JOURNAL ARTICLE

Large-Scale Traffic Signal Control Using Constrained Network Partition and Adaptive Deep Reinforcement Learning

Hankang GuShangbo WangXiaoguang MaDongyao JiaGuoqiang MaoEng Gee LimCih-Wei Wong

Year: 2024 Journal:   IEEE Transactions on Intelligent Transportation Systems Vol: 25 (7)Pages: 7619-7632   Publisher: Institute of Electrical and Electronics Engineers

Abstract

Multi-agent Deep Reinforcement Learning (MADRL) based traffic signal control lbecomes a popular research topic in recent years. To alleviate the scalability issue of completely centralized reinforcement learning (RL) techniques and the non-stationarity issue of completely decentralized RL techniques on large-scale traffic networks, some literature utilizes a regional control approach where the whole network is firstly partitioned into multiple disjoint regions, followed by applying the centralized RL approach to each region. However, the existing partitioning rules either have no constraints on the topology of regions or require the same topology for all regions. Meanwhile, no existing regional control approach explores the performance of optimal joint action in an exponentially growing regional action space when intersections are controlled by 4-phase traffic signals (EW, EWL, NS, NSL). In this paper, we propose a novel RL training framework named RegionLight to tackle the above limitations. Specifically, the topology of regions is firstly constrained to a star network which comprises one center and an arbitrary number of leaves. Next, the network partitioning problem is modeled as an optimization problem to minimize the number of regions. Then, an Adaptive Branching Dueling Q-Network (ABDQ) model is proposed to decompose the regional control task into several joint signal control sub-tasks corresponding to particular intersections. Subsequently, these sub-tasks maximize the regional benefits cooperatively. Finally, the global control strategy for the whole network is obtained by concatenating the optimal joint actions of all regions. Experimental results demonstrate the superiority of our proposed framework over all baselines under both real and synthetic scenarios in all evaluation metrics.

Keywords:
Reinforcement learning Computer science Partition (number theory) Artificial intelligence Scale (ratio) SIGNAL (programming language) Traffic signal Control (management) Real-time computing Mathematics Geography

Metrics

17
Cited By
9.18
FWCI (Field Weighted Citation Impact)
59
Refs
0.96
Citation Normalized Percentile
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Citation History

Topics

Traffic Prediction and Management Techniques
Physical Sciences →  Engineering →  Building and Construction
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