Home /Research /A Dynamic Surface Controller based on Adaptive Neural Network for Dual Arm Robots
LEARNING

A Dynamic Surface Controller based on Adaptive Neural Network for Dual Arm Robots

Hai Xuan Le, Linh Nguyen, Karthick Thiyagarajan

Year
2020
Citations
15

Abstract

The paper introduces an adaptive controller to efficiently manipulate the dual arms of a robot (DAR) under uncertainties including actuator nonlinearities, system parameter variations and external disturbances. It is proposed that by the use of the dynamic surface control (DSC) method, the control strategy is first established, which enables the robot arms to robustly operate on the desired trajectories. Nevertheless, the dynamic model parameters of the DAR system are unknown and impractically estimated due to its uncertain nonlinearities and unexpected external factors. Hence, it is then proposed to employ the radial basis function network (RBFN) to adaptively estimate the uncertain system parameters. The Lyapunov theory is theoretically utilized to derive the adaptation mechanism so that the stability of the closed-loop control system is guaranteed. The proposed RBFN-DSC approach was validated in a synthetic environment with the promising results.

Keywords

Control theory (sociology)Controller (irrigation)Computer scienceRobotActuatorLyapunov functionDual (grammatical number)Artificial neural networkRadial basis function networkLyapunov stability

Related papers

Browse all LEARNING papers