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A registration method for model order reduction: data compression and geometry reduction (1906.11008v2)

Published 26 Jun 2019 in math.NA and cs.NA

Abstract: We propose a general --- i.e., independent of the underlying equation --- registration method for parameterized Model Order Reduction. Given the spatial domain $\Omega \subset \mathbb{R}d$ and a set of snapshots ${ uk }{k=1}{n{\rm train}}$ over $\Omega$ associated with $n_{\rm train}$ values of the model parameters $\mu1,\ldots, \mu{n_{\rm train}} \in \mathcal{P}$, the algorithm returns a parameter-dependent bijective mapping $\boldsymbol{\Phi}: \Omega \times \mathcal{P} \to \mathbb{R}d$: the mapping is designed to make the mapped manifold ${ u_{\mu} \circ \boldsymbol{\Phi}_{\mu}: \, \mu \in \mathcal{P} }$ more suited for linear compression methods. We apply the registration procedure, in combination with a linear compression method, to devise low-dimensional representations of solution manifolds with slowly-decaying Kolmogorov $N$-widths; we also consider the application to problems in parameterized geometries. We present a theoretical result to show the mathematical rigor of the registration procedure. We further present numerical results for several two-dimensional problems, to empirically demonstrate the effectivity of our proposal.

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