Deep Learning Closure Models for Large-Eddy Simulation of Flows around Bluff Bodies
Justin Sirignano, Jonathan F. MacArt

TL;DR
This paper develops a deep learning-based closure model for large-eddy simulation of flows around bluff bodies, demonstrating improved accuracy and stability over traditional models in predicting steady-state flow statistics.
Contribution
The paper introduces a novel deep learning closure model trained with adjoint PDE optimization, outperforming standard LES models in accuracy and stability for turbulent flow simulations around bluff bodies.
Findings
DL-LES outperforms dynamic Smagorinsky model
Accurately predicts drag coefficient and flow statistics
Remains stable over large physical time spans
Abstract
A deep learning (DL) closure model for large-eddy simulation (LES) is developed and evaluated for incompressible flows around a rectangular cylinder at moderate Reynolds numbers. Near-wall flow simulation remains a central challenge in aerodynamic modeling: RANS predictions of separated flows are often inaccurate, while LES can require prohibitively small near-wall mesh sizes. The DL-LES model is trained using adjoint PDE optimization methods to match, as closely as possible, direct numerical simulation (DNS) data. It is then evaluated out-of-sample (i.e., for new aspect ratios and Reynolds numbers not included in the training data) and compared against a standard LES model (the dynamic Smagorinsky model). The DL-LES model outperforms dynamic Smagorinsky and is able to achieve accurate LES predictions on a relatively coarse mesh (downsampled from the DNS grid by a factor of four in each…
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Taxonomy
TopicsAerodynamics and Fluid Dynamics Research · Fluid Dynamics and Turbulent Flows · Model Reduction and Neural Networks
