A lane-level dynamic traffic control system for driving efficiency optimization based on vehicular networks

Lien-Wu Chen, Chia-Chen Chang, Pranay Sharma, Jen-Hsiang Cheng, Chien-Cheng Wu, Y. Tseng
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引用次数: 3

Abstract

In this paper, we propose a lane-level dynamic traffic control (LDTC) system targeting at driving efficiency optimization. The LDTC system integrates vehicular networks with intersection cameras to collect fine-grained information of vehicles, such as turning intentions and lane positions. LDTC can maximize the intersection throughput and provide fairness among traffic flows. With vehicular networks, the traffic controller of an intersection can collect all turning information before vehicles make their turns. With intersection cameras, the lane positions of vehicles can be detected even if GPS is not accurate enough to provide lane localization. In addition, the traffic condition can be continually monitored as some vehicles are not equipped with onboard units for vehicular communications. In LDTC, while allocating the green light to the traffic flows with higher passing rates for throughput maximization, it also allocates the green light to the ones with lower passing rates for fairness provision. This paper demonstrates our current prototype.
基于车辆网络的行车效率优化的车道级动态交通控制系统
本文提出了一种以驾驶效率优化为目标的车道级动态交通控制系统。LDTC系统将车辆网络与路口摄像头集成在一起,收集车辆的细粒度信息,如转向意图和车道位置。LDTC可以最大限度地提高交叉口吞吐量,保证交通流之间的公平性。在车辆网络中,交叉口的交通控制器可以在车辆转弯前收集所有转弯信息。使用路口摄像头,即使GPS不够精确,无法提供车道定位,也可以检测到车辆的车道位置。此外,由于一些车辆没有配备车载通信装置,因此可以持续监控交通状况。在LDTC中,为了实现吞吐量最大化,在为通过率高的交通流分配绿灯的同时,也为通过率低的交通流分配绿灯,以保证公平性。本文展示了我们目前的原型。
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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