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Development of models for understanding causal relationships among activity and travel variables.

机译:开发用于理解活动和旅行变量之间因果关系的模型。

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摘要

Understanding joint and causal relationships among multiple endogenous variables has been of much interest to researchers in the field of activity and travel behavior modeling. Structural equation models have been widely developed for modeling and analyzing the causal relationships among travel time, activity duration, car ownership, trip frequency and activity frequency. In the model, travel time and activity duration are treated as continuous variables, while car ownership, trip frequency and activity frequency as ordered discrete variables. However, many endogenous variables of interest in travel behavior are not continuous or ordered discrete but unordered discrete in nature, such as mode choice, destination choice, trip chaining pattern and time-of-day choice (it can be classified into a few categories such as AM peak, midday, PM peak and off-peak). A modeling methodology with involvement of unordered discrete variables is highly desired for better understanding the causal relationships among these variables. Under this background, the proposed dissertation study will be dedicated into seeking an appropriate modeling methodology which aids in identifying the causal relationships among activity and travel variables including unordered discrete variables.;In this dissertation, the proposed modeling methodologies are applied for modeling the causal relationship between three pairs of endogenous variables: trip chaining pattern vs. mode choice, activity timing vs. duration and trip departure time vs. mode choice. The data used for modeling analysis is extracted from Swiss Travel Microcensus 2000. Such models provide us with rigorous criteria in selecting a reasonable application sequence of sub-models in the activity-based travel demand model system.
机译:对于活动和旅行行为建模领域的研究人员来说,了解多个内生变量之间的联合和因果关系已经引起了人们的极大兴趣。结构方程模型已经被广泛开发,用于对行驶时间,活动持续时间,汽车拥有量,行驶频率和活动频率之间的因果关系进行建模和分析。在模型中,旅行时间和活动持续时间被视为连续变量,而汽车拥有量,旅行频率和活动频率则被视为有序离散变量。但是,许多对旅行行为感兴趣的内生变量不是连续的或有序的离散的,而是本质上是无序的离散的,例如模式选择,目的地选择,行程链模式和一天中的时间选择(它可以分为几类,例如(如AM高峰,中午,PM高峰和非高峰)。为了更好地理解这些变量之间的因果关系,迫切需要一种涉及无序离散变量的建模方法。在这种背景下,本文的研究将致力于寻找一种合适的建模方法,以帮助识别活动和旅行变量之间的因果关系,包括无序离散变量。本论文将提出的建模方法应用于因果关系的建模。在三对内生变量之间:行程链模式与模式选择,活动时间与持续时间以及行程出发时间与模式选择。用于建模分析的数据摘自Swiss Travel Microcensus2000。此类模型为我们提供了在基于活动的旅行需求模型系统中选择子模型的合理应用顺序的严格标准。

著录项

  • 作者

    Ye, Xin.;

  • 作者单位

    University of South Florida.;

  • 授予单位 University of South Florida.;
  • 学科 Transportation.;Urban and Regional Planning.;Operations Research.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 215 p.
  • 总页数 215
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 综合运输;运筹学;区域规划、城乡规划;
  • 关键词

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