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Dynamic origin-destination demand estimation and prediction for off-line and on-line dynamic traffic assignment operation.

机译:离线和在线动态交通分配操作的动态起点-目的地需求估计和预测。

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摘要

Time-dependent Origin-Destination (OD) demand information is a fundamental input for Dynamic Traffic Assignment (DTA) models to describe and predict time-varying traffic network flow patterns, as well as to generate anticipatory and coordinated control and information supply strategies for intelligent traffic network management. This dissertation addresses a series of critical and challenging issues in estimating and predicting dynamic OD demand for off-line and on-line DTA operation in a large-scale traffic network with various information sources.; Based on an iterative bi-level estimation framework, this dissertation aims to enhance the quality of OD demand estimates by combining available historical static demand information and time-varying traffic measurements into a multi-objective optimization framework that minimizes the overall sum of squared deviations. The multi-day link traffic counts are also utilized to estimate the variation in traffic demand over multiple days. To circumvent the difficulties of obtaining sampling rates in a demand population, this research proposes a novel OD demand estimation formulation to effectively exploit OD demand distribution information provided by emerging Automatic Vehicle Identification (AVI) sensor data, and presents several robust formulations to accommodate possible deviations from idealized conditions in the demand estimation process.; A structural real-time OD demand estimation and prediction model and a polynomial trend filter are developed to systematically model regular demand pattern information, structural deviations and random fluctuations, so as to provide reliable prediction and capture the structural changes in time-varying demand. Based on a Kalman filtering framework, an optimal adaptive updating procedure is further presented to use the real-time demand estimates to obtain a priori estimates of the mean and variance of regular demand patterns. To maintain a representation of the network states which consistent with that of the real-world traffic system in a real-time operational environment, this research proposes a dynamic OD demand optimal adjustment model and efficient sub-optimal feedback controllers to regulate the demand input for the real-time DTA simulator while reducing the adjustment magnitude.
机译:与时间有关的始发地(OD)需求信息是动态交通分配(DTA)模型的基本输入,用于描述和预测时变交通网络流模式,并生成智能的预期和协调控制及信息供应策略交通网络管理。本文针对具有各种信息源的大规模交通网络中离线和在线DTA运行的动态OD需求的估计和预测,解决了一系列关键和挑战性的问题。本文基于迭代的双层估计框架,旨在通过将可用的历史静态需求信息和时变流量测量值组合到一个使目标偏差平方和最小的多目标优化框架中,来提高OD需求估计的质量。多天链接流量计数也用于估算多天流量需求的变化。为了避免在需求总体中获取采样率的困难,本研究提出了一种新颖的OD需求估算公式,以有效利用新兴的自动车辆识别(AVI)传感器数据提供的OD需求分布信息,并提出了几种健壮的公式来适应可能的偏差从需求估算过程中的理想条件出发;开发了结构实时OD需求估计和预测模型以及多项式趋势过滤器,以对常规需求模式信息,结构偏差和随机波动进行系统建模,从而提供可靠的预测并捕获时变需求中的结构变化。基于卡尔曼滤波框架,进一步提出了一种最优的自适应更新程序,以使用实时需求估计来获得常规需求模式的均值和方差的先验估计。为了在实时操作环境中维持与真实交通系统网络状态一致的网络状态表示,本研究提出了一种动态OD需求最优调整模型和有效的次优反馈控制器来调节需求的输入。实时DTA仿真器,同时减小调整幅度。

著录项

  • 作者

    Zhou, Xuesong.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Transportation.; Operations Research.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 174 p.
  • 总页数 174
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 综合运输;运筹学;
  • 关键词

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