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Traffic flow modeling with real-time data for on-line network traffic estimation and prediction.

机译:具有实时数据的流量流建模,用于在线网络流量估计和预测。

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摘要

This research addresses the problem of modeling time-dependent traffic flow with real-time traffic sensor data for the purpose of online traffic estimation and prediction to support ATMS/ATIS in an urban transportation network. The fundamental objectives of this study are to formulate and develop a dynamic traffic flow model driven by real-world observations, which is suitable for mesoscopic type dynamic traffic assignment simulation.; A dynamic speed-density relation is identified by incorporating the physical concept in continuum and kinetic models, coupled with the structural formulation of the transfer function model which is used to represent dynamic relationship. The model recognizes the time-lagged response of speed to the influential factors (speed relaxation, speed convection and density anticipation) as well as the potential autocorrelated system noise. The procedures adapted from transfer function theory are presented for the model estimation and speed prediction using the real-time data. Speed prediction is performed by means of minimum mean square error and conditional on the past information.; In the context of real-time dynamic traffic assignment simulation operation, a framework based on the rolling-horizon methodology is proposed for the adaptive calibration of dynamic speed-density relations to reflect more recent traffic trends. To deal with the different time scales in the data observation interval and the traffic simulation interval, an approximation procedure is proposed to derive proper impulse responses for traffic simulation. Short term correction procedures, based on feedback control theory, are formulated to identify discrepancies between simulation and real-world observation in order to adjust speed periodically.; Numerical tests to evaluate the dynamic model are conducted in a standalone manner firstly and then by integrating the model into a real-time DTA system. The overall conclusion from the results is that the proposed dynamic model is preferable in the context of real-time application to the use of conventional static traffic flow models due to its higher responsiveness and accuracy, although many other aspects remain to be investigated in further steps.
机译:这项研究解决了使用实时交通传感器数据对时间相关交通流进行建模的问题,目的是在线交通估算和预测以支持城市交通网络中的ATMS / ATIS。这项研究的基本目标是建立和开发由现实世界的观测驱动的动态交通流模型,该模型适用于介观类型的动态交通分配模拟。通过将物理概念纳入连续模型和动力学模型,并结合用于表示动力学关系的传递函数模型的结构公式,可以确定动态速度-密度关系。该模型识别速度对影响因素(速度松弛,速度对流和密度预期)的时滞响应以及潜在的自相关系统噪声。提出了基于传递函数理论的过程,用于使用实时数据进行模型估计和速度预测。通过最小均方误差并以过去的信息为条件进行速度预测。在实时动态交通分配仿真操作的背景下,提出了一种基于滚动水平方法的框架,用于动态速度-密度关系的自适应标定,以反映最新的交通趋势。为了处理数据观察间隔和交通模拟间隔中不同的时间尺度,提出了一种近似程序来为交通模拟导出适当的脉冲响应。制定了基于反馈控制理论的短期校正程序,以识别仿真和实际观察之间的差异,以便定期调整速度。首先以独立方式进行评估动态模型的数值测试,然后将模型集成到实时DTA系统中。结果的总体结论是,由于动态响应模型的响应性和准确性较高,因此在实时应用的情况下,该模型优于常规静态交通模型,尽管还有很多其他方面需要进一步研究。

著录项

  • 作者

    Qin, Xiao.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Engineering Civil.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 185 p.
  • 总页数 185
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;
  • 关键词

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