Cooperative Connected Autonomous Vehicles (CAV): Research, Applications and Challenges

Jianhua He, A. Radford, Laura Li, Zhiliang Xiong, Zuoyin Tang, Xiaoming Fu, S. Leng, Fan Wu, Kaisheng Huang, Jianye Huang, J. Zhang, Yan Zhang
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引用次数: 17

Abstract

Road accidents and traffic congestion are two critical problems for global transport systems. Connected vehicles (CV) and automated vehicles (AV) are among the most heavily researched and promising automotive technologies to reduce road accidents and improve road efficiency. However, both AV and CV technologies have inherent shortcomings, for example, line of sight sensing limitation of AV sensors and the dependency of high penetration rate for CVs. In this paper we present a cooperative connected intelligent vehicles (CAV) framework. It is motivated by the observation that vehicles are increasingly intelligent with various levels of autonomous functionalities. The vehicles intelligence is boosted by more sensing and computing resources. These sensor and computing resources of CAV vehicles and the transport infrastructure could be shared and exploited. With resource sharing and cooperation CAVs can have comprehensive perception of driving environments, and novel cooperative applications can be developed to improve road safety and efficiency (RSE). The key feature of the cooperative CAV system is the cooperation within and across the key players in the road transport systems and across system layers. For example, the various levels of cooperation include cooperative sensing, cooperative RSE applications and cooperation among the vehicles and among the vehicles and infrastructure. We will present the potentials that could be brought by cooperative CAV, the roadmap for research and development, the preliminary research results and open issues.
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合作互联自动驾驶汽车(CAV):研究、应用与挑战
道路事故和交通拥堵是全球交通系统面临的两个关键问题。联网汽车(CV)和自动驾驶汽车(AV)是研究最多、最有前途的汽车技术,可以减少道路事故,提高道路效率。然而,自动驾驶技术和自动驾驶技术都存在固有的缺陷,例如自动驾驶传感器的视线感知限制以及自动驾驶传感器对高渗透率的依赖。本文提出了一种协作式互联智能汽车(CAV)框架。其动机是观察到车辆越来越智能,具有各种级别的自主功能。更多的传感和计算资源提升了车辆的智能。这些自动驾驶汽车和交通基础设施的传感器和计算资源可以共享和利用。通过资源共享和合作,自动驾驶汽车可以对驾驶环境进行全面感知,并开发新的合作应用来提高道路安全与效率。协作式自动驾驶汽车系统的关键特征是道路运输系统中关键参与者之间以及跨系统层之间的合作。例如,不同层次的合作包括协同传感、协同RSE应用、车辆之间以及车辆与基础设施之间的合作。我们将介绍合作自动驾驶汽车可能带来的潜力、研发路线图、初步研究成果和有待解决的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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