首页> 外文期刊>Journal of Transportation Engineering >Development of a Data-Driven Platform for Transit Performance Measures Using Smart Card and GPS Data
【24h】

Development of a Data-Driven Platform for Transit Performance Measures Using Smart Card and GPS Data

机译:使用智能卡和GPS数据开发数据驱动平台,以进行公交绩效评估

获取原文
获取原文并翻译 | 示例
           

摘要

To improve customer satisfaction and reduce operation costs, transit authorities have been striving to monitor transit service quality and identify the key factors to enhance it. The recent advent of passive data collection technologies, e.g., automated fare collection (APC) and automated vehicle location (AVL), has shifted a data-poor environment to a data-rich environment and offered opportunities for transit agencies to conduct comprehensive transit system performance measures. However, most AFC and AVL systems are not designed for transit performance measures, implying that additional data processing and visualization procedures are needed to improve both data usability and accessibility. This study attempts to develop a data-driven platform for online transit performance monitoring. The primary data sources come from the AFC and AVL systems in Beijing, where a passenger's boarding stop (origin) and alighting stop (destination) on a flat-rate bus are not recorded. The individual transit rider's origin and destination can be estimated by utilizing a series of data-mining techniques, which are then incorporated into a regional-map platform for transit performance measures. A multilevel framework is proposed to calculate the network-level speed, route-level travel time reliability, stop-level ridership, and headway variance. These statistics are interactively displayed on a map through a simplified transit GIS data model. This platform not only serves as a data-rich visualization platform to monitor transit network performance for planning and operations, it also intends to take advantage of e-science initiative for data-driven transportation research and applications.
机译:为了提高客户满意度并降低运营成本,运输当局一直在努力监视运输服务质量并确定提高质量的关键因素。被动数据收集技术的最新出现,例如自动票价收集(APC)和自动车辆定位(AVL),已将数据贫乏的环境转变为数据丰富的环境,并为过境机构提供了实现综合过境系统性能的机会措施。但是,大多数AFC和AVL系统并不是为过境性能指标而设计的,这意味着需要额外的数据处理和可视化程序来改善数据的可用性和可访问性。这项研究试图开发一个数据驱动的平台,用于在线运输绩效监控。主要数据源来自北京的AFC和AVL系统,在该系统中,不记录统一费用公共汽车上的乘客上车站(原点)和下车站(目的地)。可以通过使用一系列数据挖掘技术来估计各个过境驾驶员的出发地和目的地,然后将这些数据挖掘技术合并到区域地图平台中以进行过境绩效评估。提出了一个多层次的框架来计算网络水平的速度,路线水平的旅行时间可靠性,停车水平的乘车率和车距变化。这些统计信息通过简化的公交GIS数据模型交互式地显示在地图上。该平台不仅可以用作数据丰富的可视化平台,以监控运输网络在规划和运营中的性能,还可以利用电子科学的主动性来进行数据驱动的运输研究和应用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

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