Reinforcement-learning-based control of convectively unstable flows

被引:13
|
作者
Xu, Da [1 ]
Zhang, Mengqi [1 ]
机构
[1] Natl Univ Singapore, Dept Mech Engn, 9 Engn Dr 1, Singapore 117575, Singapore
关键词
boundary layer control; machine learning; SPARSE SENSOR PLACEMENT; NEURAL-NETWORKS; ACTIVE CANCELLATION; ACTUATOR SELECTION; TURBULENCE CONTROL; INSTABILITIES; MODEL; REDUCTION; ABSOLUTE; WAVES;
D O I
10.1017/jfm.2022.1020
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
This work reports the application of a model-free deep reinforcement learning (DRL) based flow control strategy to suppress perturbations evolving in the one-dimensional linearised Kuramoto-Sivashinsky (KS) equation and two-dimensional boundary layer flows. The former is commonly used to model the disturbance developing in flat-plate boundary layer flows. These flow systems are convectively unstable, being able to amplify the upstream disturbance, and are thus difficult to control. The control action is implemented through a volumetric force at a fixed position, and the control performance is evaluated by the reduction of perturbation amplitude downstream. We first demonstrate the effectiveness of the DRL-based control in the KS system subjected to a random upstream noise. The amplitude of perturbation monitored downstream is reduced significantly, and the learnt policy is shown to be robust to both measurement and external noise. One of our focuses is to place sensors optimally in the DRL control using the gradient-free particle swarm optimisation algorithm. After the optimisation process for different numbers of sensors, a specific eight-sensor placement is found to yield the best control performance. The optimised sensor placement in the KS equation is applied directly to control two-dimensional Blasius boundary layer flows, and can efficiently reduce the downstream perturbation energy. Via flow analyses, the control mechanism found by DRL is the opposition control. Besides, it is found that when the flow instability information is embedded in the reward function of DRL to penalise the instability, the control performance can be further improved in this convectively unstable flow.
引用
收藏
页数:45
相关论文
共 50 条
  • [1] Reinforcement-learning-based magneto-hydrodynamic control of hypersonic flows
    Kulkarni, Nilesh V.
    Phan, Minh Q.
    2007 IEEE INTERNATIONAL SYMPOSIUM ON APPROXIMATE DYNAMIC PROGRAMMING AND REINFORCEMENT LEARNING, 2007, : 9 - +
  • [2] Reinforcement-learning-based control of turbulent channel flows at high Reynolds numbers
    Zhou, Zisong
    Zhang, Mengqi
    Zhu, Xiaojue
    JOURNAL OF FLUID MECHANICS, 2025, 1006
  • [3] Adaptive and Model-Based Control Theory Applied to Convectively Unstable Flows
    Fabbiane, Nicolo
    Semeraro, Onofrio
    Bagheri, Shervin
    Henningson, Dan S.
    APPLIED MECHANICS REVIEWS, 2014, 66 (06)
  • [4] Operational Safe Control for Reinforcement-Learning-Based Robot Autonomy
    Zhou, Xu
    2021 PROCEEDINGS OF THE 40TH CHINESE CONTROL CONFERENCE (CCC), 2021, : 4091 - 4095
  • [5] Reinforcement-learning-based actuator selection method for active flow control
    Paris, Romain
    Beneddine, Samir
    Dandois, Julien
    JOURNAL OF FLUID MECHANICS, 2023, 955
  • [6] Reinforcement-learning-based control of confined cylinder wakes with stability analyses
    Li, Jichao
    Zhang, Mengqi
    JOURNAL OF FLUID MECHANICS, 2021, 932
  • [7] Reinforcement-learning-based Smart Water Heater Control: An Actual Deployment
    Amasyali, Kadir
    Kurte, Kuldeep
    Zandi, Helia
    Munk, Jeffrey
    2023 IEEE POWER & ENERGY SOCIETY INNOVATIVE SMART GRID TECHNOLOGIES CONFERENCE, ISGT, 2023,
  • [8] Reinforcement-Learning-Based Active Disturbance Rejection Control of Piezoelectric Actuators
    Yi, Ming-Lei
    Zhang, Yi-Lun
    Huang, Xiang
    Zhang, Hai-Tao
    2022 41ST CHINESE CONTROL CONFERENCE (CCC), 2022, : 2303 - 2307
  • [9] Reinforcement-Learning-Based Disturbance Rejection Control for Uncertain Nonlinear Systems
    Ran, Maopeng
    Li, Juncheng
    Xie, Lihua
    IEEE TRANSACTIONS ON CYBERNETICS, 2022, 52 (09) : 9621 - 9633
  • [10] An efficient continuous control perspective for reinforcement-learning-based sequential recommendation
    Wang, Jun
    Wu, Likang
    Liu, Qi
    Yang, Yu
    KNOWLEDGE-BASED SYSTEMS, 2025, 312