Discrete Dynamics in Nature and Society (Jan 2021)

Path-Integral-Based Reinforcement Learning Algorithm for Goal-Directed Locomotion of Snake-Shaped Robot

  • Qi Yongqiang,
  • Yang Hailan,
  • Rong Dan,
  • Ke Yi,
  • Lu Dongchen,
  • Li chunyang,
  • Liu Xiaoting

DOI
https://doi.org/10.1155/2021/8824377
Journal volume & issue
Vol. 2021

Abstract

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This paper proposes a goal-directed locomotion method for a snake-shaped robot in 3D complex environment based on path-integral reinforcement learning. This method uses a model-free online Q-learning algorithm to evaluate action strategies and optimize decision-making through repeated “exploration-learning-utilization” processes to complete snake-shaped robot goal-directed locomotion in 3D complex environment. The proper locomotion control parameters such as joint angles and screw-drive velocities can be learned by path-integral reinforcement learning, and the learned parameters were successfully transferred to the snake-shaped robot. Simulation results show that the planned path can avoid all obstacles and reach the destination smoothly and swiftly.