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A collaborative path planning method for mobile cable-driven parallel robots in a constrained environment with considering kinematic stability

Jiajun Xu, Byeong-Geon Kim, Kyoung‐Su Park

2022Complex & Intelligent Systems12 citationsDOIOpen Access PDF

Abstract

Abstract Mobile cable-driven parallel robot (MCDPR) is a variant of cable-driven parallel robots (CDPRs) by mounting several mobile bases to replace the conventional fixed frame. The novel modification of adding mobile bases leads MCDPRs being highly flexible and have great potential for complex environments. However, the issue of coupled mobile bases introduces actuated kinematic redundancies which present challenges for path planning. In this paper, we propose a collaborative path planning method for MCDPRs, and it allows the robot to deal with complex internal and external constraints in a high-dimensional state space efficiently. The proposed method quickly generates feasible paths for coupled mobile bases using the adaptive goal-biased rapidly exploring random tree (RRT) method, in which the adaptive sampling method is developed to enhance efficiency. Based on the feasible path of the mobile base, we proposed a grid-based search method to determine the position of the end-effector with considering the stability and kinematic performances. Furthermore, the planned paths are post-processed with the cubic splines to obtain continuous profiles for the robot. Finally, the proposed method is validated through the dynamic simulation software (CoppeliaSim) and experiments based on a MCDPR prototype with an eight-cable-driven parallel robot mounted on four mobile bases.

Topics & Concepts

Mobile robotMotion planningKinematicsGridRobotComputer sciencePath (computing)Parallel manipulatorRandom treeStability (learning theory)Distributed computingControl engineeringEngineeringArtificial intelligenceMathematicsMachine learningPhysicsProgramming languageGeometryClassical mechanicsRobotic Path Planning AlgorithmsRobotic Mechanisms and DynamicsRobotic Locomotion and Control