Research Progress on Key Technologies in the Cooperative Vehicle Infrastructure System

被引:3
|
作者
Lin H. [1 ]
Liu Y. [1 ]
Li S. [2 ]
Qu X. [1 ]
机构
[1] School of Vehicle and Mobility, Tsinghua University, Beijing
[2] School of Civil Engineering, Tsinghua University, Beijing
基金
中国国家自然科学基金;
关键词
autonomous decision-making; cooperative control; cooperative vehicle infrastructure system; driving cognition; fusion perception;
D O I
10.12141/j.issn.1000-565X.230200
中图分类号
学科分类号
摘要
With the steady growth of urban car ownership, the issue of traffic congestion is becoming increasingly prominent, bringing great pressure to urban development. To respond effectively to this challenge, it is critical to develop methods that can improve transport efficiency and reduce energy consumption. In current context, the Cooperative Vehicle Infrastructure System (CVIS), an ideal solution for realizing green and intelligent transportation systems, has become an important direction in both transportation research and practice. By integrating and optimizing various traffic resources, CVIS not only enhances traffic efficiency and reduces energy consumption but also provides key technical support for achieving“dual carbon”goals. This paper thoroughly analyzed the fundamental concepts, research methodologies and application scenarios of CVIS, and delved into its four core technological modules: fusion perception, driving cognition, autonomous decision-making, and cooperative control. The paper reviewed and summarized research achievements within these modules, ranging from traditional methods to the latest in deep reinforcement learning techniques. It also explored the potential applications of these technologies and methods for enhancing traffic efficiency, reducing energy consumption, and improving road safety. Finally, the paper scrutinized numerous challenges that CVIS may encounter in practical applications, including the security of information transmission, system stability, and environmental complexity. To overcome these challenges, the paper looked forward to the future development in four areas: developing datasets that integrate vehicle-side and roadside information, enhancing the fusion accuracy of multi-source perception information, improving the real-time performance and safety of CVIS, and optimizing multi-vehicle cooperative decision-making control methods under complex conditions. As a result, this paper not only has important reference value for the advancement of CVIS technology, but also provides important guidance for the future planning and construction of urban transportation systems. © 2023 South China University of Technology. All rights reserved.
引用
收藏
页码:46 / 67
页数:21
相关论文
共 103 条
  • [1] QU Xiaobo, LIU Yajun, CHEN Yuwei, Urban electric bus operation management: review and outlook [J], Journal of Automotive Safety and Energy, 13, 3, pp. 407-420, (2022)
  • [2] LIU Y., A deep learning approach for vehicle velocity prediction considering the influence factors of multiple lanes [J], Electronic Research Archive, 31, 1, pp. 401-420, (2023)
  • [3] QIN Yanyan, WANG Hao, WANG Wei, Fundamental diagram model of heterogeneous traffic flow mixed with cooperative adaptive cruise control vehicles and adaptive cruise control vehicles [J], China Journal of Highway and Transport, 30, 10, pp. 127-136, (2017)
  • [4] ZHANG Yi, YAO Danya, LI Li, Technologies and applications for intelligent vehicle-infrastructure cooperation systems, Journal of Transportation Systems Engineering and Information Technology, 21, 5, pp. 40-51, (2021)
  • [5] DING Fei, ZHANG Nan, LI Shengbo, A survey of architecture and key technologies of intelligent connected vehicle-road-cloud cooperation system [J], Acta Automatica Sinica, 48, 12, pp. 2863-2885, (2022)
  • [6] TIAN D,, ZHANG C,, DUAN X, An automatic car accident detection method based on cooperative vehicle infrastructure systems [J].IEEE Access, 7, pp. 127453-127463, (2019)
  • [7] ZHOU J,, TIAN D,, WANG Y, Reliability-optimal cooperative communication and computing in connected vehicle systems [J], IEEE Transactions on Mobile Computing, 19, 5, pp. 1216-1232, (2019)
  • [8] ZHANG Xinyu, ZOU Zhenghong, LI Zhiwei, Deep multi-modal fusion in object detection for autonomous driving, CAAI Transactions on Intelligent Systems, 15, 4, pp. 758-771, (2020)
  • [9] KIM T,, GHOSH J., Robust detection of non-motorized road users using deep learning on optical and lidar data, Proceedings of the 2016 IEEE 19th International Conference on Intelligent Transportation Systems (ITSC), pp. 271-276, (2016)
  • [10] Dair-v2x:A large-scale dataset for vehicle-infrastructure cooperative 3d object detection, Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 21361-21370, (2022)