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Article

Deep Reinforcement Learning Approach for Traffic Light Control and Transit Priority

Department of Civil, Environmental and Constructional Engineering, Sapienza University of Rome, Via Eudossiana, 18, 00184 Rome, Italy
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Future Transp. 2025, 5(4), 137; https://doi.org/10.3390/futuretransp5040137
Submission received: 8 October 2024 / Revised: 20 June 2025 / Accepted: 15 July 2025 / Published: 4 October 2025

Abstract

This study investigates the use of deep reinforcement learning techniques to improve traffic signal control systems through the integration of deep learning and reinforcement learning approaches. The purpose of a deep reinforcement learning architecture is to provide adaptive control via a reinforcement learning interface and deep learning for the representation of traffic queues with regards to signal timings. This has driven recent research, which has reported success in the use of such dynamic approaches. To further explore this success, we apply a deep reinforcement learning algorithm over a grid of 21 interconnected traffic signalized intersections and monitor its effectiveness. Unlike previous research, which often examined isolated or idealized scenarios, our model is applied to the real-world traffic network of Via “Prenestina” in eastern Rome. We utilize the Simulation of Urban MObility (SUMO) platform to simulate and test the model. This study has two main objectives: ensure the algorithm’s correct implementation in a real traffic network and assess its impact on public transportation, incorporating an additional priority reward for public transport. The simulation results confirm the model’s effectiveness in optimizing traffic signals and reducing delays for public transport.
Keywords: traffic light control; deep reinforcement learning; transit priority; sumo; traffic management traffic light control; deep reinforcement learning; transit priority; sumo; traffic management

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MDPI and ACS Style

Mansouryar, S.; Colombaroni, C.; Isaenko, N.; Fusco, G. Deep Reinforcement Learning Approach for Traffic Light Control and Transit Priority. Future Transp. 2025, 5, 137. https://doi.org/10.3390/futuretransp5040137

AMA Style

Mansouryar S, Colombaroni C, Isaenko N, Fusco G. Deep Reinforcement Learning Approach for Traffic Light Control and Transit Priority. Future Transportation. 2025; 5(4):137. https://doi.org/10.3390/futuretransp5040137

Chicago/Turabian Style

Mansouryar, Saeed, Chiara Colombaroni, Natalia Isaenko, and Gaetano Fusco. 2025. "Deep Reinforcement Learning Approach for Traffic Light Control and Transit Priority" Future Transportation 5, no. 4: 137. https://doi.org/10.3390/futuretransp5040137

APA Style

Mansouryar, S., Colombaroni, C., Isaenko, N., & Fusco, G. (2025). Deep Reinforcement Learning Approach for Traffic Light Control and Transit Priority. Future Transportation, 5(4), 137. https://doi.org/10.3390/futuretransp5040137

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