Enhancement of mobile robot localization using extended Kalman filter

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...

Full description

Bibliographic Details
Main Authors: Mohammed Faisal, Mansour Alsulaiman, Ramdane Hedjar, Hassan Mathkour, Mansour Zuair, Hamdi Altaheri, Mohammed Zakariah, Mohammed A Bencherif, Mohamed A Mekhtiche
Format: Article
Language:English
Published: SAGE Publishing 2016-11-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814016680142
id doaj-d3b12a4dfa464590957d8bce64ecf637
record_format Article
spelling doaj-d3b12a4dfa464590957d8bce64ecf6372020-11-25T03:20:34ZengSAGE PublishingAdvances in Mechanical Engineering1687-81402016-11-01810.1177/1687814016680142Enhancement of mobile robot localization using extended Kalman filterMohammed FaisalMansour AlsulaimanRamdane HedjarHassan MathkourMansour ZuairHamdi AltaheriMohammed ZakariahMohammed A BencherifMohamed A MekhticheIn 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.https://doi.org/10.1177/1687814016680142
collection DOAJ
language English
format Article
sources DOAJ
author Mohammed Faisal
Mansour Alsulaiman
Ramdane Hedjar
Hassan Mathkour
Mansour Zuair
Hamdi Altaheri
Mohammed Zakariah
Mohammed A Bencherif
Mohamed A Mekhtiche
spellingShingle Mohammed Faisal
Mansour Alsulaiman
Ramdane Hedjar
Hassan Mathkour
Mansour Zuair
Hamdi Altaheri
Mohammed Zakariah
Mohammed A Bencherif
Mohamed A Mekhtiche
Enhancement of mobile robot localization using extended Kalman filter
Advances in Mechanical Engineering
author_facet Mohammed Faisal
Mansour Alsulaiman
Ramdane Hedjar
Hassan Mathkour
Mansour Zuair
Hamdi Altaheri
Mohammed Zakariah
Mohammed A Bencherif
Mohamed A Mekhtiche
author_sort Mohammed Faisal
title Enhancement of mobile robot localization using extended Kalman filter
title_short Enhancement of mobile robot localization using extended Kalman filter
title_full Enhancement of mobile robot localization using extended Kalman filter
title_fullStr Enhancement of mobile robot localization using extended Kalman filter
title_full_unstemmed Enhancement of mobile robot localization using extended Kalman filter
title_sort enhancement of mobile robot localization using extended kalman filter
publisher SAGE Publishing
series Advances in Mechanical Engineering
issn 1687-8140
publishDate 2016-11-01
description 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.
url https://doi.org/10.1177/1687814016680142
work_keys_str_mv AT mohammedfaisal enhancementofmobilerobotlocalizationusingextendedkalmanfilter
AT mansouralsulaiman enhancementofmobilerobotlocalizationusingextendedkalmanfilter
AT ramdanehedjar enhancementofmobilerobotlocalizationusingextendedkalmanfilter
AT hassanmathkour enhancementofmobilerobotlocalizationusingextendedkalmanfilter
AT mansourzuair enhancementofmobilerobotlocalizationusingextendedkalmanfilter
AT hamdialtaheri enhancementofmobilerobotlocalizationusingextendedkalmanfilter
AT mohammedzakariah enhancementofmobilerobotlocalizationusingextendedkalmanfilter
AT mohammedabencherif enhancementofmobilerobotlocalizationusingextendedkalmanfilter
AT mohamedamekhtiche enhancementofmobilerobotlocalizationusingextendedkalmanfilter
_version_ 1724617951753011200