Abstract

In this article, we introduce a localization system to reduce the accumulation of errors existing in the dead-reckoning method of mobile robot localization. Dead-reckoning depends on the information that comes from the encoders. Many factors, such as wheel slippage, surface roughness, and mechanical tolerances, affect the accuracy of dead-reckoning. Therefore, an accumulation of errors exists in the dead-reckoning method. In this article, we propose a new localization system to enhance the localization operation of the mobile robots. The proposed localization system uses the extended Kalman filter combined with infrared sensors in order to solve the problems of dead-reckoning. The proposed system executes the extended Kalman filter cycle, using the walls in the working environment as references (landmarks), to correct errors in the robot’s position (positional uncertainty). The accuracy and robustness of the proposed method are evaluated in the experiment results’ section.

Highlights

  • Accurate localization information is very important for the navigation system of autonomous mobile robots in any environment

  • The dead-reckoning method depends on the information coming from the encoders, which is subject to many problems, some of which are slipping of the wheels, roughness of the ground surface, and tolerance rate of the machine

  • The Extended Kalman filter (EKF) is implemented using the fusion-based module to enhance the accuracy of the localization of wheeled mobile robot

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Summary

Introduction

Accurate localization information is very important for the navigation system of autonomous mobile robots in any environment. In such problems, KF can play an important role. The aim of this research is to improve the localization accuracy of mobile robots, by adding the EKF and infrared (IR) sensor to the dead-reckoning method. Section ‘‘Background’’ presents the background to the design, which includes a mobile robotics kinematic model, and dead-reckoning.

Literature review
Background
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