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Clustering Analysis of Ridership Patterns at Subway Stations: A Case in Nanjing, China

机译:地铁车站乘车方式的聚类分析:以南京市为例

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Better understanding of urban mass transit trip mobility patterns will be helpful to increase public transit ridership and improve transit services of large cities. Therefore, a station-oriented clustering analysis on ridership patterns in subway systems based on smart card data was performed in this paper. Using the automatic fare collection (AFC) data of 89 subway stations in Nanjing, China, a similarity-based k-medoids clustering analysis approach was proposed and compared with previous studies. Then the correlation analysis between clustering results of subway stations and surrounding land uses including office and factory, residential area, scenic, university, shopping centers and entertainment venues, hospitals, and a long-distance passenger transport hub was achieved. Additionally, the station ridership on Sundays was analyzed separately to show the relationship of obvious peaks with different types of land use. The results of this research could contribute to subway station ridership forecasting and provide theoretical basis for schedule making and adjustment. (c) 2019 American Society of Civil Engineers.
机译:更好地了解城市公共交通出行的方式将有助于增加公共交通的乘坐量,并改善大城市的公共交通服务。因此,本文基于智能卡数据对地铁乘车模式进行了面向车站的聚类分析。利用中国南京市89个地铁站的自动票价收集(AFC)数据,提出了一种基于相似度的k-medoids聚类分析方法,并将其与以前的研究进行了比较。然后,对地铁站的聚类结果与办公室,工厂,居民区,景区,大学,购物中心和娱乐场所,医院以及长途客运枢纽等周边土地利用之间的相关性进行了分析。此外,还对周日的车站乘客量进行了单独分析,以显示明显高峰与不同类型土地利用之间的关系。研究结果可为地铁车站的乘车量预测提供依据,为时间表的制定和调整提供理论依据。 (c)2019美国土木工程师学会。

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