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Journal article

Reinforcement Learning for True Adaptive Traffic Signal Control

Abstract

The ability to exert real-time, adaptive control of transportation processes is the core of many intelligent transportation systems decision support tools. Reinforcement learning, an artificial intelligence approach undergoing development in the machine-learning community, offers key advantages in this regard. The ability of a control agent to learn relationships between control actions and their effect on the environment while pursuing a goal is a distinct improvement over prespecified models of the environment. Prespecified models are a prerequisite of conventional control methods and their accuracy limits the performance of control agents. This paper contains an introduction to Q-learning, a simple yet powerful reinforcement learning algorithm, and presents a case study involving application to traffic signal control. Encouraging results of the application to an isolated traffic signal, particularly under variable traffic conditions, are presented. A broader research effort is outlined, including extension to linear and networked signal systems and integration with dynamic route guidance. The research objective involves optimal control of heavily congested traffic across a two-dimensional road networka challenging task for conventional traffic signal control methodologies.

Authors

Abdulhai B; Pringle R; Karakoulas GJ

Journal

Journal of Transportation Engineering Part A Systems, Vol. 129, No. 3, pp. 278–285

Publisher

American Society of Civil Engineers (ASCE)

Publication Date

May 1, 2003

DOI

10.1061/(asce)0733-947x(2003)129:3(278)

ISSN

2473-2907

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