May 21, 2025
Conference Paper

Deep Multi-Agent Reinforcement Learning for Real-World Signalized Traffic Corridor Control

Abstract

Signalized traffic control problem has been addressed recently with deep Reinforcement Learning (RL) approaches involving diverse state, action, and reward structures. While significant progress has been noted in the literature, open challenges still remain in the areas of adaptive signal phase timing, coordination in a multi-intersection corridor setting, and consideration of real-world traffic conditions. In the context of deep RL-based problem framing, extensions are needed that enable adaptive signal phase timings in an intersection agent's action space, computationally efficient information sharing among neighboring signalized intersection agents along a corridor, and experimentation in realistic simulation environments. In this paper, we develop a deep Advantage Actor Critic (A2C) multi-agent RL (MARL) approach capturing the research extensions above and apply it within a real-world calibrated Aimsun Next traffic corridor simulation model based on traffic data from the City of Coral Gables, Florida. For a multi-intersection corridor control setting, our numerical simulation experiments with a decentralized A2C MARL algorithm applied at different time periods led to a total average corridor travel delay reduction (expressed in seconds/mile averaged over vehicles) from 4.9% to 19.9% compared to state-of-the-art actuated control.

Published: May 21, 2025

Citation

Shuvo S.S., S. Mukherjee, S. Chatterjee, S. Glavaski-Radovanovic, D.L. Vrabie, G. Canayon, and M. Juckes, et al. 2024. Deep Multi-Agent Reinforcement Learning for Real-World Signalized Traffic Corridor Control. In IEEE International Conference on Machine Learning and Applications (ICMLA 2024), December 18-20, 2024, Miami, FL, 644-651. Piscataway, New Jersey:IEEE. PNNL-SA-202823. doi:10.1109/ICMLA61862.2024.00093