按需公共交通:一个马尔可夫连续逼近模型

Daniel F. Silva, A. Vinel, Bekircan Kirkici
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引用次数: 1

摘要

随着移动技术的进步,世界各地的公共交通机构已经开始积极尝试新的交通方式,其中许多可以被描述为按需公共交通。此类系统的设计和有效操作尤其具有挑战性,因为它们通常需要仔细平衡需求量和资源可用性。我们提出了一组按需公共交通的模型,这些模型结合了连续逼近方法和马尔可夫过程。我们的目标是开发一种易于处理的方法来评估和预测系统性能,特别关注于获得性能度量的概率分布。然后,这些信息可以用于资本规划,例如车队规模、合同和驾驶员调度等。本文给出了一种程式化的单车辆第一英里运行模型的解析解。然后,我们描述了对基本模型的几种扩展,包括针对多车辆情况的两种方法。我们使用计算实验来说明输入对性能指标的影响,并比较不同的运输方式。最后,我们包含了一个案例研究,使用从美国主要大都市地区的实际按需公共交通项目中收集的数据,以展示所提出的模型如何用于预测系统性能和支持决策。
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On-Demand Public Transit: A Markovian Continuous Approximation Model
With recent advances in mobile technology, public transit agencies around the world have started actively experimenting with new transportation modes, many of which can be characterized as on-demand public transit. Design and efficient operation of such systems can be particularly challenging, because they often need to carefully balance demand volume with resource availability. We propose a family of models for on-demand public transit that combine a continuous approximation methodology with a Markov process. Our goal is to develop a tractable method to evaluate and predict system performance, specifically focusing on obtaining the probability distribution of performance metrics. This information can then be used in capital planning, such as fleet sizing, contracting, and driver scheduling, among other things. We present the analytical solution for a stylized single-vehicle model of first-mile operation. Then, we describe several extensions to the base model, including two approaches for the multivehicle case. We use computational experiments to illustrate the effects of the inputs on the performance metrics and to compare different modes of transit. Finally, we include a case study, using data collected from a real-world pilot on-demand public transit project in a major U.S. metropolitan area, to showcase how the proposed model can be used to predict system performance and support decision making.
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