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Traffic Signal Optimization for Multiple Intersections Based on Reinforcement Learning

Jaun Gu, Minhyuck Lee, Chulmin Jun, Yohee Han, Young-Chan Kim, Jun Won Kim

2021Applied Sciences27 citationsDOIOpen Access PDF

Abstract

In order to deal with dynamic traffic flow, adaptive traffic signal controls using reinforcement learning are being studied. However, most of the related studies are difficult to apply to the real field considering only mathematical optimization. In this study, we propose a reinforcement learning-based signal optimization model with constraints. The proposed model maintains the sequence of typical signal phases and considers the minimum green time. The model was trained using Simulation of Urban MObility (SUMO), a microscopic traffic simulator. The model was evaluated in the virtual environment similar to a real road with multiple intersections connected. The performance of the proposed model was analyzed by comparing the delay and number of stops with a reinforcement learning model that did not consider constraints and a fixed-time model. In a peak hour, the proposed model reduced the delay from 3 min 15 s to 2 min 15 s and the number of stops from 11 to 4.7 compared to the fixed-time model.

Topics & Concepts

Reinforcement learningSIGNAL (programming language)Computer scienceReinforcementTraffic flow (computer networking)SimulationTraffic signalSignal timingField (mathematics)Real-time computingArtificial intelligenceMathematicsEngineeringPure mathematicsProgramming languageStructural engineeringComputer securityTraffic control and managementTraffic Prediction and Management TechniquesTransportation Planning and Optimization
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