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Traffic Signal Control via Reinforcement Learning for Reducing Global Vehicle Emission

Bálint Kővári, László Szőke, Tamás Bécsi, Szilárd Aradi, Péter Gáspár

2021Sustainability21 citationsDOIOpen Access PDF

Abstract

The traffic signal control problem is an extensively researched area providing different approaches, from classic methods to machine learning based ones. Different aspects can be considered to find an optima, from which this paper emphasises emission reduction. The core of our solution is a novel rewarding concept for deep reinforcement learning (DRL) which does not utilize any reward shaping, hence exposes new insights into the traffic signal control (TSC) problem. Despite the omission of the standard measures in the rewarding scheme, the proposed approach can outperform a modern actuated control method in classic performance measures such as waiting time and queue length. Moreover, the sustainability of the realized controls is also placed under investigation to evaluate their environmental impacts. Our results show that the proposed solution goes beyond the actuated control not just in the classic measures but in emission-related measures too.

Topics & Concepts

Reinforcement learningComputer scienceControl (management)SIGNAL (programming language)Reduction (mathematics)QueueCore (optical fiber)Scheme (mathematics)SustainabilityControl signalArtificial intelligenceTelecommunicationsMathematicsComputer networkTransmission (telecommunications)BiologyEcologyGeometryProgramming languageMathematical analysisTraffic control and managementVehicle emissions and performanceTransportation Planning and Optimization
Traffic Signal Control via Reinforcement Learning for Reducing Global Vehicle Emission | Litcius