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A real-time performance measurement system for arterial traffic signals.

机译:实时交通流量测量系统。

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摘要

Performance monitoring for arterial traffic control and management system is an area of emerging focus in the United States. To properly study traffic flow at signalized intersections, both arrival/departure traffic flow data and associated signal status data are required. Although many existing signal control systems are capable of generating data to support performance assessment, most do not make it "easy" for the managing agencies to prioritize improvements and plan for future needs. Indeed, the 2005 Traffic Signal Operation Self Assessment Survey indicated that the majority of agencies involved in the operation and maintenance of traffic signal systems do not monitor or archive traffic system performance data in an effort to improve their operation. Therefore, despite studies having shown that the benefits of investments in improved signal timing outweigh the costs by 40:1 or more, signal retiming is often not repeated frequently enough to account for rapidly changing traffic patterns, largely due to the expense of manual data collection and performance measurements.;The need to address the above problems inspired this research. The goal is to develop a real-time arterial performance measurement system, which can automatically collect and archive high-resolution traffic signal data, and build a rich list of performance measures. The objectives of this doctoral research are two-fold: (1) to develop a system for high-resolution traffic signal data collection, archival, and preprocessing; and (2) to develop a set of methodologies that can measure traffic signal performance, including queue length, delay and level of service (LOS) for individual intersections and travel time and number of stops for an arterial corridor. In this research, a system for high resolution traffic signal data collection is successfully built. The system, named as SMART-SIGNAL (Systematic Monitoring of Arterial Road Traffic and Signals), is an arterial data collection and performance measurement system, which simultaneously collects "event-based" high-resolution traffic data from multiple intersections and generates arterial performance measures in real time. In the SMART-SIGNAL system, a complete history of traffic signal control, including all signal events such as vehicle actuations on detectors and signal phase changes, is archived and stored.;Using the collected "event" data, mathematical models are built to calculate intersection and arterial performance measures. A time-dependent queue length estimation model is proposed that can handle long queues under both under-saturated and over-saturated conditions. The model examines the changes in signal detector's occupancy profile within a cycle, and derives queue length by identifying traffic flow pattern changes during the queue discharging process. A turning movement proportion estimation model is also offered in this thesis. Detector counts from surrounding intersections are used to calculate right turning traffic for the subject intersection.;An innovative algorithm is proposed in this research for arterial performance measurement by tracing virtual probe vehicles from origin to destination. One of three maneuvers: acceleration, deceleration or no-speed-change, is selected based on the current traffic states of the virtual probe. The step-by-step maneuver calculation stops until the virtual probe "arrives" at the destination, and various arterial performance measures, including travel time, can thus be estimated. An interesting property of the proposed model is that travel time estimation errors can be self-corrected with the signal status data, because the differences between a virtual probe vehicle and a real probe can be reduced when both of them meet the red signal phase. The virtual probe mimics regular travel behaviors of arterial drivers and thus can be treated as a representative vehicle traversing the arterial.;The SMART-SIGNAL data collection system has been installed on an 11-intersections arterial corridor along France Avenue in Hennepin County, Minnesota since February 2007. Event-based signal data are being collected in a 24/7 mode and then immediately archived in the SMART-SIGNAL system, thus yielding a tremendous amount of field data available for research. The field study shows that the proposed mathematical models can generate accurate time-dependent queue lengths, travel times, numbers of stops, and other performance measures under various traffic conditions.
机译:在美国,动脉交通控制和管理系统的性能监视是一个新兴的领域。为了正确研究信号交叉口的交通流量,既需要到达/出发交通流量数据,也需要相关的信号状态数据。尽管许多现有的信号控制系统都能够生成数据来支持性能评估,但是大多数管理机构并没有“轻松”地将改进的优先级和为未来的需求进行计划。实际上,2005年交通信号灯运行自我评估调查表明,参与交通信号灯系统运行和维护的大多数机构都没有监视或归档交通系统性能数据,以改善其运行状况。因此,尽管研究表明投资改善信号定时的好处超过成本40:1或更多,但信号重定时通常没有足够频繁地重复以说明快速变化的流量模式,这主要是由于手动数据收集的费用解决上述问题的需要启发了这项研究。目标是开发一个实时动脉性能测量系统,该系统可以自动收集和存档高分辨率交通信号数据,并建立丰富的性能测量列表。这项博士研究的目标有两个:(1)开发用于高分辨率交通信号数据收集,存档和预处理的系统; (2)开发一套可测量交通信号性能的方法,包括队列长度,单个交叉路口的延误和服务水平(LOS)以及动脉走廊的行进时间和停靠点数量。在这项研究中,成功​​建立了高分辨率交通信号数据收集系统。该系统名为SMART-SIGNAL(动脉道路交通和信号的系统监视),是一种动脉数据收集和性能测量系统,可同时从多个路口收集“基于事件”的高分辨率交通数据,并生成动脉性能度量实时。在SMART-SIGNAL系统中,交通信号灯控制的完整历史记录,包括所有信号事件,例如检测器上的车辆致动和信号相位变化,都将被存储。;使用收集的“事件”数据,建立数学模型来计算交叉和动脉性能指标。提出了一种与时间有关的队列长度估计模型,该模型可以在饱和不足和过度饱和条件下处理长队列。该模型检查一个周期内信号检测器占用情况的变化,并通过识别队列释放过程中的业务流模式变化来得出队列长度。本文还提供了转弯运动比例估计模型。使用来自周围交叉路口的检测器计数来计算主题交叉路口的右转交通量。;本研究中提出了一种创新的算法,通过跟踪虚拟探测车从始发地到目的地来进行动脉性能测量。根据虚拟探测器的当前交通状况,选择以下三种操作之一:加速,减速或无速度变化。逐步操作计算将停止,直到虚拟探测器“到达”目的地为止,从而可以估算各种动脉性能指标,包括行驶时间。所提出的模型的一个有趣的特性是,可以用信号状态数据对行进时间估计误差进行自我校正,因为当虚拟探测车和真实探测车都满足红色信号相位时,它们的差异就可以减小。虚拟探头模拟了动脉驾驶员的正常行驶行为,因此可以看作是横穿动脉的代表车辆。SMART-SIGNAL数据收集系统已安装在明尼苏达州亨内平县法国大道沿11个十字路口的走廊上2007年2月。基于事件的信号数据将以24/7模式收集,然后立即存储在SMART-SIGNAL系统中,从而产生了大量可用于研究的现场数据。现场研究表明,所提出的数学模型可以在各种交通状况下生成准确的与时间相关的队列长度,行进时间,停靠点数以及其他性能指标。

著录项

  • 作者

    Ma, Wenteng.;

  • 作者单位

    University of Minnesota.;

  • 授予单位 University of Minnesota.;
  • 学科 Engineering Civil.;Transportation.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 175 p.
  • 总页数 175
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;综合运输;
  • 关键词

  • 入库时间 2022-08-17 11:38:57

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