整合智能卡记录和无桩共享单车数据,了解建筑环境对自行车作为地铁出行接驳方式的影响

IF 5.7 2区 工程技术 Q1 ECONOMICS
Yuan Zhang , Xiao-Jian Chen , Song Gao , Yongxi Gong , Yu Liu
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引用次数: 0

摘要

城市交通和规划正处于关键时刻,需要细致入微地了解建筑环境对无桩共享单车(DBS)与地铁换乘出行的影响。现有的方法通常只关注地铁站周围的无桩共享单车出行,或受限于稀缺的数据集,忽略了随着无桩共享单车成为地铁出行的标准接驳方式,人们对辨别大规模无桩共享单车与地铁出行的方法的迫切需要,也忽略了建筑环境对无桩共享单车与地铁互动的空间滞后效应。为了弥补这些不足,我们开发了一种整合智能卡记录和 DBS 数据的方法,揭示了包含地铁和 DBS 的综合出行链。我们将关联规则算法应用到大规模数据中,为接驳出行提供了详细的空间洞察。我们采用了基于网络关联的部分空间杜宾模型,对计数数据进行负二项回归,对连续数据进行最大似然估计。对深圳的分析表明:(1)使用自行车作为接驳方式的出行次数(COUNT)与地铁网络结构中的车站位置之间存在很强的相关性。值得注意的是,与每个车站的 DBS-地铁换乘人次占地铁总人次的比率(RATIO)相比,COUNT 显示出更显著的聚集性;(2)建筑环境的本地和邻近空间变量对自行车出行的 RATIO 和 COUNT 有显著影响;(3)接驳站位置、城市中心邻近度、街道绿化景观情况和道路交叉口密度等特定因素显著影响地铁出行的自行车接驳模式;(4)此外,城中村和工业较多的地区似乎有助于地铁出行的自行车接驳模式,无论是在比率还是在数量上。这项研究强调,必须营造有利的建筑环境,以充分发挥 DBS 的潜力,弥补最后一英里的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating smart card records and dockless bike-sharing data to understand the effect of the built environment on cycling as a feeder mode for metro trips

Urban transportation and planning are at a pivotal juncture, requiring a nuanced understanding of the built environment's impact on dockless bike sharing (DBS) to metro transfer trips. Existing methodologies, often focused on DBS trips around metro stations or limited by scant datasets, overlook the pressing need for a method to discern large-scale DBS-metro trips as DBS becomes a standard feeder mode for metro trips and the yet unexplored spatial lag effects of the built environment on DBS-metro interactions. To bridge these gaps, we develop a method integrating smart card records and DBS data, revealing a comprehensive trip chain encompassing both metro and DBS. Our application of association rule algorithms to large-scale data provides detailed spatial insights into feeder trips. We employ a network-adjacency-based partial spatial Durbin model, tailored with a negative binomial regression for count data and maximum likelihood estimation for continuous data. Analysis from Shenzhen reveals: (1) A strong correlation is observed between the count of trips using cycling as a feeder mode (COUNT) and the location of stations within the metro network structure. Notably, the COUNT shows more significant aggregation when compared to the ratio of DBS-metro transfer trips to the total metro trips at each station (RATIO); (2) significant influence of both local and adjacent spatial variables of the built environment on the RATIO and COUNT of cycling trips; (3) specific factors like feeder station location, city center proximity, Street greenness view situation, and road intersection density significantly influencing the cycling feeder mode for metro trips; (4) Moreover, areas with more urban villages and industry appeared to contribute to the cycling feeder mode for metro trips, both in terms of RATIO and COUNT. This study underscores the necessity of fostering a conducive built environment to leverage DBS's potential to bridge the last-mile gap.

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来源期刊
CiteScore
11.50
自引率
11.50%
发文量
197
期刊介绍: A major resurgence has occurred in transport geography in the wake of political and policy changes, huge transport infrastructure projects and responses to urban traffic congestion. The Journal of Transport Geography provides a central focus for developments in this rapidly expanding sub-discipline.
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