DocumentCode
1850298
Title
Reinforcement learning based group navigation approach for multiple autonomous robotic system
Author
Azouaoui, O. ; Cherifi, A. ; Bensalem, R. ; Farah, A.
Author_Institution
Laboratoire de Robotique et d´´Intelligence Artificielle, Centre de Developpement des Technol. Avancees, Algiers, Algeria
Volume
3
fYear
2005
fDate
2005
Firstpage
1539
Abstract
In several complex applications, the use of multiple autonomous robotic systems (ARS) becomes necessary to achieve different tasks such as foraging and transport of heavy and large objects with less cost and more efficiency. They have to achieve a high level of flexibility, adaptability and efficiency in real environments. In this paper, a reinforcement learning (RL) based group navigation approach for multiple ARS is suggested. Indeed, the robots must have the ability to form geometric figures and navigate without collisions while maintaining the formation. Thus, each robot must learn how to take its place in the formation and avoid obstacles and other ARS from its interaction with the environment. This approach must provide ARS with capability to acquire the group navigation approach among several ARS from elementary behaviors by learning with trial and error search. Then, simulation results display the ability of the suggested approach to provide ARS with capability to navigate in a group formation in dynamic environments.
Keywords
collision avoidance; learning (artificial intelligence); mobile robots; multi-robot systems; telerobotics; collision avoidance behavior; elementary behaviors; group navigation approach; multiple autonomous robotic system; reinforcement learning; Application software; Costs; Displays; Humans; Intelligent robots; Learning; Navigation; Orbital robotics; Robot sensing systems; Space exploration;
fLanguage
English
Publisher
ieee
Conference_Titel
Mechatronics and Automation, 2005 IEEE International Conference
Conference_Location
Niagara Falls, Ont., Canada
Print_ISBN
0-7803-9044-X
Type
conf
DOI
10.1109/ICMA.2005.1626784
Filename
1626784
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