Real-time estimation of arterial travel time under congested conditions

Henry X. Liu, Wenteng Ma, Xinkai Wu, Heng Hu
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引用次数: 40

Abstract

It is well-known that accurate estimation of arterial travel time on signalised arterials is not an easy task because of the periodic disruption on traffic flow by signal lights. It becomes even more difficult when the signal links are congested with long queues because under such situations the queue length cannot be estimated using the traditional cumulative input–output curves. In this article, we extend the virtual probe model previously proposed by the authors to estimate arterial travel time with congested links. Specifically, we introduce a new queue length estimation method that can handle long queues. The queue length defined in this article includes both the standing queue, i.e. the motionless stacked vehicles behind the stop line, and the moving queue, i.e. those vehicles joining the discharging traffic after the last vehicle in the standing queue starts to move. The moving queue concept is important for the virtual probe method because moving queue also influences the manoeuvre behaviour of a virtual probe. We show that, using the ‘event’ data (including both time-stamped signal phase changes and vehicle-detector actuations) collected from traffic signal systems, time-dependent queue length (including both standing queue and moving queue) can be derived by examining the changes in an advance detector's occupancy profile within a cycle. The effectiveness of the improved virtual probe model for estimating arterial travel time under congested conditions is demonstrated through a field study at an 11-intersection corridor along France Avenue in Minneapolis, MN.
拥堵条件下动脉行驶时间的实时估计
众所周知,由于信号灯对交通流的周期性干扰,准确估计有信号的主干道上的通行时间不是一件容易的事。当信号链路被长队列阻塞时,这就变得更加困难了,因为在这种情况下,不能使用传统的累积输入输出曲线来估计队列长度。在本文中,我们扩展了作者先前提出的虚拟探针模型来估计具有拥塞链路的动脉旅行时间。具体来说,我们引入了一种新的队列长度估计方法,可以处理长队列。本文定义的队列长度既包括排队队列,即停止线后不动的堆放车辆,也包括移动队列,即在排队队列的最后一辆车开始移动后加入卸货交通的车辆。移动队列概念对于虚拟探针方法非常重要,因为移动队列也会影响虚拟探针的机动行为。我们表明,使用从交通信号系统收集的“事件”数据(包括时间戳信号相位变化和车辆检测器驱动),可以通过检查提前检测器在一个周期内的占用曲线的变化来导出与时间相关的队列长度(包括站立队列和移动队列)。通过在明尼苏达州明尼阿波利斯市法国大道沿线的11个路口走廊的实地研究,证明了改进的虚拟探针模型在拥挤条件下估计动脉旅行时间的有效性。
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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来源期刊
Transportmetrica
Transportmetrica 工程技术-运输科技
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