Spectrally Informed Learning of Fluid Flows
Benjamin D. Shaffer, Jeremy R. Vorenberg, and M. Ani Hsieh

TL;DR
This paper introduces a spectrally-informed machine learning approach that leverages spectral properties to extract low-rank models of fluid flows, enhancing prediction accuracy and spectral fidelity.
Contribution
It proposes a novel regularization technique that incorporates spectral knowledge into fluid flow modeling, improving the extraction of low-rank dynamics from high-dimensional data.
Findings
Enhanced prediction accuracy for fluid flows.
Better spectral matching of learned models.
Effective extraction of low-rank structures.
Abstract
Accurate and efficient fluid flow models are essential for applications relating to many physical phenomena including geophysical, aerodynamic, and biological systems. While these flows may exhibit rich and multiscale dynamics, in many cases underlying low-rank structures exist which describe the bulk of the motion. These structures tend to be spatially large and temporally slow, and may contain most of the energy in a given flow. The extraction and parsimonious representation of these low-rank dynamics from high-dimensional data is a key challenge. Inspired by the success of physics-informed machine learning methods, we propose a spectrally-informed approach to extract low-rank models of fluid flows by leveraging known spectral properties in the learning process. We incorporate this knowledge by imposing regularizations on the learned dynamics, which bias the training process towards…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Model Reduction and Neural Networks
