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Activity-based Travel Demand Modeling System In Suburban Area

Posted on:2010-09-23Degree:DoctorType:Dissertation
Country:ChinaCandidate:H Z LinFull Text:PDF
GTID:1119360302971482Subject:Management Science and Engineering
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The transportation problems such as congestion and air pollution have already attracted much more attention than ever. Kinds of transportation strategies such as congestion pricing and construction of infrastructure have been adopted to alleviate the transportation problems. However, these shifts of transportation systems all involve great cost. Therefore, an accurate forecast on the response of travel demand to the changes in the attributes of the transportation system is required in planning and evaluating future transportation strategy. We try to develop a comprehensive activity-based travel demand modeling system in this dissertation in order to make travel demand forecasting more accurate and realistic as well as easy to use. The modeling system comprises four steps sequentially, that are, lifestyle basis of activity decisions, activity generation, destination and mode choice, and departure time choice.Numerous attempts have been made, especially in the last ten years, to model decision processes more realistically in formulating activity-travel patterns. Many of these approaches are very complex and there is always the issue of trade-offs between behavioral realism and complexity. Due to the potential heterogeneous responses to transportation policy and land use plan and the existence of various lifestyles in a population, it is often advantageous to first divide individuals of a study area to several lifestyle clusters before the development of separate activity-based travel demand models. By doing so, the complexity of the models can be greatly reduced but at the same time, the activity and travel patterns have been implicitly considered.There has been considerable research conducted over the last 20 years focused on trip/activity generation. The range of statistical models commonly applied mainly includes two types. One is discrete choice models and the other is count data models. There is little discussion in the literature comparing different statistical modeling approaches, identifying which statistical models are most appropriate for modeling trip/activity generation data. The current dissertation compares the two model systems to identify which one can give a more realistic representation for the patterns of activities performed by suburban residents.After deciding the activity type, an individual then comes to the decision of choosing a suitable destination and transportation mode. People are supposed to select a destination first and then choose a particular transportation mode to the destination. In the current dissertation, the destination choice and mode choice given destination is modeled by using generalized logit model and binary logit model separately. Finally, Bayesian theorem is used to develop an activity-based travel demand model that incorporates the interrelationship between activity-type, destination and mode choices.After deciding destination and mode choice, a natural question is about departure time choice. The current study formulates and applies a random-coefficients Cox hazard model to analyze departure time choice for non-workers in the context of daily activity schedules. The model recognizes the presence of unobserved heterogeneity affecting departure time decisions by means of random-coefficients. Nonparametric approach and parametric approach are used separately to estimate the parameters. In addition, the model uses a non-parametric baseline hazard distribution which does not impose any a priori parametric form on the departure time distribution. All of these analyses provide valuable insights into our understanding of the determinants of departure time choice.The dissertation concludes with a discussion on modeling summaries and provides some recommendations for future study.
Keywords/Search Tags:travel demand, lifestyle basis, activity generation, destination choice, mode choice, departure time choice
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