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An improved framework for dynamic origin-destination (O-D) matrix estimation.

机译:动态原始目标(O-D)矩阵估计的改进框架。

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摘要

This dissertation aims to improve the performance of existing assignment-based dynamic origin-destination (O-D) matrix estimation models to successfully apply Intelligent Transportation Systems (ITS) strategies for the purposes of traffic congestion relief and dynamic traffic assignment (DTA) in transportation network modeling.;The methodology framework has two advantages over the existing assignment-based dynamic O-D matrix estimation models. First, it combines an initial O-D estimation model into the estimation process to provide a high confidence level of initial input for the dynamic O-D estimation model, which has the potential to improve the final estimation results and reduce the associated computation time.;Second, the proposed methodology framework can automatically convert traffic volume deviation to traffic density deviation in the objective function under congested traffic conditions. Traffic density is a better indicator for traffic demand than traffic volume under congested traffic condition, thus the conversion can contribute to improving the estimation performance.;The proposed method indicates a better performance than a typical assignment-based estimation model (Zhou et al., 2003) in several case studies. In the case study for I-95 in Miami-Dade County, Florida, the proposed method produces a good result in seven iterations, with a root mean square percentage error (RMSPE) of 0.010 for traffic volume and a RMSPE of 0.283 for speed. In contrast, Zhou's model requires 50 iterations to obtain a RMSPE of 0.023 for volume and a RMSPE of 0.285 for speed. In the case study for Jacksonville, Florida, the proposed method reaches a convergent solution in 16 iterations with a RMSPE of 0.045 for volume and a RMSPE of 0.110 for speed, while Zhou's model needs 10 iterations to obtain the best solution, with a RMSPE of 0.168 for volume and a RMSPE of 0.179 for speed.;The successful application of the proposed methodology framework to real road networks demonstrates its ability to provide results both with satisfactory accuracy and within a reasonable time, thus establishing its potential usefulness to support dynamic traffic assignment modeling, ITS systems, and other strategies.
机译:本文旨在提高现有基于赋值的动态原产地(OD)矩阵估计模型的性能,以成功地将智能运输系统(ITS)策略应用于交通网络建模中的缓解交通拥堵和动态交通分配(DTA)与现有的基于分配的动态OD矩阵估计模型相比,该方法框架具有两个优势。首先,它将初始OD估计模型结合到估计过程中,以为动态OD估计模型提供较高的初始输入置信度,这有可能改善最终估计结果并减少相关的计算时间。提出的方法框架可以在交通拥挤的情况下,自动将交通量偏差转换为目标函数中的交通密度偏差。在交通拥挤的情况下,交通密度比交通量更好地指示交通需求,因此转换可以有助于提高估计性能。;所提出的方法比典型的基于分配的估计模型具有更好的性能(Zhou等人, (2003)。在佛罗里达州迈阿密戴德县的I-95案例研究中,提出的方法在七个迭代中产生了良好的结果,交通量的均方根误差(RMSPE)为0.010,速度的均方根误差为0.283。相比之下,Zhou的模型需要进行50次迭代才能获得体积的RMSPE为0.023和速度的RMSPE为0.285。在佛罗里达州杰克逊维尔的案例研究中,提出的方法在16次迭代中获得了收敛解,体积RMSPE为0.045,速度RMSPE为0.110,而Zhou的模型需要10次迭代才能获得最佳解,RMSPE为体积为0.168,速度为RMSPE为0.179 。;成功地将拟议的方法框架应用于实际道路网络,证明了其能够在令人满意的精度和合理的时间内提供结果的能力,从而确立了其潜在的实用性来支持动态交通分配建模,ITS系统和其他策略。

著录项

  • 作者

    Chi, Hongbo.;

  • 作者单位

    Florida International University.;

  • 授予单位 Florida International University.;
  • 学科 Engineering Civil.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 139 p.
  • 总页数 139
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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