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Models and solution algorithms for transit and intermodal passenger assignment (development of FAST-TrIPs model).

机译:过境和联运旅客分配的模型和解决方案算法(FAST-TrIPs模型的开发)。

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摘要

In this study, a comprehensive set of transit, intermodal and multimodal assignment models (FAST-TrIPs) is developed for transportation planning and operations purposes. The core part of the models is a schedule-based transit assignment with capacity constraint and boarding priority. The problem is defined to model the system performance dynamically by taking into account the scheduled transit service and to model user behavior more realistically by taking into account capacity of transit vehicles and boarding priority for passengers arriving early to a stop or a transfer point. An optimization model is proposed for both deterministic and stochastic models, which includes a penalty term in the objective function to model the boarding priority constraint. The stochastic model is proposed based on logit route choice with flexibility on the level of stochasticity in route choice. Optimality conditions show that the models are consistent with network equilibrium and user behavior. An extension of the optimization models is proposed for multimodal assignment problem, in which the transit and auto networks interact dynamically.;To solve the proposed models, since the penalty term is non-linear and makes the model an asymmetric nonlinear optimization model with side constraints, a simulation-based approach is developed. The solution method incorporates the path assignment models and a mesoscopic transit passenger simulation in conjunction with Dynamic Traffic Assignment (DTA) models. The simulation model can capture detailed activities of transit passengers and determines the nonlinear penalty explicitly by reporting passengers' failure to board experience. Therefore, the main problem can be solved iteratively, by solving a relaxed problem and simulating the transit network in each iteration, until the convergence criterion is met. The relaxed problem is a path generation model and can be either a shortest/least-cost path or a logit-based hyperpath in the schedule-based transit network. An efficient set of path models are developed using Google's General Transit Feed Specification (GTFS) files, taking into account the transit network hierarchy for computational efficiency of the model.;A multimodal assignment model is also developed by integration of the proposed transit assignment model with DTA models. The model is based on simulation and is able to capture the effect of transit and auto mode on each other through an iterative solution method and feedback loop from the transit assignment model to the DTA models. In the multimodal assignment model, more realistic transit vehicle trajectories are generated in the DTA models and are used for assigning transit passengers to transit vehicles. In an application of the multimodal assignment, intermodal tours are modeled considering the timing of auto trips and transit connections, the schedule-based transit network, and the constraint on park-n-ride choice in a tour. The model can simulate the transit, auto, and intermodal tours together with high resolution and realistic user behavior.
机译:在这项研究中,为运输计划和运营目的开发了一套全面的过境,联运和多式联运分配模型(FAST-TrIP)。这些模型的核心部分是基于时间表的运输分配,其中包含容量限制和登机优先级。定义问题的目的是通过考虑预定的公交服​​务来动态地对系统性能进行建模,并通过考虑过境车辆的容量和提早到达停靠点或中转站的乘客的登机优先级来更实际地对用户行为进行建模。针对确定性模型和随机模型都提出了一种优化模型,该模型在目标函数中包括惩罚项,以对登机优先权约束进行建模。提出了一种基于logit路径选择的随机模型,该模型在路径选择的随机性上具有灵活性。最优性条件表明该模型与网络均衡和用户行为一致。提出了一种优化模型的扩展,用于多式联分配问题,其中运输网络和汽车网络动态交互。;为解决所提出的模型,由于惩罚项是非线性的,使模型成为具有侧约束的非对称非线性优化模型,开发了一种基于仿真的方法。该解决方案方法结合了路径分配模型和介观过境乘客模拟以及动态交通分配(DTA)模型。该仿真模型可以捕获过境乘客的详细活动,并通过报告乘客的登机失败情况来明确确定非线性惩罚。因此,可以通过解决一个松弛问题并在每次迭代中模拟公交网络来迭代地解决主要问题,直到满足收敛准则为止。宽松的问题是路径生成模型,并且可以是基于调度的传输网络中的最短/成本最低的路径,也可以是基于logit的超路径。使用Google的通用公交提要规范(GTFS)文件,开发了一套有效的路径模型,同时考虑了公交网络层次结构对模型的计算效率。;还通过将拟议的公交分配模型与DTA模型。该模型基于仿真,并且能够通过迭代求解方法以及从运输分配模型到DTA模型的反馈回路,捕获运输和自动模式对彼此的影响。在多模式分配模型中,在DTA模型中生成了更逼真的公交车辆轨迹,用于将公交乘客分配给公交车辆。在多模式分配的应用中,考虑自动旅行和公交连接的时间,基于计划的公交网络以及对旅行中的乘车不停选择的约束,对多式联运进行建模。该模型可以模拟运输,自动和联运旅行,以及高分辨率和逼真的用户行为。

著录项

  • 作者

    Khani, Alireza.;

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Transportation.;Urban and Regional Planning.;Engineering Civil.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 162 p.
  • 总页数 162
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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