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Modeling and Design of Longitudinal and Lateral Control System with a FeedForward Controller for a 4 Wheeled Robot

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Author :  Younes El koudia, Jarou Tarik, Abdouni Jawad, Sofia El Idrissi and Elmahdi Nasri

Affiliation :  Advanced Systems Engineering Laboratory, National School of Applied Sciences, Ibn Tofail University, Kenitra, Morrocco

Country :  Morocco

Category :  Computer Science & Information Technology

Volume, Issue, Month, Year :  12, 1, February, 2023

Abstract :


The work show in this paper progresses through a sequence of physics-based increasing fidelity models that are used to design the robot controllers that respect the limits of the robot capabilities, develop a reference simple controller applicable to a large subset of tracking conditions, which include mostly non-invasive or highly dynamic movements and define path geometry following the control problem and develop both a simple geometric control and a dynamic model predictive control approach. In this paper, we propose for a nonlinear model with disturbance effect, the mathematical modeling of the longitudinal and lateral movements using PID with a feed-forward controller. This study proposes a feedforward controller to eliminate the disturbance effect.

Keyword :  Robot, tracking, path geometry, geometric control, predictive control, feed-forward controller

Journal/ Proceedings Name :  International Journal on Cybernetics & Informatics (IJCI)/ 2nd International Conference on Computing

URL :  https://ijcionline.com/paper/12/12123ijci07.pdf

User Name : Younes
Posted 24-01-2023 on 01:38:54 AEDT



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