NUNet: Deep Learning for Non-Uniform Super-Resolution of Turbulent Flows
Octavi Obiols-Sales, Abhinav Vishnu, Nicholas Malaya, Aparna, Chandramowlishwaran

TL;DR
NUNet introduces an adaptive deep learning framework for non-uniform super-resolution of turbulent flows, focusing computational resources on complex regions to improve efficiency and accuracy over traditional uniform methods.
Contribution
It presents a novel adaptive mesh refinement deep learning approach that selectively super-resolves regions of interest in turbulent flows, enhancing scalability and accuracy.
Findings
Refines complex flow regions like near-wall and wake areas.
Achieves 3.2-5.5x faster convergence than traditional AMR.
Reduces memory usage by up to 7.65x.
Abstract
Deep Learning (DL) algorithms are becoming increasingly popular for the reconstruction of high-resolution turbulent flows (aka super-resolution). However, current DL approaches perform spatially uniform super-resolution - a key performance limiter for scalability of DL-based surrogates for Computational Fluid Dynamics (CFD). To address the above challenge, we introduce NUNet, a deep learning-based adaptive mesh refinement (AMR) framework for non-uniform super-resolution of turbulent flows. NUNet divides the input low-resolution flow field into patches, scores each patch, and predicts their target resolution. As a result, it outputs a spatially non-uniform flow field, adaptively refining regions of the fluid domain to achieve the target accuracy. We train NUNet with Reynolds-Averaged Navier-Stokes (RANS) solutions from three different canonical flows, namely turbulent channel flow,…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Advanced Vision and Imaging · Model Reduction and Neural Networks
