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Locating Counting Sensors in Traffic Network to Estimate Origin-Destination Volumes.

机译:在交通网络中定位计数传感器,以估算始发地目的地数量。

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摘要

Improving the quality of Origin-Destination (OD) demand estimates increases the effectiveness of design, evaluation and implementation of traffic planning and management systems. The associated bilevel Sensor Location Flow-Estimation problem considers two important research questions: (1) how to compute the best estimates of the flows of interest by using anticipated data from given candidate sensors location; and (2) how to decide on the optimum subset of links where sensors should be located. In this dissertation, a decision framework is developed to optimally locate and obtain high quality OD volume estimates in vehicular traffic networks. The framework includes a traffic assignment model to load the OD traffic volumes on routes in a known choice set, a sensor location model to decide on which subset of links to locate counting sensors to observe traffic volumes, and an estimation model to obtain best estimates of OD or route flow volumes.;The dissertation first addresses the deterministic route flow estimation problem given apriori knowledge of route flows and their uncertainties. Two procedures are developed to locate "perfect" and "noisy" sensors respectively. Next, it addresses a stochastic route flow estimation problem. A hierarchical linear Bayesian model is developed, where the real route flows are assumed to be generated from a Multivariate Normal distribution with two parameters: "mean" and "variance-covariance matrix". The prior knowledge for the "mean" parameter is described by a probability distribution. When assuming the "variance-covariance matrix" parameter is known, a Bayesian A-optimal design is developed. When the "variance-covariance matrix" parameter is unknown, Markov Chain Monte Carlo approach is used to estimate the aposteriori quantities. In all the sensor location model the objective is the maximization of the reduction in the variances of the distribution of the estimates of the OD volume. Developed models are compared with other available models in the literature. The comparison showed that the models developed performed better than available models.
机译:提高始发地(OD)需求估计的质量可以提高交通规划和管理系统的设计,评估和实施的效率。相关的双层传感器位置流量估计问题考虑了两个重要的研究问题:(1)如何通过使用给定候选传感器位置的预期数据来计算感兴趣的流量的最佳估计; (2)如何决定传感器应放置的最佳链路子集。本文提出了一种决策框架,以在交通网络中最优地定位和获得高质量的OD量估计值。该框架包括一个流量分配模型,用于在已知选择集中将OD流量加载到路线上;传感器位置模型,用于确定要定位计数传感器的链路的子集,以观察流量,以及估计模型,用于获得最佳估计量。 OD或路径流量。论文首先解决了路径流量及其不确定性的先验知识,确定性路径流量估计问题。开发了两种程序来分别定位“完美”和“嘈杂”传感器。接下来,它解决了随机路线流量估计问题。建立了分层线性贝叶斯模型,其中假定实际路线流是由具有两个参数的多元正态分布生成的:“均值”和“方差-协方差矩阵”。 “平均”参数的先验知识通过概率分布来描述。当假定“方差-协方差矩阵”参数为已知时,开发贝叶斯A最优设计。当“方差-协方差矩阵”参数未知时,使用马尔可夫链蒙特卡罗方法估计后验数量。在所有传感器位置模型中,目标是最大程度地减少OD量估计值分布的方差。将开发的模型与文献中的其他可用模型进行比较。比较表明,开发的模型比可用模型表现更好。

著录项

  • 作者

    Wang, Ning.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Engineering Industrial.;Engineering Civil.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 169 p.
  • 总页数 169
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:52

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