4.7 Article

Efficient Cooperative Structured Control for a Multijoint Biomimetic Robotic Fish

Journal

IEEE-ASME TRANSACTIONS ON MECHATRONICS
Volume 26, Issue 5, Pages 2506-2516

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMECH.2020.3041506

Keywords

Robots; Robot kinematics; Optimization; Biomimetics; Sports; Training; Task analysis; Deep reinforcement learning; evolutionary strategy; robotic fish; structured control

Funding

  1. National Natural Science Foundation of China [62022090, 61725305, 62033013, U1909206, 61836015]
  2. Beijing Natural Science Foundation [4192060]
  3. Key Project of Frontier Science Research of Chinese Academy of Sciences [QYZDJ-SSWJSC004]
  4. Youth Innovation Promotion Association CAS [2019138]

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In this article, an efficient locomotion control method for a biomimetic robotic fish in tracking tasks is proposed, utilizing an optimization-based cooperative structured control framework and a linear weighted controller trained with periodic method for deep reinforcement learning. Extensive simulation and experimental results show significant energy savings, with the cooperative structured control outperforming sliding mode control, active disturbance rejection control, and proportional-integral-differential control in terms of energy efficiency.
In this article, we propose an efficient locomotion control method for a two-dimensional tracking task of a biomimetic four-joint robotic fish. Regarding this issue as a comprehensive optimization procedure, we propose an optimization-based cooperative structured control framework, in which the combination of evolutionary strategy and deep deterministic policy gradient is employed to optimize the same objective function. An inconsistent optimization method is presented to further enhance the effect of parameter optimization on central pattern generator model. Moreover, for the sake of a higher reward and better robustness of controllers governed by deep reinforcement learning, we propose a linear weighted controller trained with periodic method. Extensive simulation and experimental results verify the significant energy saving of the proposed method in tracking tasks. Noticeably, the cooperative structured control can save 23.97%, 22.13%, and 38.72% energy compared with sliding mode control, active disturbance rejection control, and proportional-integral-differential control in experiments, respectively, holding a great promise for the long-term intelligent work of the biomimetic robotic fish in complex aquatic environments.

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