Investigating influential factors on railway passenger flow utilizing multi-source data fusion and flow space theory: A case study of the Yangtze River Delta megalopolis, China

IF 4.3 Q2 TRANSPORTATION
Yongqi Deng , Jiaorong Wu , Chengcheng Yu , Jihao Deng , Meiting Tu , Yuqin Wang
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Abstract

Employing flow space theory and multi-source data, this study examines the spatial network structure and factors influencing railway passenger flow, which is crucial for rail planning in densely populated megalopolises. Focusing on China's Yangtze River Delta (YRD) megalopolis, we utilize social network analysis (SNA) to explore the characteristics of various flow networks and their interactions with the railway passenger flow network. Key findings include: (1) a pronounced polarization effect and core-periphery structure exist in the YRD, notably within industry and railway flow networks; (2) industry and corporation flow significantly contributes to rail passenger flow, with corporation networks in commerce, technical services, and finance showing higher similarity to the railway passenger flow network; (3) there is significant heterogeneity in the correlation between rail passenger flow and other flows within sub-networks formed by connections among nodes of different levels; (4) enhancing railway services at lower-level nodes is essential to mitigate the disparity between population mobility and rail passenger flow and to promote rail transportation equity. This research offers valuable insights for policymakers in developing countries to strategically plan railroad networks in megalopolises.
利用多源数据融合和流量空间理论研究铁路客流的影响因素:中国长三角特大城市案例研究
本文运用流空间理论和多源数据,探讨了人口密集特大城市铁路客流的空间网络结构和影响因素,这对人口密集特大城市的铁路规划至关重要。本文以中国长三角城市群为研究对象,运用社会网络分析(SNA)方法,探讨了不同客流网络的特征及其与铁路客流网络的相互作用。研究发现:(1)长三角地区存在明显的极化效应和核心-边缘结构,特别是在工业和铁路运输网内部;(2)产业和企业流动对铁路客流的贡献显著,商业、技术服务和金融企业网络与铁路客流网络的相似性更高;(3)不同层次节点间连接形成的子网络内,铁路客流与其他流的相关性存在显著的异质性;(4)加强下层节点的铁路服务是缓解人口流动与铁路客流差异、促进轨道交通公平的必要条件。这项研究为发展中国家的政策制定者战略性地规划特大城市的铁路网提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Transportation Science and Technology
International Journal of Transportation Science and Technology Engineering-Civil and Structural Engineering
CiteScore
7.20
自引率
0.00%
发文量
105
审稿时长
88 days
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