Mobile robot nonlinear feedback control based on Elman neural network observer

Author:

Al-Mutib Khaled1,Abdessemed Fodil2,Hedjar Ramdane1,Alsulaiman Mansour1,Bencherif Mohamed1,Faisal Mohammed1,Algabri Mohammed1,Mekhtiche Mohamed1

Affiliation:

1. College of Computer and Information Sciences, King Saud University, Riyadh, Saudi Arabia

2. Department of Electronics, University of Batna, Batna, Algeria

Abstract

This article presents a new approach to control a wheeled mobile robot without velocity measurement. The controller developed is based on kinematic model as well as dynamics model to take into account parameters of dynamics. These parameters related to dynamic equations are identified using a proposed methodology. Input–output feedback linearization is considered with a slight modification in the mathematical expressions to implement the dynamic controller and analyze the nonlinear internal behavior. The developed controllers require sensors to obtain the states needed for the closed-loop system. However, some states may not be available due to the absence of the sensors because of the cost, the weight limitation, reliability, induction of errors, failure, and so on. Particularly, for the velocity measurements, the required accuracy may not be achieved in practical applications due to the existence of significant errors induced by stochastic or cyclical noise. In this article, Elman neural network is proposed to work as an observer to estimate the velocity needed to complete the full state required for the closed-loop control and account for all the disturbances and model parameter uncertainties. Different simulations are carried out to demonstrate the feasibility of the approach in tracking different reference trajectories in comparison with other paradigms.

Publisher

SAGE Publications

Subject

Mechanical Engineering

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