A wavelet-based three-dimensional Convolutional Neural Network for superresolution of turbulent vorticity

T. Asaka, K. Yoshimatsu, K. Schneider
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Abstract

. We develop a wavelet-based three-dimensional convolutional neural network (WCNN3d) for superresolution of coarse-grained data of homogeneous isotropic turbulence. The turbulent flow data are computed by high resolution direct numerical simulation (DNS), while the coarse-grained data are obtained by applying a Gaussian filter to the DNS data. The CNNs are trained with the DNS data and the coarse-grained data. We compare vorticity- and velocity-based approaches and assess the proposed WCNN3d method in terms of flow visualization, enstrophy spectra and probability density functions. We show that orthogonal wavelets enhance the efficiency of the learning of CNN. of isotropic turbulence in a periodic box and the coarse-grained data are obtained by the application of a Gaussian low-pass filter to the DNS data. We assessed the WCNN3d in terms of 3D visualization of vorticity, PDF of vorticity, and enstrophy spectra. We found that WCNN3d well reproduces vorticity statistics and the positions of the vortices from coarse-grained vorticity fields. For the vorticity-based approach, the use of wavelets enhances deep learning of turbulent flows considered here thanks to the sparsity of the wavelet representation which improves deep learning. For the velocity-based approach, we showed that weighting the wavelet coefficients of velocity, which yields velocity gradient information due to norm equivalence, improves the accuracy and yields results similar to the vorticity-based model. Furthermore, we assessed the divergence issue of the predicted fields and showed that its impact is negligible. We demonstrated the capability to predict a turbulent flow whose Reynolds number is higher than the flows used for the training.
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湍流涡度超分辨的小波三维卷积神经网络
. 我们开发了一种基于小波的三维卷积神经网络(WCNN3d),用于均匀各向同性湍流的粗粒度数据的超分辨率。湍流数据采用高分辨率直接数值模拟(DNS)计算,粗粒度数据采用高斯滤波处理。cnn使用DNS数据和粗粒度数据进行训练。我们比较了基于涡度和速度的方法,并从流动可视化、熵谱和概率密度函数的角度评估了所提出的WCNN3d方法。结果表明,正交小波提高了CNN的学习效率。通过对DNS数据应用高斯低通滤波器,得到了周期盒内各向同性湍流和粗粒度数据。我们从涡度的三维可视化、涡度的PDF和熵谱方面对WCNN3d进行了评估。我们发现WCNN3d很好地再现了粗粒度涡度场的涡度统计和涡度位置。对于基于涡度的方法,由于小波表示的稀疏性提高了深度学习,小波的使用增强了这里考虑的湍流的深度学习。对于基于速度的方法,我们表明,由于范数等效,对速度的小波系数进行加权,从而得到速度梯度信息,提高了精度,并得到与基于涡度的模型相似的结果。此外,我们评估了预测场的散度问题,并表明其影响可以忽略不计。我们演示了预测雷诺数高于用于训练的流的湍流的能力。
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