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A Punishment Mechanism-Combined Recurrent Neural Network to Solve Motion-Planning Problem of Redundant Robot Manipulators

Zhijun Zhang, Song Yang, Lunan Zheng

2021IEEE Transactions on Cybernetics35 citationsDOI

Abstract

In order to make redundant robot manipulators (RRMs) track the complex time-varying trajectory, the motion-planning problem of RRMs can be converted into a constrained time-varying quadratic programming (TVQP) problem. By using a new punishment mechanism-combined recurrent neural network (PMRNN) proposed in this article with reference to the varying-gain neural-dynamic design (VG-NDD) formula, the TVQP problem-based motion-planning scheme can be solved and the optimal angles and velocities of joints of RRMs can also be obtained in the working space. Then, the convergence performance of the PMRNN model in solving the TVQP problem is analyzed theoretically in detail. This novel method has been substantiated to have a faster calculation speed and better accuracy than the traditional method. In addition, the PMRNN model has also been successfully applied to an actual RRM to complete an end-effector trajectory tracking task.

Topics & Concepts

Control theory (sociology)Artificial neural networkComputer scienceTrajectoryConvergence (economics)Motion planningTracking (education)Motion (physics)RobotQuadratic programmingMechanism (biology)Artificial intelligenceMathematical optimizationControl (management)MathematicsEpistemologyEconomicsPhysicsEconomic growthAstronomyPedagogyPsychologyPhilosophyRobotic Mechanisms and DynamicsRobot Manipulation and LearningHydraulic and Pneumatic Systems
A Punishment Mechanism-Combined Recurrent Neural Network to Solve Motion-Planning Problem of Redundant Robot Manipulators | Litcius