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A Study on Deep Reinforcement Learning Based Traffic Signal Control for Mitigating Traffic Congestion

Farjana Islam Shashi, Salman Md Sultan, Afroza Khatun, Tangina Sultana, Tahira Alam

202118 citationsDOI

Abstract

Traffic Congestion (TC) is a crucial problem in many urban areas, leading to extreme delays in daily lives. Intelligent traffic light control is a solution that dynamically balances the traffic duration based on different road traffic flows. Deep reinforcement learning (Deep RL) is a prevalent method to adapt traffic signal control in active environments nowadays. Many researchers recently developed deep RL-based intelligent and adaptive traffic signal control systems based on different states (e.g., speed and the position of vehicles) in a particular environment. However, deep RL has not employed the control of the traffic signal by observing traffic flow in any busy road. In this paper, we proposed a deep Q-network (DQN) method based on different traffic flow information to control the traffic signal dynamically. The simulation results show improved results in terms of the average delays of the vehicles.

Topics & Concepts

Reinforcement learningTraffic flow (computer networking)Computer scienceTraffic optimizationTraffic congestion reconstruction with Kerner's three-phase theoryFloating car dataTraffic congestionSIGNAL (programming language)Intelligent transportation systemDeep learningReal-time computingNetwork traffic controlTraffic generation modelSimulationArtificial intelligenceComputer networkEngineeringTransport engineeringNetwork packetProgramming languageTraffic control and managementTraffic Prediction and Management TechniquesTransportation Planning and Optimization
A Study on Deep Reinforcement Learning Based Traffic Signal Control for Mitigating Traffic Congestion | Litcius