Nonlinear mode decomposition with convolutional neural networks for fluid dynamics

被引:244
作者
Murata, Takaaki [1 ]
Fukami, Kai [1 ,2 ]
Fukagata, Koji [1 ]
机构
[1] Keio Univ, Dept Mech Engn, Yokohama, Kanagawa 2238522, Japan
[2] Univ Calif Los Angeles, Dept Mech & Aerosp Engn, Los Angeles, CA 90095 USA
基金
日本学术振兴会;
关键词
low-dimensional models; vortex shedding; computational methods; FLOWS; DIMENSIONALITY; REDUCTION;
D O I
10.1017/jfm.2019.822
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
We present a new nonlinear mode decomposition method to visualize decomposed flow fields, named the mode decomposing convolutional neural network autoencoder (MD-CNN-AE). The proposed method is applied to a flow around a circular cylinder at the Reynolds number Re-D = 100 as a test case. The flow attributes are mapped into two modes in the latent space and then these two modes are visualized in the physical space. Because the MD-CNN-AEs with nonlinear activation functions show lower reconstruction errors than the proper orthogonal decomposition (POD), the nonlinearity contained in the activation function is considered the key to improving the capability of the model. It is found by applying POD to each field decomposed using the MD-CNN-AE with hyperbolic tangent activation such that a single nonlinear MD-CNN-AE mode contains multiple orthogonal bases, in contrast to the linear methods, i.e. POD and MD-CNN-AE with linear activation. We further assess the proposed MD-CNN-AE by applying it to a transient process of a circular cylinder wake in order to examine its capability for flows containing high-order spatial modes. The present results suggest a great potential for the nonlinear MD-CNN-AE to be used for feature extraction of flow fields in lower dimensions than POD, while retaining interpretable relationships with the conventional POD modes.
引用
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页数:15
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