Litcius/Paper detail

Intelligent Traffic Light Control by Exploring Strategies in an Optimised Space of Deep Q-Learning

Junxiu Liu, Sheng Qin, Yuling Luo, Yanhu Wang, Su Yang

2022IEEE Transactions on Vehicular Technology44 citationsDOI

Abstract

Intelligent traffic light control is one of the modern approaches to solve traffic congestion, where reinforcement learning is a widely used method. Conventionally, reinforcement learning is used to determine whether to change the current phase (or choose a traffic phase) after each small interval. One major drawback of these approaches is that it makes the current traffic light phase duration uncertain before the current phase terminates. Directly determining the duration of the traffic light phase can effectively avoid this shortcoming. An adaptive traffic light timing system is proposed in this paper which can directly control the phase duration. In the proposed system, the Q-learning algorithm is employed and the action space is defined as all possible phase durations. In addition, the reward function is redefined to guide the agent to balance more traffic metrics, and the state is redefined to reduce the state space. Finally, the proposed system is evaluated by equal, unequal, and complex traffic scenarios. Results show that the proposed system has a better performance compared with other methods in controlling traffic lights, even on complex traffic scenarios.

Topics & Concepts

Reinforcement learningDuration (music)Computer sciencePhase (matter)Interval (graph theory)Traffic congestionState spaceIntelligent transportation systemState (computer science)Road traffic controlControl (management)EngineeringArtificial intelligenceAlgorithmMathematicsTransport engineeringLiteratureArtStatisticsOrganic chemistryChemistryCombinatoricsTraffic control and managementTraffic Prediction and Management TechniquesAutonomous Vehicle Technology and Safety