Large-Scale Mixed-Traffic and Intersection Control using Multi-agent Reinforcement Learning
Large-Scale Mixed-Traffic and Intersection Control using Multi-agent Reinforcement Learning
Traffic congestion remains a significant challenge in modern urban networks. Autonomous driving technologies have emerged as a potential solution. Among traffic control methods, reinforcement learning has shown superior performance over traffic signals in various scenarios. However, prior research has largely focused on small-scale networks or isolated intersections, leaving large-scale mixed traffic control largely unexplored. This study presents the first attempt to use decentralized multi-agent reinforcement learning for large-scale mixed traffic control in which some intersections are managed by traffic signals and others by robot vehicles. Evaluating a real-world network in Colorado Springs, CO, USA with 14 intersections, we measure traffic efficiency via average waiting time of vehicles at intersections and the number of vehicles reaching their destinations within a time window (i.e., throughput). At 80% RV penetration rate, our method reduces waiting time from 6.17 s to 5.09 s and increases throughput from 454 vehicles per 500 seconds to 493 vehicles per 500 seconds, outperforming the baseline of fully signalized intersections. These findings suggest that integrating reinforcement learning-based control large-scale traffic can improve overall efficiency and may inform future urban planning strategies.
Songyang Liu、Muyang Fan、Weizi Li、Jing Du、Shuai Li
综合运输自动化技术、自动化技术设备
Songyang Liu,Muyang Fan,Weizi Li,Jing Du,Shuai Li.Large-Scale Mixed-Traffic and Intersection Control using Multi-agent Reinforcement Learning[EB/OL].(2025-04-06)[2025-07-17].https://arxiv.org/abs/2504.04691.点此复制
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