Litcius/Paper detail

Reinforcement learning-based motion control for snake robots in complex environments

Dong Zhang, Renjie Ju, Zhengcai Cao

2024Robotica16 citationsDOI

Abstract

Abstract Snake robots can move flexibly due to their special bodies and gaits. However, it is difficult to plan their motion in multi-obstacle environments due to their complex models. To solve this problem, this work investigates a reinforcement learning-based motion planning method. To plan feasible paths, together with a modified deep Q-learning algorithm, a Floyd-moving average algorithm is proposed to ensure smoothness and adaptability of paths for snake robots’ passing. An improved path integral algorithm is used to work out gait parameters to control snake robots to move along the planned paths. To speed up the training of parameters, a strategy combining serial training, parallel training, and experience replaying modules is designed. Moreover, we have designed a motion planning framework consists of path planning, path smoothing, and motion planning. Various simulations are conducted to validate the effectiveness of the proposed algorithms.

Topics & Concepts

Reinforcement learningMotion planningRobotComputer scienceSmoothingPath (computing)SmoothnessAdaptabilityMotion (physics)Plan (archaeology)Artificial intelligenceMotion controlSimulationControl engineeringEngineeringComputer visionMathematicsHistoryEcologyArchaeologyProgramming languageBiologyMathematical analysisSoft Robotics and ApplicationsRobot Manipulation and LearningRobotic Locomotion and Control
Reinforcement learning-based motion control for snake robots in complex environments | Litcius