Combined space-time reduced-order model with 3D deep convolution for
extrapolating fluid dynamics
- URL: http://arxiv.org/abs/2211.00307v1
- Date: Tue, 1 Nov 2022 07:14:07 GMT
- Title: Combined space-time reduced-order model with 3D deep convolution for
extrapolating fluid dynamics
- Authors: Indu Kant Deo, Rui Gao, Rajeev Jaiman
- Abstract summary: Deep learning-based reduced-order models have been recently shown to be effective in simulations.
In this study, we aim to improve the extrapolation capability by modifying network architecture and integrating space-time physics as an implicit bias.
To demonstrate the effectiveness of 3D convolution network, we consider a benchmark problem of the flow past a circular cylinder at laminar flow conditions.
- Score: 4.984601297028257
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: There is a critical need for efficient and reliable active flow control
strategies to reduce drag and noise in aerospace and marine engineering
applications. While traditional full-order models based on the Navier-Stokes
equations are not feasible, advanced model reduction techniques can be
inefficient for active control tasks, especially with strong non-linearity and
convection-dominated phenomena. Using convolutional recurrent autoencoder
network architectures, deep learning-based reduced-order models have been
recently shown to be effective while performing several orders of magnitude
faster than full-order simulations. However, these models encounter significant
challenges outside the training data, limiting their effectiveness for active
control and optimization tasks. In this study, we aim to improve the
extrapolation capability by modifying network architecture and integrating
coupled space-time physics as an implicit bias. Reduced-order models via deep
learning generally employ decoupling in spatial and temporal dimensions, which
can introduce modeling and approximation errors. To alleviate these errors, we
propose a novel technique for learning coupled spatial-temporal correlation
using a 3D convolution network. We assess the proposed technique against a
standard encoder-propagator-decoder model and demonstrate a superior
extrapolation performance. To demonstrate the effectiveness of 3D convolution
network, we consider a benchmark problem of the flow past a circular cylinder
at laminar flow conditions and use the spatio-temporal snapshots from the
full-order simulations. Our proposed 3D convolution architecture accurately
captures the velocity and pressure fields for varying Reynolds numbers.
Compared to the standard encoder-propagator-decoder network, the
spatio-temporal-based 3D convolution network improves the prediction range of
Reynolds numbers outside of the training data.
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