首页> 外文OA文献 >Integrating Data from Multiple Sources to Estimate Transit-Land Use Interactions and Time-Varying Transit Origin-Destination Demand
【2h】

Integrating Data from Multiple Sources to Estimate Transit-Land Use Interactions and Time-Varying Transit Origin-Destination Demand

机译:整合来自多个来源的数据以估计过境与土地使用的相互作用以及时变的过境起源地-目的地需求

摘要

This research contributes to a very active body of literature on the application of Automated Data Collection Systems (ADCS) and openly shared data to public transportation planning. It also addresses the interaction between transit demand and land use patterns, a key component of generating time-varying origin-destination (O-D) matrices at a route level. An origin-destination (O-D) matrix describes the travel demand between two different locations and is indispensable information for most transportation applications, from strategic planning to traffic control and management. A transit passenger's O-D pair at the route level simply indicates the origin and destination stop along the considered route. Observing existing land use types (e.g., residential, commercial, institutional) within the catchment area of each stop can help in identifying existing transit demand at any given time or over time. The proposed research addresses incorporation of an alighting probability matrix (APM) - tabulating the probabilities that a passenger alights at stops downstream of the boarding at a specified stop - into a time-varying O-D estimation process, based on the passenger's trip purpose or activity locations represented by the interactions between transit demand and land use patterns. In order to examine these interactions, this research also uses a much larger dataset that has been automatically collected from various electronic technologies: Automated Fare Collection (AFC) systems and Automated Passenger Counter (APC) systems, in conjunction with other readily available data such as Google's General Transit Feed Specification (GTFS) and parcel-level land use data. The large and highly detailed datasets have the capability of rectifying limitations of manual data collection (e.g., on-board survey) as well as enhancing any existing decision-making tools. This research proposes use of Google's GTFS for a bus stop aggregation model (SAM) based on distance between individual stops, textual similarity, and common service areas. By measuring land use types within a specified service area based on SAM, this research helps in advancing our understanding of transit demand in the vicinity of bus stops. In addition, a systematic matching technique for aggregating stops (SAM) allows us to analyze the symmetry of boarding and alightings, which can observe a considerable passenger flow between specific time periods and symmetry by time period pairs (e.g., between AM and PM peaks) on an individual day. This research explores the potential generation of a time-varying O-D matrix from APC data, in conjunction with integrated land use and transportation models. This research aims at incorporating all valuable information - the time-varying alighting probability matrix (TAPM) that represents on-board passengers' trip purpose - into the O-D estimation process. A practical application is based on APC data on a specific transit route in the Minneapolis - St. Paul metropolitan area. This research can also provide other practical implications. It can help transit agencies and policy makers to develop decision-making tools to support transit planning, using improved databases with transit-related ADCS and parcel-level land use data. As a result, this work not only has direct implications for the design and operation of future urban public transport systems (e.g., more precise bus scheduling, improve service to public transport users), but also for urban planning (e.g., for transit oriented urban development) and travel forecasting.
机译:这项研究为自动数据收集系统(ADCS)的应用以及公开共享的数据在公共交通规划中的应用提供了非常活跃的文献。它还解决了运输需求和土地利用模式之间的相互作用,这是在路线级别上生成时变起点-目的地(O-D)矩阵的关键组成部分。始发地(O-D)矩阵描述了两个不同位置之间的旅行需求,对于大多数交通应用(从战略规划到交通控制与管理)而言,这都是必不可少的信息。路线级别上的过境乘客的O-D对仅指示所考虑路线的起点和终点站。观察每个停靠站集水区内的现有土地使用类型(例如住宅,商业,机构),可以帮助确定在任何给定时间或一段时间内的现有过境需求。拟议的研究解决了基于乘客的出行目的或活动位置,将下车概率矩阵(APM)合并到一个随时间变化的OD估计过程中,该矩阵将乘客在指定停靠点登机下游的停靠点列表化以过境需求和土地利用方式之间的相互作用为代表。为了检查这些相互作用,本研究还使用了一个更大的数据集,该数据集已从各种电子技术中自动收集:自动票价收集(AFC)系统和自动旅客计数器(APC)系统,以及其他易于获得的数据,例如Google的通用公交提要规范(GTFS)和地块级土地使用数据。大型且高度详细的数据集具有纠正手动数据收集(例如车载调查)局限性的能力,并能够增强任何现有的决策工具。这项研究建议根据各个站点之间的距离,文本相似性和公共服务区域,将Google GTFS用于公交站点聚合模型(SAM)。通过基于SAM测量指定服务区域内的土地使用类型,这项研究有助于增进我们对公交车站附近交通需求的了解。此外,系统的汇总停靠匹配技术(SAM)使我们能够分析上下车的对称性,从而可以观察特定时间段之间的大量客流,并按时间段对(例如AM和PM高峰之间)进行对称性观察。在每一天。这项研究探索了根据APC数据结合综合的土地利用和运输模型生成时变O-D矩阵的潜力。这项研究旨在将所有有价值的信息-代表机上乘客出行目的的时变下车概率矩阵(TAPM)-纳入O-D估算过程。实际应用基于明尼阿波利斯-圣保罗市区的特定运输路线上的APC数据。这项研究还可以提供其他实际意义。它可以使用经过改进的具有过境相关ADCS和地块级土地使用数据的数据库,帮助过境机构和决策者开发决策工具以支持过境规划。结果,这项工作不仅直接影响未来城市公共交通系统的设计和运行(例如,更精确的公交时刻表,改善对公共交通用户的服务),而且还影响城市规划(例如,面向公交的城市)开发)和旅行预测。

著录项

  • 作者

    Lee Sang Gu;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

相似文献

  • 外文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号