Enhancing efficiency and propulsion in bio-mimetic robotic fish through end-to-end deep reinforcement learning

被引:7
|
作者
Cui, Xinyu [1 ,2 ]
Sun, Boai [3 ]
Zhu, Yi [4 ,5 ]
Yang, Ning [1 ,2 ]
Zhang, Haifeng [1 ,2 ]
Cui, Weicheng [4 ,5 ]
Fan, Dixia [4 ,5 ]
Wang, Jun [6 ]
机构
[1] Inst Automat, Inst Automat, Beijing 100190, Peoples R China
[2] Univ Chinese Acad Sci, Sch Artificial Intelligence, Beijing 100049, Peoples R China
[3] Zhejiang Univ, Zhejiang Univ Westlake Univ Joint Training, Hangzhou 310027, Peoples R China
[4] Westlake Univ, Sch Engn, Key Lab Coastal Environm & Resources Zhejiang Pro, Hangzhou 310030, Peoples R China
[5] Inst Adv Technol, Westlake Inst Adv Study, Hangzhou 310024, Peoples R China
[6] UCL, Dept Comp Sci, London WC1E 6BT, England
关键词
CARTESIAN-GRID SIMULATIONS; MULTIJOINT; OPTIMIZATION;
D O I
10.1063/5.0192993
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
Aquatic organisms are known for their ability to generate efficient propulsion with low energy expenditure. While existing research has sought to leverage bio-inspired structures to reduce energy costs in underwater robotics, the crucial role of control policies in enhancing efficiency has often been overlooked. In this study, we optimize the motion of a bio-mimetic robotic fish using deep reinforcement learning (DRL) to maximize propulsion efficiency and minimize energy consumption. Our novel DRL approach incorporates extended pressure perception, a transformer model processing sequences of observations, and a policy transfer scheme. Notably, significantly improved training stability and speed within our approach allow for end-to-end training of the robotic fish. This enables agiler responses to hydrodynamic environments and possesses greater optimization potential compared to pre-defined motion pattern controls. Our experiments are conducted on a serially connected rigid robotic fish in a free stream with a Reynolds number of 6000 using computational fluid dynamics simulations. The DRL-trained policies yield impressive results, demonstrating both high efficiency and propulsion. The policies also showcase the agent's embodiment, skillfully utilizing its body structure and engaging with surrounding fluid dynamics, as revealed through flow analysis. This study provides valuable insights into the bio-mimetic underwater robots optimization through DRL training, capitalizing on their structural advantages, and ultimately contributing to more efficient underwater propulsion systems.
引用
收藏
页数:13
相关论文
共 50 条
  • [41] An End-to-End Path Planner Combining Potential Field Method With Deep Reinforcement Learning
    Wang, Yixuan
    Shen, Bin
    Nan, Zhuojiang
    Tao, Wei
    IEEE SENSORS JOURNAL, 2024, 24 (16) : 26584 - 26591
  • [42] WarpDrive: Fast End-to-End Deep Multi-Agent Reinforcement Learning on a GPU
    Lan, Tian
    Srinivasa, Sunil
    Wang, Huan
    Zheng, Stephan
    Journal of Machine Learning Research, 2022, 23
  • [43] End-to-end nonprehensile rearrangement with deep reinforcement learning and simulation-to-reality transfer
    Yuan, Weihao
    Hang, Kaiyu
    Kragic, Danica
    Wang, Michael Y.
    Stork, Johannes A.
    ROBOTICS AND AUTONOMOUS SYSTEMS, 2019, 119 : 119 - 134
  • [44] End-to-End Deep Reinforcement Learning for Image-Based UAV Autonomous Control
    Zhao, Jiang
    Sun, Jiaming
    Cai, Zhihao
    Wang, Longhong
    Wang, Yingxun
    APPLIED SCIENCES-BASEL, 2021, 11 (18):
  • [45] Toward End-to-End Control for UAV Autonomous Landing via Deep Reinforcement Learning
    Polvara, Riccardo
    Patacchiola, Massimiliano
    Sharma, Sanjay
    Wan, Jian
    Manning, Andrew
    Sutton, Robert
    Cangelosi, Angelo
    2018 INTERNATIONAL CONFERENCE ON UNMANNED AIRCRAFT SYSTEMS (ICUAS), 2018, : 115 - 123
  • [46] End-to-end Autonomous Driving in Heterogeneous Traffic Scenario Using Deep Reinforcement Learning
    Chakraborty, Soumyajit
    Kumar, Subhadeep
    Bhatt, Nirav
    Pasumarthy, Ramkrishna
    2023 EUROPEAN CONTROL CONFERENCE, ECC, 2023,
  • [47] An End-to-End Automatic Cloud Database Tuning System Using Deep Reinforcement Learning
    Zhang, Ji
    Liu, Yu
    Zhou, Ke
    Li, Guoliang
    Xiao, Zhili
    Cheng, Bin
    Xing, Jiashu
    Wang, Yangtao
    Cheng, Tianheng
    Liu, Li
    Ran, Minwei
    Li, Zekang
    SIGMOD '19: PROCEEDINGS OF THE 2019 INTERNATIONAL CONFERENCE ON MANAGEMENT OF DATA, 2019, : 415 - 432
  • [48] Learning for Attitude Holding of a Robotic Fish: An End-to-End Approach With Sim-to-Real Transfer
    Zheng, Junzheng
    Zhang, Tianhao
    Wang, Chen
    Xiong, Minglei
    Xie, Guangming
    IEEE TRANSACTIONS ON ROBOTICS, 2022, 38 (02) : 1287 - 1303
  • [49] An End-to-End Deep Learning Approach for Video Captioning Through Mobile Devices
    Pezzuto Damaceno, Rafael J.
    Cesar, Roberto M., Jr.
    PROGRESS IN PATTERN RECOGNITION, IMAGE ANALYSIS, COMPUTER VISION, AND APPLICATIONS, CIARP 2023, PT I, 2024, 14469 : 715 - 729
  • [50] Flying Through a Narrow Gap Using End-to-End Deep Reinforcement Learning Augmented With Curriculum Learning and Sim2Real
    Xiao, Chenxi
    Lu, Peng
    He, Qizhi
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2023, 34 (05) : 2701 - 2708