FAIRLANE: A multi-agent approach to priority lane management in diverse traffic composition

被引:0
|
作者
Dubey, Rohit K. [1 ]
Dailisan, Damian [1 ]
Sanchez-Vaquerizo, Javier Argota [1 ]
Helbing, Dirk [1 ,2 ]
机构
[1] Swiss Fed Inst Technol, Computat Social Sci, Stampfenbachstr 48, CH-8006 Zurich, Switzerland
[2] Complex Sci Hub Vienna, Josefstadter Str 39, A-1080 Vienna, Austria
关键词
Right-of-way; Connected autonomous vehicles; Reinforcement learning; Priority lanes; Urban planning;
D O I
10.1016/j.trc.2024.104919
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
The rise of autonomous driving technologies prompts a reevaluation of traditional urban traffic control and lane management. Dedicated lanes for connected and autonomous vehicles (CAVs), with intermittent access for other vehicles, have been proven to enhance road capacity and reduce underutilization moderately. However, this assumes all non-CAVs are smart vehicles, which is different from the current baseline for the street vehicle mix. Presently, our streets feature a mix of CAVs, smart vehicles, and human-driven vehicles, and the research on dedicated lanes using the realistic mixed traffic environment is missing. In this paper, we investigate the enhancement of road utilization using realistic mixed traffic combinations and identify the penetration rate of CAVs and smart vehicles necessary to improve baseline utilization. Previous studies have focused on lane-management strategies in single-vehicle settings, neglecting the interaction of CAVs with neighboring CAVs and smart vehicles. Therefore, we propose a multi- agent reinforcement learning-based framework to facilitate fair utilization of priority lanes, considering driving comfort, traffic efficiency, and safety during lane-changing. Through multiple experiments on a realistic network, our results demonstrate that the proposed framework significantly improves traffic efficiency, particularly when the penetration rate of CAVs is below 40% and Semi-Autonomous Vehicles (SAVs) constitute 50% of the remaining vehicles. The framework outperforms traditional lane management strategies, reducing mean waiting time and increasing average speed. This study provides nuanced information on different vehicle penetration rates, enabling more informed decisions on when to install priority lanes. This highlights the importance of considering mixed traffic environments in designing autonomous vehicle infrastructure and sets the stage for future advancements in urban traffic management.
引用
收藏
页数:14
相关论文
共 50 条
  • [21] A multi-agent reinforcement learning approach to robot soccer
    Duan, Yong
    Cui, Bao Xia
    Xu, Xin He
    ARTIFICIAL INTELLIGENCE REVIEW, 2012, 38 (03) : 193 - 211
  • [22] Integrating Robot Assignment and Maintenance Management: A Multi-Agent Reinforcement Learning Approach for Holistic Control
    Bhatta, Kshitij
    Chang, Qing
    IEEE ROBOTICS AND AUTOMATION LETTERS, 2023, 8 (09) : 5338 - 5344
  • [23] Scalable Learning for Multi-Agent Route Planning: Adapting to Diverse Task Scales
    Qu S.
    Hu G.
    IEEE Transactions on Artificial Intelligence, 2024, 5 (10): : 1 - 15
  • [24] Cooperative Multi-agent Reinforcement Learning Models (CMRLM) for Intelligent Traffic Control
    Vidhate, Deepak A.
    Kulkarni, Parag
    2017 1ST INTERNATIONAL CONFERENCE ON INTELLIGENT SYSTEMS AND INFORMATION MANAGEMENT (ICISIM), 2017, : 325 - 331
  • [25] Satellite Network Traffic Scheduling Algorithm Based on Multi-Agent Reinforcement Learning
    Zhang, Tingting
    Zhang, Mingqi
    Yang, Lintao
    Dong, Tao
    Yin, Jie
    Liu, Zhihui
    Wu, Jing
    Jiang, Hao
    19TH IEEE INTERNATIONAL SYMPOSIUM ON PARALLEL AND DISTRIBUTED PROCESSING WITH APPLICATIONS (ISPA/BDCLOUD/SOCIALCOM/SUSTAINCOM 2021), 2021, : 761 - 768
  • [26] An Edge Based Multi-Agent Auto Communication Method for Traffic Light Control
    Wu, Qiang
    Wu, Jianqing
    Shen, Jun
    Yong, Binbin
    Zhou, Qingguo
    SENSORS, 2020, 20 (15) : 1 - 16
  • [27] Urban Traffic Control Using Distributed Multi-agent Deep Reinforcement Learning
    Kitagawa, Shunya
    Moustafa, Ahmed
    Ito, Takayuki
    PRICAI 2019: TRENDS IN ARTIFICIAL INTELLIGENCE, PT III, 2019, 11672 : 337 - 349
  • [28] GAN and Multi-Agent DRL Based Decentralized Traffic Light Signal Control
    Wang, Zixin
    Zhu, Hanyu
    He, Mingcheng
    Zhou, Yong
    Luo, Xiliang
    Zhang, Ning
    IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2022, 71 (02) : 1333 - 1348
  • [29] Learning Multi-Agent Communication with Policy Fingerprints for Adaptive Traffic Signal Control
    Zhao, Yifan
    Xu, Gangyan
    Du, Yali
    Fang, Meng
    2020 IEEE 16TH INTERNATIONAL CONFERENCE ON AUTOMATION SCIENCE AND ENGINEERING (CASE), 2020, : 266 - 273
  • [30] Intelligent Traffic Light Control Using Distributed Multi-agent Q Learning
    Liu, Ying
    Liu, Lei
    Chen, Wei-Peng
    2017 IEEE 20TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC), 2017,