A combined active control method of restricted nonlinear model and machine learning technology for drag reduction in turbulent channel flow

被引:0
|
作者
Han, Bing-Zheng [1 ]
Huang, Wei-Xi [1 ]
Xu, Chun-Xiao [1 ]
机构
[1] Tsinghua Univ, Dept Engn Mech, AML, Beijing 100084, Peoples R China
基金
中国国家自然科学基金;
关键词
drag reduction; turbulence control; machine learning; SKIN FRICTION; STREAMWISE VORTICES; SUBOPTIMAL CONTROL; WALL TURBULENCE; NEURAL-NETWORKS; GENERATION; MECHANISMS; DYNAMICS;
D O I
10.1017/jfm.2024.558
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
The practical implementation of machine learning in flow control is limited due to its significant training expenses. In the present study the convolutional neural network (CNN) trained with the data of the restricted nonlinear (RNL) model is used to predict the normal velocity on a detection plane at y(+) = 10 in a turbulent channel flow, and the predicted velocity is used as wall blowing and suction for drag reduction. An active control test is carried out by using the well-trained CNN in direct numerical simulation (DNS). Substantial drag reduction rates up to 19 % and 16 % are obtained based on the spanwise and streamwise wall shear stresses, respectively. Furthermore, we explore the online control of wall turbulence by combining the RNL model with reinforcement learning (RL). The RL is constructed to determine the optimal wall blowing and suction based on its observation of the wall shear stresses without using the label data on the detection plane for training. The controlling and training processes are conducted synchronously in a RNL flow field. The control strategy discovered by RL has similar drag reduction rates with those obtained previously by the established method. Also, the training cost decreases by over thirty times at Re-tau = 950 compared with the DNS-RL model. The present results provide a perspective that combining the RNL model with machine learning control for drag reduction in wall turbulence can be effective and computationally economical. Also, this approach can be easily extended to flows at higher Reynolds numbers.
引用
收藏
页数:33
相关论文
共 42 条
  • [21] MACHINE LEARNING CONTROL FOR EXPERIMENTAL TURBULENT FLOW TARGETING THE REDUCTION OF A RECIRCULATION BUBBLE
    Chovet, Camila
    Lippert, Marc
    Keirsbulck, Laurent
    Noack, Bernd R.
    Foucaut, Jean-Marc
    PROCEEDINGS OF THE ASME FLUIDS ENGINEERING DIVISION SUMMER MEETING, 2017, VOL 1C, 2017,
  • [22] Reinforcement learning-based active flow control of oscillating cylinder for drag reduction
    Jiang, Haokui
    Cao, Shunxiang
    PHYSICS OF FLUIDS, 2023, 35 (10)
  • [23] Modeling of drag reduction in turbulent channel flow with hydrophobic walls by FVM method and weakly-compressible flow equations
    Li Ling
    Yuan Ming-Shun
    Acta Mechanica Sinica, 2011, 27 : 200 - 207
  • [24] Modeling of drag reduction in turbulent channel flow with hydrophobic walls by FVM method and weakly-compressible flow equations
    Ling Li · Ming-Shun Yuan State Key Laboratory of Hydroscience and Engineering
    ActaMechanicaSinica, 2011, 27 (02) : 200 - 207
  • [25] Modeling of drag reduction in turbulent channel flow with hydrophobic walls by FVM method and weakly-compressible flow equations
    Li, Ling
    Yuan, Ming-Shun
    ACTA MECHANICA SINICA, 2011, 27 (02) : 200 - 207
  • [26] Reinforcement learning of control strategies for reducing skin friction drag in a fully developed turbulent channel flow
    Sonoda, Takahiro
    Liu, Zhuchen
    Itoh, Toshitaka
    Hasegawa, Yosuke
    JOURNAL OF FLUID MECHANICS, 2023, 960
  • [27] Prediction of optimal control input in a fully developed turbulent channel flow by machine learning
    Yugeta, Yusuke
    Uji, Kosetsu
    Itoh, Toshitaka
    Hasegawa, Yosuke
    JOURNAL OF FLUID SCIENCE AND TECHNOLOGY, 2023, 18 (04):
  • [28] Heavy Class Helicopter Fuselage Model Drag Reduction by Active Flow Control Systems
    De Gregorio, F.
    XXIV A.I.VE.LA. ANNUAL MEETING, 2017, 882
  • [29] Optimum Parameter Design of Microbubble Drag Reduction in a Turbulent Flow by the Taguchi Method Combined With Artificial Neural Networks
    Ouyang, Kwan
    Wu, Sheng-Ju
    Huang, Huang-Hsin
    JOURNAL OF FLUIDS ENGINEERING-TRANSACTIONS OF THE ASME, 2013, 135 (11):
  • [30] Active flow control for bluff body drag reduction using reinforcement learning with partial measurements
    Xia, Chengwei
    Zhang, Junjie
    Kerrigan, Eric C.
    Rigas, Georgios
    JOURNAL OF FLUID MECHANICS, 2024, 981