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Real-Time Decentralized Neural Control via Backstepping for a Robotic Arm Powered by Industrial Servomotors

Luis A. Vázquez, Francisco Jurado, Carlos E. Castañeda, Víctor Santibáñez

Year
2016
Citations
23

Abstract

This paper presents a continuous-time decentralized neural control scheme for trajectory tracking of a two degrees of freedom direct drive vertical robotic arm. A decentralized recurrent high-order neural network (RHONN) structure is proposed to identify online, in a series-parallel configuration and using the filtered error learning law, the dynamics of the plant. Based on the RHONN subsystems, a local neural controller is derived via backstepping approach. The effectiveness of the decentralized neural controller is validated on a robotic arm platform, of our own design and unknown parameters, which uses industrial servomotors to drive the joints.

Keywords

BacksteppingServomotorControl theory (sociology)TrajectoryControl engineeringArtificial neural networkRobotic armController (irrigation)Computer scienceTracking error

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