4.7 Article

An obstacle avoidance algorithm for robot manipulators based on decision-making force

Journal

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.rcim.2020.102114

Keywords

Robot manipulator; Obstacle avoidance; Dynamic repulsion field; Decision-making force

Funding

  1. National Science Foundation of China [U1613205, 62073063]
  2. Fundamental Research Funds for the Central Universities, China [N182400072, N2003003]

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This paper introduces a novel obstacle avoidance algorithm to improve the robustness and flexibility of robots, which consists of three components. Experimental results show that the algorithm enables robots to smoothly track task trajectories and avoid obstacles in complex scenarios.
Obstacle avoidance is a significant skill not only for mobile robots but also for robot manipulators working in unstructured environments. Various algorithms have been proposed to solve off-line planning and on-line adaption problems. However, it is still not able to ensure safety and flexibility in complex scenarios. In this paper, a novel obstacle avoidance algorithm is proposed to improve the robustness and flexibility. The method contains three components: A closed-loop control system is used to filter the preplanned trajectory and ensure the smoothness and stability of the robot motion; the dynamic repulsion field is adopted to fulfill the robot with primitive obstacle avoidance capability; to mimic human's complex obstacle avoidance behavior and instant decision-making mechanism, a parametrized decision-making force is introduced to optimize all the feasible motions. The algorithms were implemented in planar and spatial robot manipulators. The comparative results show the robot can not only track the task trajectory smoothly but also avoid obstacles in different configurations.

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