Convolutional autoencoder for the spatiotemporal latent representation of turbulence

01/31/2023
by   Nguyen Anh Khoa Doan, et al.
0

Turbulence is characterised by chaotic dynamics and a high-dimensional state space, which make the phenomenon challenging to predict. However, turbulent flows are often characterised by coherent spatiotemporal structures, such as vortices or large-scale modes, which can help obtain a latent description of turbulent flows. However, current approaches are often limited by either the need to use some form of thresholding on quantities defining the isosurfaces to which the flow structures are associated or the linearity of traditional modal flow decomposition approaches, such as those based on proper orthogonal decomposition. This problem is exacerbated in flows that exhibit extreme events, which are rare and sudden changes in a turbulent state. The goal of this paper is to obtain an efficient and accurate reduced-order latent representation of a turbulent flow that exhibits extreme events. Specifically, we employ a three-dimensional multiscale convolutional autoencoder (CAE) to obtain such latent representation. We apply it to a three-dimensional turbulent flow. We show that the Multiscale CAE is efficient, requiring less than 10 degrees of freedom than proper orthogonal decomposition for compressing the data and is able to accurately reconstruct flow states related to extreme events. The proposed deep learning architecture opens opportunities for nonlinear reduced-order modeling of turbulent flows from data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/21/2022

Modelling spatiotemporal turbulent dynamics with the convolutional autoencoder echo state network

The spatiotemporal dynamics of turbulent flows is chaotic and difficult ...
research
11/15/2022

On interpretability and proper latent decomposition of autoencoders

The dynamics of a turbulent flow tend to occupy only a portion of the ph...
research
06/25/2020

On the comparison of LES data-driven reduced order approaches for hydroacoustic analysis

In this work, Dynamic Mode Decomposition (DMD) and Proper Orthogonal Dec...
research
04/07/2023

β-Variational autoencoders and transformers for reduced-order modelling of fluid flows

Variational autoencoder (VAE) architectures have the potential to develo...
research
01/24/2023

A predictive physics-aware hybrid reduced order model for reacting flows

In this work, a new hybrid predictive Reduced Order Model (ROM) is propo...
research
09/03/2021

Towards extraction of orthogonal and parsimonious non-linear modes from turbulent flows

We propose a deep probabilistic-neural-network architecture for learning...
research
02/26/2020

Optimization-based modal decomposition for systems with multiple transports

Mode-based model-reduction is used to reduce the degrees of freedom of h...

Please sign up or login with your details

Forgot password? Click here to reset