论文标题

使用队列长度信息的简单流量信号控制

A Simple Traffic Signal Control Using Queue Length Information

论文作者

Comert, Gurcan, Cetin, Mecit, Begashaw, Negash

论文摘要

传感器技术,尤其是新兴连接和自动驾驶汽车的发展,有助于实时对信号交叉点方法进行更好的队列长度(QL)测量。当前,有非常有限的方法实时利用QL信息来增强信号交叉点的性能。在本文中,我们介绍了QL估计的方法和一种对照算法,该算法根据QLS调节每个周期处的驱动信号中的最大绿时间。提出的方法是在一个与随机和排的单个交集中实现的,并在Vissim(微观交通模拟环境)中进行了评估,假设可以使用100%准确的循环循环排队长度信息。为了测试该方法的鲁棒性,在增加交通需求的情况下,进行数值实验,相对于优化信号时正时参数的需求水平增加20 \%。与典型的完全散发信号控制相比,提出的基于QL的方法可改善平均延迟,停止次数和随机到达的QL,分别提高6%,9%和10%。此外,该方法将平均延迟,停止次数和QL分别提高3%,3%和11%的排型车辆到达。

Developments in sensor technologies, especially emerging connected and autonomous vehicles, facilitate better queue length (QL) measurements on signalized intersection approaches in real time. Currently there are very limited methods that utilize QL information in real-time to enhance the performance of signalized intersections. In this paper we present methods for QL estimation and a control algorithm that adjusts maximum green times in actuated signals at each cycle based on QLs. The proposed method is implemented at a single intersection with random and platoon arrivals, and evaluated in VISSIM (a microscopic traffic simulation environment) assuming 100 % accurate cycle-by-cycle queue length information is available. To test the robustness of the method, numerical experiments are performed where traffic demand is increased and by 20\% relative to the demand levels for which signal timing parameters are optimized. Compared to the typical fully-actuated signal control, the proposed QL-based method improves average delay, number of stops, and QL for random arrivals, by 6 %, 9 %, and 10 % respectively. In addition, the method improves average delay, number of stops, and QL by 3 %, 3 %, and 11 % respectively for platoon vehicle arrivals.

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