Regression Trees on Grassmann Manifold for Adapting Reduced-Order Models
Xiao Liu, Xinchao Liu

TL;DR
This paper introduces a novel regression tree approach on Grassmann manifolds to adapt reduced-order models by learning the parameter-to-basis mapping, improving robustness across varying parameters.
Contribution
It proposes a new method using regression trees on Grassmann manifolds to enhance the adaptability of ROMs for different parameters, outperforming existing interpolation techniques.
Findings
The method accurately maps parameters to POD bases.
It outperforms traditional basis interpolation methods.
The approach effectively adapts ROMs to new parameter settings.
Abstract
Low dimensional and computationally less expensive Reduced-Order Models (ROMs) have been widely used to capture the dominant behaviors of high-dimensional systems. A ROM can be obtained, using the well-known Proper Orthogonal Decomposition (POD), by projecting the full-order model to a subspace spanned by modal basis modes which are learned from experimental, simulated or observational data, i.e., training data. However, the optimal basis can change with the parameter settings. When a ROM, constructed using the POD basis obtained from training data, is applied to new parameter settings, the model often lacks robustness against the change of parameters in design, control, and other real-time operation problems. This paper proposes to use regression trees on Grassmann Manifold to learn the mapping between parameters and POD bases that span the low-dimensional subspaces onto which…
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Taxonomy
TopicsModel Reduction and Neural Networks · Non-Destructive Testing Techniques · Hydraulic and Pneumatic Systems
