Reduced-order modeling of large-scale turbulence using Koopman $\beta$-variational autoencoders
Rakesh Halder, Benet Eiximeno, Oriol Lehmkuhl

TL;DR
This paper introduces a novel reduced-order modeling framework using Koopman $eta$-variational autoencoders to effectively denoise and filter small-scale turbulent structures in large-scale CFD simulations, enabling better long-term flow predictions.
Contribution
The work develops a Koopman $eta$-VAE-based ROM that filters small-scale turbulence and denoises latent variables, improving modeling of chaotic turbulent flows compared to traditional methods.
Findings
Successfully denoised latent variables in turbulent flow data.
Effectively removed small-scale structures from flow reconstructions.
Demonstrated robustness across multiple flow cases.
Abstract
Reduced-order models (ROMs) are very popular for surrogate modeling of full-order computational fluid dynamics (CFD) simulations, allowing for real-time approximation of complex flow phenomena. However, their application to CFD models including large eddy simulation (LES) and direct numerical simulaton (DNS) is limited due to the highly chaotic and multi-scale nature of resolved turbulent flow. Due to the large amounts of noise present in small-scale turbulent structures, error accumulation becomes a major issue, making long-term prediction of unsteady flow infeasible. While linear subspace methods like dynamic mode decomposition (DMD) can be used to pre-process turbulent flow data to remove small-scale structures, this often requires a very large number of modes and a non-trivial mode selection process. In this work, a ROM framework using Koopman -variational autoencoders…
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