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Interpretable and flexible non-intrusive reduced-order models using reproducing kernel Hilbert spaces

Interpretable and flexible non-intrusive reduced-order models using reproducing kernel Hilbert spaces

来源:Arxiv_logoArxiv
英文摘要

This paper develops an interpretable, non-intrusive reduced-order modeling technique using regularized kernel interpolation. Existing non-intrusive approaches approximate the dynamics of a reduced-order model (ROM) by solving a data-driven least-squares regression problem for low-dimensional matrix operators. Our approach instead leverages regularized kernel interpolation, which yields an optimal approximation of the ROM dynamics from a user-defined reproducing kernel Hilbert space. We show that our kernel-based approach can produce interpretable ROMs whose structure mirrors full-order model structure by embedding judiciously chosen feature maps into the kernel. The approach is flexible and allows a combination of informed structure through feature maps and closure terms via more general nonlinear terms in the kernel. We also derive a computable a posteriori error bound that combines standard error estimates for intrusive projection-based ROMs and kernel interpolants. The approach is demonstrated in several numerical experiments that include comparisons to operator inference using both proper orthogonal decomposition and quadratic manifold dimension reduction.

Alejandro N Diaz、Shane A McQuarrie、John T Tencer、Patrick J Blonigan

数学工程基础科学

Alejandro N Diaz,Shane A McQuarrie,John T Tencer,Patrick J Blonigan.Interpretable and flexible non-intrusive reduced-order models using reproducing kernel Hilbert spaces[EB/OL].(2025-06-11)[2025-06-22].https://arxiv.org/abs/2506.10224.点此复制

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