In this paper, deep learning (DL) methods are evaluated in the context of turbulent flows. Various generative adversarial networks (GANs) are discussed with respect to their suitability for understanding and modeling turbulence. Wasserstein GANs (WGANs) are then chosen to generate small-scale turbulence. Highly resolved direct numerical simulation (DNS) turbulent data is used for training the WGANs and the effect of network parameters, such as learning rate and loss function, is studied. Qualitatively good agreement between DNS input data and generated turbulent structures is shown. A quantitative statistical assessment of the predicted turbulent fields is performed.
翻译:在本文中,在动荡流动的背景下评价深层次学习方法,讨论各种基因对抗网络是否适合理解和模拟动荡。然后选择瓦西尔斯泰因GANs(WGANs)来产生小规模的动荡。高分辨率直接数字模拟(DNS)动荡数据用于培训工作组,并研究网络参数的影响,如学习率和损失功能。DNS输入数据和生成的动荡结构之间质量良好的一致。对预测的动荡地区进行了定量统计评估。