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Discovering Station Patterns of Urban Transit Network with Multisource Data: Empirical Evidence in Jinan, China

机译:多源数据发现城市过境网络的站模式:中国济南的实证证据

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The various performances of buses at stations bring lots of difficulties for operators to manage them to improve the service quality. This paper proposes a data-driven framework to analyze the patterns of stations with network structure data, points of interest (POI) data and vehicle global positioning system (GPS) trajectory data. First, we build six indicators based on these data to measure the performance from station perspective. The results show that the number of POI around stations within 1 kilometer follows an exponential distribution. Moreover, the average headway and headway deviation of stations follow lognormal distributions. Second, we use agglomerative hierarchical clustering method to divided bus stations into different groups. Results indicate that the bus stations of Jinan could be divided into four groups with obvious characteristics. The findings could help operators to make exclusive strategies to manage bus systems.
机译:在站的公共汽车各种表现为运营商带来了很多困难,以管理它们以提高服务质量。本文提出了一种数据驱动的框架,用于分析网络结构数据,兴趣点(POI)数据和车辆全球定位系统(GPS)轨迹数据的站点的模式。首先,我们基于这些数据构建六个指标,以测量站点透视的性能。结果表明,1公里内的电台周围的数量遵循指数分布。而且,站的平均途径和前往偏差遵循逻辑正常分布。其次,我们使用凝聚层次聚类方法将总线站分成不同的组。结果表明,济南的公交车站可以分为四组,具有明显的特点。调查结果可以帮助运营商进行管理总线系统的独家策略。

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