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Deep Reinforcement Learning-Based Path Planning for Multi-Arm Manipulators with Periodically Moving Obstacles

Evan Prianto, Jae‐Han Park, Ji‐Hun Bae, Jung‐Su Kim

2021Applied Sciences33 citationsDOIOpen Access PDF

Abstract

In the workspace of robot manipulators in practice, it is common that there are both static and periodic moving obstacles. Existing results in the literature have been focusing mainly on the static obstacles. This paper is concerned with multi-arm manipulators with periodically moving obstacles. Due to the high-dimensional property and the moving obstacles, existing results suffer from finding the optimal path for given arbitrary starting and goal points. To solve the path planning problem, this paper presents a SAC-based (Soft actor–critic) path planning algorithm for multi-arm manipulators with periodically moving obstacles. In particular, the deep neural networks in the SAC are designed such that they utilize the position information of the moving obstacles over the past finite time horizon. In addition, the hindsight experience replay (HER) technique is employed to use the training data efficiently. In order to show the performance of the proposed SAC-based path planning, both simulation and experiment results using open manipulators are given.

Topics & Concepts

Motion planningWorkspaceComputer sciencePath (computing)Reinforcement learningPosition (finance)Control theory (sociology)Obstacle avoidanceArtificial intelligenceRobotMobile robotControl (management)FinanceEconomicsProgramming languageRobotic Path Planning AlgorithmsRobot Manipulation and LearningReinforcement Learning in Robotics