Modelling spatiotemporal turbulent dynamics with the convolutional autoencoder echo state network
Alberto Racca, Nguyen Anh Khoa Doan, Luca Magri

TL;DR
This paper introduces a novel reduced-order model combining a convolutional autoencoder and echo state network to efficiently predict complex turbulent flow dynamics with high accuracy and significantly reduced computational cost.
Contribution
The paper presents a new CAE-ESN model that decomposes turbulent flow into spatial and temporal components, enabling accurate, stable, and computationally efficient predictions of turbulent dynamics.
Findings
Latent space has less than 1% of the degrees of freedom of the physical space.
Accurately predicts flow in quasiperiodic and turbulent regimes.
Model is robust across different Reynolds numbers.
Abstract
The spatiotemporal dynamics of turbulent flows is chaotic and difficult to predict. This makes the design of accurate and stable reduced-order models challenging. The overarching objective of this paper is to propose a nonlinear decomposition of the turbulent state for a reduced-order representation of the dynamics. We divide the turbulent flow into a spatial problem and a temporal problem. First, we compute the latent space, which is the manifold onto which the turbulent dynamics live (i.e., it is a numerical approximation of the turbulent attractor). The latent space is found by a series of nonlinear filtering operations, which are performed by a convolutional autoencoder (CAE). The CAE provides the decomposition in space. Second, we predict the time evolution of the turbulent state in the latent space, which is performed by an echo state network (ESN). The ESN provides the…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Fluid Dynamics and Turbulent Flows · Model Reduction and Neural Networks
MethodsTest
