A Hybrid Data-driven Deep Learning Technique for Fluid-Structure Interaction
T. P. Miyanawala, R. K. Jaiman

TL;DR
This paper introduces a hybrid deep learning and projection-based low-order modeling approach to accurately predict long-term unsteady fluid-structure interactions, specifically wake-body synchronization, using CNNs and POD techniques.
Contribution
It develops a novel POD-CNN hybrid model that combines deep learning with low-dimensional projection for efficient, accurate long-term flow field prediction in fluid-structure interaction systems.
Findings
The POD-CNN model accurately predicts flow fields in complex wake regions.
The approach effectively captures long time series of unsteady flow dynamics.
High accuracy achieved compared to full-order simulations.
Abstract
This paper is concerned with the development of a hybrid data-driven technique for unsteady fluid-structure interaction systems. The proposed data-driven technique combines the deep learning framework with a projection-based low-order modeling. While the deep learning provides low-dimensional approximations from datasets arising from black-box solvers, the projection-based model constructs the low-dimensional approximations by projecting the original high-dimensional model onto a low-dimensional subspace. Of particular interest of this paper is to predict the long time series of unsteady flow fields of a freely vibrating bluff-body subjected to wake-body synchronization. We consider convolutional neural networks (CNN) for the learning dynamics of wake-body interaction, which assemble layers of linear convolutions with nonlinear activations to automatically extract the low-dimensional…
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