Dual scale Residual-Network for turbulent flow sub grid scale resolving: A prior analysis

IF 3 3区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Omar Sallam, Mirjam Fürth
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引用次数: 0

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), evident in both spatial and spectral domains. The SR-ResNet model is tested and trained on filtered/downsampled 2-D LES planar jet injection problems at two Reynolds numbers, two jet configurations, and two upscale ratios. In the case of SGS stress tensor inference, both SS-RB and DS-RB exhibit higher prediction accuracy compared to other explicit closure models such as the Smagorinsky model or the Approximate Deconvolution Model (ADM) with reference to the true DNS SGS stress tensor, with DS-RB-based SGS-ResNet showing stronger statistical alignment with DNS data. The SGS-ResNet model is tested on a filtered/downsampled 2-D DNS isotropic homogeneous decay turbulence problem. The adoption of DS-RB incurs notable increases in network size, training time, and forward inference time, with the network size expanding by over tenfold, and training and forward inference times increasing by approximately 0.5 and 3 times, respectively.
双尺度残差网络求解湍流亚网格尺度的前期分析
本文介绍了生成残差网络(ResNet)作为求解大涡模拟(LES)子网格尺度(SGS)的代理机器学习(ML)工具。该研究调查了在ResNet架构中合并双尺度残余块(DS-RB)的影响。提出了两种LES SGS解析模型,并在先验分析测试用例中进行了测试:超分辨率模型(SR-ResNet)和SGS应力张量推理模型(SGS- resnet)。SR-ResNet模型的任务是通过推断未解决的SGS速度波动,成功地保留了高频速度波动信息,并与更高分辨率的LES解决方案的能谱相匹配,从而将LES解决方案从粗网格升级到细网格。此外,与单尺度残差块(SS-RB)相比,DS-RB在空间域和频谱域都提高了高频速度场的预测精度和精度。SR-ResNet模型在两种雷诺数、两种射流配置和两种高档比下的滤波/下采样二维LES平面喷射问题上进行了测试和训练。在SGS应力张量推断的情况下,与Smagorinsky模型或近似反卷积模型(Approximate Deconvolution model, ADM)等其他显式闭包模型相比,SS-RB和DS-RB均具有更高的预测精度,其中基于DS-RB的SGS- resnet与DNS数据具有更强的统计一致性。在滤波/下采样的二维DNS各向同性均匀衰减湍流问题上对SGS-ResNet模型进行了测试。采用DS-RB后,网络规模、训练时间和正向推理时间显著增加,网络规模扩大了10倍以上,训练时间和正向推理时间分别增加了约0.5倍和3倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computers & Fluids
Computers & Fluids 物理-计算机:跨学科应用
CiteScore
5.30
自引率
7.10%
发文量
242
审稿时长
10.8 months
期刊介绍: Computers & Fluids is multidisciplinary. The term ''fluid'' is interpreted in the broadest sense. Hydro- and aerodynamics, high-speed and physical gas dynamics, turbulence and flow stability, multiphase flow, rheology, tribology and fluid-structure interaction are all of interest, provided that computer technique plays a significant role in the associated studies or design methodology.
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