Learning physics-based reduced-order models from data using nonlinear manifolds
Abstract
We present a novel method for learning reduced-order models of dynamical systems using nonlinear manifolds. First, we learn the manifold by identifying nonlinear structure in the data through a general representation learning problem. The proposed approach is driven by embeddings of low-order polynomial form. A projection onto the nonlinear manifold reveals the algebraic structure of the reduced-space system that governs the problem of interest. The matrix operators of the reduced-order model are then inferred from the data using operator inference. Numerical experiments on a number of nonlinear problems demonstrate the generalizability of the methodology and the increase in accuracy that can be obtained over reduced-order modeling methods that employ a linear subspace approximation.
- Publication:
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Chaos
- Pub Date:
- March 2024
- DOI:
- arXiv:
- arXiv:2308.02802
- Bibcode:
- 2024Chaos..34c3122G
- Keywords:
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- REGULAR ARTICLES;
- Mathematics - Numerical Analysis