DocumentCode :
3269398
Title :
A combined hierarchical reinforcement learning based approach for multi-robot cooperative target searching in complex unknown environments
Author :
Yifan Cai ; Yang, Simon X. ; Xin Xu
Author_Institution :
Sch. of Eng., Univ. of Guelph, Guelph, ON, Canada
fYear :
2013
fDate :
16-19 April 2013
Firstpage :
52
Lastpage :
59
Abstract :
Effective cooperation of multi-robots in unknown environments is essential in many robotic applications, such as environment exploration and target searching. In this paper, a combined hierarchical reinforcement learning approach, together with a designed cooperation strategy, is proposed for the real-time cooperation of multi-robots in completely unknown environments. Unlike other algorithms that need an explicit environment model or select parameters by trial and error, the proposed cooperation method obtains all the required parameters automatically through learning. By integrating segmental options with the traditional MAXQ algorithm, the cooperation hierarchy is built. In new tasks, the designed cooperation method can control the multi-robot system to complete the task effectively. The simulation results demonstrate that the proposed scheme is able to effectively and efficiently lead a team of robots to cooperatively accomplish target searching tasks in completely unknown environments.
Keywords :
cooperative systems; learning (artificial intelligence); multi-robot systems; target tracking; MAXQ algorithm; combined hierarchical reinforcement learning based approach; complex unknown environments; cooperation hierarchy; cooperation method; multi-robot cooperative target searching; multi-robot system; segmental options; target searching tasks; Algorithm design and analysis; Dynamic programming; Learning (artificial intelligence); Real-time systems; Robot kinematics; Robot sensing systems; Hierarchical reinforcement learning; complex unknown environment; multi-robot cooperation; target searching;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Adaptive Dynamic Programming And Reinforcement Learning (ADPRL), 2013 IEEE Symposium on
Conference_Location :
Singapore
ISSN :
2325-1824
Type :
conf
DOI :
10.1109/ADPRL.2013.6614989
Filename :
6614989
Link To Document :
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