Conditional space-time POD extensions for stability and prediction analysis
Spencer Stahl, Chitrarth Prasad, Hemanth Goparaju, Datta Gaitonde

TL;DR
This paper introduces advanced extensions of Conditional space-time POD, combined with DMD, to analyze flow stability, predict extreme events, and diagnose flow instabilities in complex turbulent flows, enhancing data-driven flow analysis tools.
Contribution
It develops new CPOD-DMD methods and a multi-resolution framework for detailed flow stability analysis and real-time prediction, surpassing existing modal decomposition techniques.
Findings
CPOD-DMD reproduces spectral POD modes for tonal flow instabilities.
CPOD-mrDMD provides refined cause-and-effect stability analysis.
Real-time flow prediction demonstrated on turbulent and aeroacoustic flows.
Abstract
The correlation and extraction of coherent structures from a turbulent flow is a principle objective of data-driven modal decomposition techniques. The Conditional space-time Proper Orthogonal Decomposition (CPOD) offers insight into transient dynamics, revealing the causation of specific flow phenomenon - or events, in a customizable manner. This work exploits the temporal evolution of CPOD modes in a reduced subspace, resulting in new extensions and adaptations that meet or exceed the capabilities of other decomposition methods. Chiefly, it is demonstrated that the subsequent application of dynamic mode decomposition (DMD) to CPOD modes, provides a flexible tool to investigate targeted flow instabilities, both tonal and convective in nature. By extending the CPOD time-horizon to educe the former type, it is shown that CPOD-DMD can exactly reproduce Spectral POD modes. Regarding the…
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Taxonomy
TopicsAerodynamics and Acoustics in Jet Flows · Fluid Dynamics and Vibration Analysis · Model Reduction and Neural Networks
