Reinforcement learning-based optimization of locomotion controller using multiple coupled CPG oscillators for elongated undulating fin propulsion

Math Biosci Eng. 2022 Jan;19(1):738-758. doi: 10.3934/mbe.2022033. Epub 2021 Nov 19.

Abstract

This article proposes a locomotion controller inspired by black Knifefish for undulating elongated fin robot. The proposed controller is built by a modified CPG network using sixteen coupled Hopf oscillators with the feedback of the angle of each fin-ray. The convergence rate of the modified CPG network is optimized by a reinforcement learning algorithm. By employing the proposed controller, the undulating elongated fin robot can realize swimming pattern transformations naturally. Additionally, the proposed controller enables the configuration of the swimming pattern parameters known as the amplitude envelope, the oscillatory frequency to perform various swimming patterns. The implementation processing of the reinforcement learning-based optimization is discussed. The simulation and experimental results show the capability and effectiveness of the proposed controller through the performance of several swimming patterns in the varying oscillatory frequency and the amplitude envelope of each fin-ray.

Keywords: Hopf oscillator; biomimetic robot; reinforcement learning; undulating fin.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Animal Fins*
  • Animals
  • Biomechanical Phenomena
  • Locomotion
  • Robotics*
  • Swimming