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Path Planning for Multi-Arm Manipulators Using Soft Actor-Critic Algorithm with Position Prediction of Moving Obstacles via LSTM

Kwan-Woo Park, MyeongSeop Kim, Jung‐Su Kim, Jae‐Han Park

2022Applied Sciences25 citationsDOIOpen Access PDF

Abstract

This paper presents a deep reinforcement learning-based path planning algorithm for the multi-arm robot manipulator when there are both fixed and moving obstacles in the workspace. Considering the problem properties such as high dimensionality and continuous action, the proposed algorithm employs the SAC (soft actor-critic). Moreover, in order to predict explicitly the future position of the moving obstacle, LSTM (long short-term memory) is used. The SAC-based path planning algorithm is developed using the LSTM. In order to show the performance of the proposed algorithm, simulation results using GAZEBO and experimental results using real manipulators are presented. The simulation and experiment results show that the success ratio of path generation for arbitrary starting and goal points converges to 100%. It is also confirmed that the LSTM successfully predicts the future position of the obstacle.

Topics & Concepts

WorkspaceMotion planningComputer sciencePosition (finance)Path (computing)ObstacleReinforcement learningCurse of dimensionalityArtificial intelligenceObstacle avoidanceAlgorithmRobotControl theory (sociology)Control (management)Mobile robotLawPolitical scienceFinanceEconomicsProgramming languageReinforcement Learning in RoboticsRobotic Path Planning AlgorithmsRobotic Locomotion and Control