherche Scientifique - FNRS Award: WEL-T-CR-2023 A-07
Université Libre de Bruxelles
Cite This Article
Himanshu Dave, Léo Cotteleer, Alessandro Parente (2025). Physics-informed non-intrusive reduced-order modeling of parameterized dynamical systems. Computer Methods in Applied Mechanics and Engineering, 443, 118045. https://doi.org/10.1016/j.cma.2025.118045