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Tracking Control of a Nonholonomic Mobile Robot Using Neural Network

Şahin Yıldırım, Sertaç Savaş

Year
2015
Citations
3

Abstract

The goal of this chapter is to enable a nonholonomic mobile robot to track a specified trajectory with minimum tracking error. Towards that end, an adaptive P controller is designed whose gain parameters are tuned by using two feed-forward neural networks. Back-propagation algorithm is chosen for online learning process and posture-tracking errors are considered as error values for adjusting weights of neural networks. The tracking performance of the controller is illustrated for different trajectories with computer simulation using Matlab/Simulink. In addition, open-loop response of an experimental mobile robot is investigated for these different trajectories. Finally, the performance of the proposed controller is compared to a standard PID controller. The simulation results show that “adaptive P controller using neural networks” has superior tracking performance at adapting large disturbances for the mobile robot.

Keywords

Control theory (sociology)Artificial neural networkController (irrigation)Mobile robotComputer scienceTracking errorPID controllerTracking (education)TrajectoryMATLAB

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