Dual scale Residual-Network for turbulent flow sub grid scale resolving: A prior analysis
Omar Sallam, Mirjam F\"urth

TL;DR
This paper presents a dual scale residual network architecture for turbulence modeling in LES, demonstrating improved accuracy in sub-grid scale resolution and stress tensor inference over traditional models, with detailed analysis of performance and computational costs.
Contribution
Introduces dual scale residual blocks within ResNet for LES SGS modeling, enhancing prediction accuracy and spectral fidelity in turbulence simulations.
Findings
DS-RB improves high-frequency velocity prediction accuracy.
DS-RB-based models outperform Smagorinsky in SGS stress inference.
Network size and computational costs increase significantly with DS-RB.
Abstract
This paper introduces generative Residual Networks (ResNet) as a surrogate Machine Learning (ML) tool for Large Eddy Simulation (LES) Sub Grid Scale (SGS) resolving. The study investigates the impact of incorporating Dual Scale Residual Blocks (DS-RB) within the ResNet architecture. Two LES SGS resolving models are proposed and tested for prior analysis test cases: a super-resolution model (SR-ResNet) and a SGS stress tensor inference model (SGS-ResNet). The SR-ResNet model task is to upscale LES solutions from coarse to finer grids by inferring unresolved SGS velocity fluctuations, exhibiting success in preserving high-frequency velocity fluctuation information, and aligning with higher-resolution LES solutions' energy spectrum. Furthermore, employing DS-RB enhances prediction accuracy and precision of high-frequency velocity fields compared to Single Scale Residual Blocks (SS-RB),…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques
