NANAMar 31

Model order reduction via Lie groups

arXiv:2511.0352071.4h-index: 13
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This work addresses model order reduction for physical systems with non-equivariant dynamics, offering a geometric framework that is incremental but improves accuracy and efficiency in specific domains.

The paper tackles model order reduction for high-dimensional dynamical systems on manifolds by introducing MORLie, a novel framework using Lie groups, which outperforms linear-subspace methods in error bounds and reduces training time from hours to minutes in applications like liver motion reconstruction.

Lie groups and their actions are ubiquitous in the description of physical systems, and we explore implications in the setting of model order reduction (MOR). We present a novel framework of MOR via Lie groups, called MORLie, in which high-dimensional dynamical systems on manifolds are approximated by low-dimensional dynamical systems on Lie groups. In comparison to other Lie group methods we are able to attack non-equivariant dynamics, which are frequent in practical applications, and we provide new non-intrusive MOR methods based on the presented geometric formulation. We also highlight numerically that MORLie has a lower error bound than the Kolmogorov $N$-width, which limits linear-subspace methods. The method is applied to various examples: 1. MOR of a simplified deforming body modeled by noisy point cloud data following a sheering motion, where MORLie outperforms a naive POD approach in terms of accuracy and dimensionality reduction. 2. Reconstructing liver motion during respiration with data from edge detection in MRI scans, where MORLie reaches performance approaching the state of the art, while reducing the training time from hours on a computing cluster to minutes on a mobile workstation. 3. An analytic example showing that the method of freezing is analytically recovered as a special case, showing the generality of the geometric framework.

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