Publication | Open Access
Iterative Learning Procedure With Reinforcement for High-Accuracy Force Tracking in Robotized Tasks
94
Citations
27
References
2017
Year
Artificial IntelligenceEngineeringMachine LearningMotor ControlObject ManipulationAdvanced Motion ControlLearning ControlRobotized TasksSystems EngineeringRobot LearningKinematicsMechatronicsIntelligent ControlUniversal RobotReinforcement Learning ProceduresMotion ControlRobot ControlCompliance ControlAutomationMechanical SystemsIterative Learning ProcedureRoboticsHigh-accuracy Force Tracking
The paper focuses on industrial interaction robotics tasks, investigating a control approach involving multiples learning levels for training the manipulator to execute a repetitive (partially) changeable task, accurately controlling the interaction. Based on compliance control, the proposed approach consists of two main control levels: 1) iterative friction learning compensation controller with reinforcement and 2) iterative force-tracking learning controller with reinforcement. The learning algorithms rely on the iterative learning and reinforcement learning procedures to automatize the controllers parameters tuning. The proposed procedure has been applied to an automotive industrial assembly task. A standard industrial UR 10 Universal Robot has been used, equipped by a compliant pneumatic gripper and a force/torque sensor at the robot end-effector.
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