Convolutional neural network and long short-term memory based reduced order surrogate for minimal turbulent channel flow

被引:150
作者
Nakamura, Taichi [1 ]
Fukami, Kai [1 ,2 ]
Hasegawa, Kazuto [1 ,3 ]
Nabae, Yusuke [1 ]
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
[3] Politecn Milan, Dipartimento Sci & Tecnol Aerosp, I-20156 Milan, Italy
关键词
NONLINEAR MODE DECOMPOSITION; SUPERRESOLUTION RECONSTRUCTION; PREDICTION;
D O I
10.1063/5.0039845
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
We investigate the applicability of the machine learning based reduced order model (ML-ROM) to three-dimensional complex flows. As an example, we consider a turbulent channel flow at the friction Reynolds number of R e tau = 110 in a minimum domain, which can maintain coherent structures of turbulence. Training datasets are prepared by direct numerical simulation (DNS). The present ML-ROM is constructed by combining a three-dimensional convolutional neural network autoencoder (CNN-AE) and a long short-term memory (LSTM). The CNN-AE works to map high-dimensional flow fields into a low-dimensional latent space. The LSTM is, then, utilized to predict a temporal evolution of the latent vectors obtained by the CNN-AE. The combination of the CNN-AE and LSTM can represent the spatiotemporal high-dimensional dynamics of flow fields by only integrating the temporal evolution of the low-dimensional latent dynamics. The turbulent flow fields reproduced by the present ML-ROM show statistical agreement with the reference DNS data in time-ensemble sense, which can also be found through an orbit-based analysis. Influences of the population of vortical structures contained in the domain and the time interval used for temporal prediction on the ML-ROM performance are also investigated. The potential and limitation of the present ML-ROM for turbulence analysis are discussed at the end of our presentation.
引用
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页数:15
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