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Subgrid-scale model for large-eddy simulation of isotropic turbulent flows using an artificial neural network

机译:使用人工神经网络的各向同性湍流流量大涡流模拟的谱级模型

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摘要

An artificial neural network (ANN) is used to establish the relation between the resolved-scale flow field and the subgrid-scale (SGS) stress tensor, to develop a new SGS model for large-eddy simulation (LES) of isotropic turbulent flows. The data required for training and testing of the ANN are provided by performing filtering operations on the flow fields from direct numerical simulations (DNSs) of isotropic turbulent flows. We use the velocity gradient tensor together with filter width as input features and the SGS stress tensor as the output labels for training the ANN. In the a priori test of the trained ANN model, the SGS stress tensors obtained from the ANN model and the DNS data are compared by computing the correlation coefficient and the relative error of the energy transfer rate. The correlation coefficients are mostly larger than 0.9, and the ANN model can accurately predict the energy transfer rate at different Reynolds numbers and filter widths, showing significant improvement over the conventional models, for example the gradient model, the Smagorinsky model and its dynamic version. A real LES using the trained ANN model is performed as the a posteriori validation. The energy spectrum computed by the improved ANN model is compared with several SGS models. The Lagrangian statistics of fluid particle pairs obtained from the improved ANN model almost approach those from the filtered DNS, better than the results from the Smagorinsky model and dynamic Smagorinsky model. (C) 2019 Elsevier Ltd. All rights reserved.
机译:人工神经网络(ANN)用于建立分辨尺度流场与底片级(SGS)应力张量之间的关系,为各向同性湍流流动的大型涡流模拟(LES)开发新的SGS模型。通过从各向同性湍流流程的直接数值模拟(DNS)对流场上的过滤操作来提供培训和测试所需的数据。我们将速度梯度张量与滤波器宽度一起使用作为输入特征,并且SGS应力张量作为训练ANN的输出标签。在培训的ANN模型的先验测试中,通过计算相关系数和能量传递速率的相对误差来比较从ANN模型和DNS数据获得的SGS应力张量。相关系数大多大于0.9,并且ANN模型可以精确地预测不同雷诺数和滤波器宽度的能量传递速率,从而显着改善传统模型,例如梯度模型,SMAGORINSKY模型及其动态版本。使用培训的ANN模型的真实LES是作为后验验证进行的。将改进的ANN模型计算的能谱与几个SGS模型进行了比较。从改进的ANN模型获得的流体粒子对的拉格朗日统计几乎接近来自过滤的DNS的那些,而不是Smagorinsky模型和动态Smagorinsky模型的结果。 (c)2019年elestvier有限公司保留所有权利。

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