Visualization and Selection of Dynamic Mode Decomposition Components for Unsteady Flow
Tim Krake, Stefan Reinhardt, Marcel Hlawatsch, Bernhard Eberhardt,, Daniel Weiskopf

TL;DR
This paper enhances Dynamic Mode Decomposition (DMD) by refining its components to better capture unsteady flow features, enabling more meaningful flow segmentation and interpretation through improved analysis and clustering methods.
Contribution
The paper introduces modified DMD components that improve flow representation, reduce redundancies, and facilitate flow segmentation, advancing the analysis of unsteady flow data.
Findings
Improved DMD components better describe flow dynamics.
Redundancies in DMD are effectively removed.
Flow segmentation aligns with physical flow features.
Abstract
Dynamic Mode Decomposition (DMD) is a data-driven and model-free decomposition technique. It is suitable for revealing spatio-temporal features of both numerically and experimentally acquired data. Conceptually, DMD performs a low-dimensional spectral decomposition of the data into the following components: The modes, called DMD modes, encode the spatial contribution of the decomposition, whereas the DMD amplitudes specify their impact. Each associated eigenvalue, referred to as DMD eigenvalue, characterizes the frequency and growth rate of the DMD mode. In this paper, we demonstrate how the components of DMD can be utilized to obtain temporal and spatial information from time-dependent flow fields. We begin with the theoretical background of DMD and its application to unsteady flow. Next, we examine the conventional process with DMD mathematically and put it in relationship to the…
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