Capturing Extreme Events in Turbulence using an Extreme Variational Autoencoder

Published: 10 Oct 2024, Last Modified: 10 Oct 2024NeurIPS BDU Workshop 2024 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Turbulence, Spatial extremes, POD, Variational autoencoder
TL;DR: Use an extreme variational autoencoder to reconstruct large-eddy-simulation (LES) data for scalar temperatures from a buoyant turbulent field at a very high Reynolds number.
Abstract: Turbulent flows are characterized by intense generation of turbulent kinetic energy through nonlinear physical processes which cascade from the large- to small-scale structures in a forward energy cascade, which is chaotic in nature, and statistically intermittent. Using a recently developed extreme variational autoencoder (XVAE), the turbulent flow fields are replicated to a high order of accuracy. In this extended abstract, we demonstrate XVAE as a powerful alternative to the classical Proper Orthogonal Decomposition (POD) technique for reconstructing large-eddy-simulation (LES) data for scalar temperatures from a buoyant turbulent field at a high Reynolds number of $10^{10}$.
Submission Number: 107
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