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A framework to transform real-time GPS data derived from transit vehicles to determine speed-flow characteristics of arterials.

机译:一个框架,用于转换从运输车辆派生的实时GPS数据以确定动脉的速度流特征。

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摘要

Transportation professionals are increasingly looking at technology as a way of improving safety and mobility of the traveling public. Over the past decade, a number of technology-based systems have been designed and built in major metropolitan areas all over the United States. In recent years, there has been a lot of interest in “real time” transportation monitoring systems. In particular, highway and traffic engineers have focused on real time traffic monitoring systems, and transit engineers and operators have focused on real time vehicle monitoring systems.; The development of these real time monitoring systems has come with high initial setup costs. Application development, related to the utilization of this monitoring data, has so far been limited in scope. Traffic monitoring systems have been used primarily in the generation of traffic flow maps and incident detection. On the other hand, transit-monitoring systems have been used primarily in the generation of on-time reports and overall system performance. Is there any way by which information gathered by one system (e.g., the transit monitoring system) can be used to also monitor and assess information for the other system (e.g., the traffic system)?; This research looks at the use of real-time travel time and location data obtained from transit vehicles fitted with GPS units to derive relationships with average roadway speeds and levels of congestions. On-road travel time was obtained by using a test vehicle that “floated” in traffic. Three different mathematical procedures are used to derive this associative relationship between bus speeds and on-road travel conditions—linear regression, multiple regression, and neural networks. The results of this research show that neural networks produce the best results of the three models and can estimate roadway travel conditions over seventy percent of the time.
机译:运输专业人员越来越多地将技术视为提高旅行公众安全性和出行能力的一种方式。在过去的十年中,已经在美国主要的大都市地区设计和建造了许多基于技术的系统。近年来,人们对“实时”交通监控系统产生了浓厚的兴趣。特别是,公路和交通工程师专注于实时交通监控系统,而运输工程师和操作员则专注于实时车辆监控系统。这些实时监控系统的开发具有很高的初始设置成本。迄今为止,与该监视数据的利用相关的应用程序开发受到了限制。交通监控系统主要用于交通流图的生成和事件检测。另一方面,运输监控系统主要用于准时报告的生成和整体系统性能。是否可以通过任何方式将一个系统(例如,过境监视系统)收集的信息用于监视和评估另一系统(例如,交通系统)的信息?这项研究着眼于使用从装有GPS装置的过境车辆获得的实时旅行时间和位置数据,得出与平均道路速度和拥堵程度的关系。通过使用在交通中“浮动”的测试车辆来获得上路时间。三种不同的数学程序可用于得出公交车速度与道路行驶状况之间的这种关联关系-线性回归,多元回归和神经网络。这项研究的结果表明,神经网络可以产生三种模型的最佳结果,并且可以在百分之七十的时间内估计道路行驶状况。

著录项

  • 作者

    Faria, David Anthony.;

  • 作者单位

    The University of Texas at Arlington.;

  • 授予单位 The University of Texas at Arlington.;
  • 学科 Engineering Civil.; Transportation.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 136 p.
  • 总页数 136
  • 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 11:45:05

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