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Analyzing the structural properties of bike-sharing networks: Evidence from the United States, Canada, and China

机译:分析自行车共享网络的结构特性:来自美国,加拿大和中国的证据

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摘要

To solve the last-mile problem and promote low carbon transportation, hundreds of cities around the world have launched bike-sharing services. A growing number of studies have been mining bike-sharing data from different cities to understand bike-sharing systems. However, there is still a lack of comprehensive understanding of a bike-sharing network structure. Thus, this paper attempts to use complex network theory and spatial autocorrelation analysis approaches to examine structural properties of bike-sharing systems, quantify the importance of bike stations in the network, and evaluate their spatial clustering patterns. This research analyzes bike-sharing trip data from five different sized bike-sharing systems in the United States, Canada, and China. The results of network analysis reveal that the bike-sharing networks have a small-world property with a small average path length and a high clustering coefficient. Compared with medium-scale networks, the connectivity and accessibility of bike stations are relatively low in the large-scale bike-sharing network. Also, the connectivity of bike stations is positively related to their accessibility while they are not highly correlated with their intermediateness. The spatial clustering analysis results indicate that the spatial distributions of connectivity and accessibility of bike stations have a strong global spatial autocorrelation. Also, the stations with high connectivity and accessibility are concentrated in the urban centers, and the stations with low connectivity and accessibility are clustered in the periphery of the urban areas. However, their intermediateness does not show a strong global spatial clustering pattern, which implies that bike-sharing networks consist of multiple sub-groups. The findings provide new insights for transport planners and managers to understand bike-sharing systems and to improve their service quality.
机译:要解决最后一英里的问题,促进低碳运输,全球数百个城市推出了自行车共享服务。越来越多的研究已经挖掘了来自不同城市的自行车分享数据以了解自行车共享系统。但是,仍然缺乏对自行车共享网络结构的全面理解。因此,本文试图利用复杂的网络理论和空间自相关分析方法来检查自行车共享系统的结构特性,量化自行车站在网络中的重要性,并评估其空间聚类模式。本研究分析了来自美国,加拿大和中国五种不同大型自行车共享系统的自行车共享旅行数据。网络分析结果表明,自行车共享网络具有小的平均路径长度和高集群系数的小世界性质。与中型网络相比,大规模自行车共享网络中自行车站的连接和可访问性相对较低。而且,自行车站的连接与它们的可访问性正相关,同时它们与其中间体不高度相关。空间聚类分析结果表明自行车站的连接性和可访问性的空间分布具有强大的全球空间自相关。此外,具有高连接性和可访问性的车站集中在城市中心,并且在城市地区的周边内聚集了具有低连接和可访问性的站。然而,它们的中间体不显示强大的全局空间聚类模式,这意味着自行车共享网络由多个子组组成。调查结果为运输规划者和管理人员了解自行车分享系统并提高服务质量,为新的洞察力提供了新的见解。

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