2020
DOI: 10.1002/oca.2599
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Model predictive control of a collaborative manipulator considering dynamic obstacles

Abstract: SummaryCollaborative robots have to adapt its motion plan to a dynamic environment and variation of task constraints. Currently, they detect collisions and interrupt or postpone their motion plan to prevent harm to humans or objects. The more advanced strategy proposed in this article uses online trajectory optimization to anticipate potential collisions, task variations, and to adapt the motion plan accordingly. The online trajectory planner pursues a model predictive control approach to account for dynamic m… Show more

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Cited by 37 publications
(29 citation statements)
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“…The performances of the proposed approach were compared with those of two ML-based methods [ 26 , 27 ], the development of which was driven by the requirements of human–robot collaboration, an efficient model predictive control (MPC)-based planning algorithm for 6-DOF manipulators with dynamic obstacle avoidance [ 31 ], and the popular Rapidly-exploring Random Trees (RRT) Connect [ 57 ] algorithm, which is integrated in the Robotics Library [ 58 ] and other open-source motion planning libraries. The first ML-based method, called Soft Actor-Critic with Hindsight Experience Replay (SAC–HER) [ 26 ], builds on reinforcement learning to plan motion paths for a dual-arm robot, with each arm having 3-DOF.…”
Section: Discussionmentioning
confidence: 99%
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“…The performances of the proposed approach were compared with those of two ML-based methods [ 26 , 27 ], the development of which was driven by the requirements of human–robot collaboration, an efficient model predictive control (MPC)-based planning algorithm for 6-DOF manipulators with dynamic obstacle avoidance [ 31 ], and the popular Rapidly-exploring Random Trees (RRT) Connect [ 57 ] algorithm, which is integrated in the Robotics Library [ 58 ] and other open-source motion planning libraries. The first ML-based method, called Soft Actor-Critic with Hindsight Experience Replay (SAC–HER) [ 26 ], builds on reinforcement learning to plan motion paths for a dual-arm robot, with each arm having 3-DOF.…”
Section: Discussionmentioning
confidence: 99%
“…The second Soft Actor-Critic (SAC)-based method [ 27 ] extends the SAC–HER approach by using a dual-arm robot, with each arm having 7-DOF. The MPC-based algorithm [ 31 ] uses the distance between any of the six robot joints and one or several moving obstacles to plan a feasible trajectory for a 6-DOF robot. The method was tested using a UR 10 robot with moving objects and a full-scale human model.…”
Section: Discussionmentioning
confidence: 99%
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