DocumentCode :
3152966
Title :
An indirect reinforcement learning approach for ramp control under incident-induced congestion
Author :
Chao Lu ; Haibo Chen ; Grant-Muller, Susan
Author_Institution :
Inst. for Transp. Studies, Univ. of Leeds, Leeds, UK
fYear :
2013
fDate :
6-9 Oct. 2013
Firstpage :
979
Lastpage :
984
Abstract :
Incident-induced congestion is one of the main causes for delays on motorways. Strategies for managing such congestion using traffic control technologies can be classified into model-based and model-free methods. Both methods possess their own merits but also have drawbacks. Dyna-Q architecture is a method that can combine model-free learning and model-based planning together to obtain the benefits from both sides. Based on the Dyna-Q architecture, an indirect reinforcement learning (IRL) approach is derived in this study. The new method is compared with two other methods, namely DRL and ALINEA. Simulation experiment results show that, with suitable weight values, IRL can achieve a superior performance in many scenarios. Moreover, compared with DRL, IRL has a much faster learning speed.
Keywords :
control engineering computing; learning (artificial intelligence); road traffic control; ALINEA methods; DRL methods; Dyna-Q architecture; IRL approach; congestion management; incident-induced congestion; indirect reinforcement learning approach; learning speed; model-based control methods; model-based planning; model-free control methods; model-free learning; motorways; ramp control; traffic control technologies; weight values; Aerospace electronics; Computational modeling; Learning (artificial intelligence); Planning; Roads; Traffic control; Vehicles;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Transportation Systems - (ITSC), 2013 16th International IEEE Conference on
Conference_Location :
The Hague
Type :
conf
DOI :
10.1109/ITSC.2013.6728359
Filename :
6728359
Link To Document :
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