Correlation between the built environment and dockless bike-sharing trips connecting to urban metro stations

IF 1.6 4区 工程技术 Q4 TRANSPORTATION Journal of Transport and Land Use Pub Date : 2023-05-12 DOI:10.5198/jtlu.2023.2262
Jiaomin Wei, Yanyan Chen, Zhuo Liu, Yang Wang
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Abstract

The influence of the built environment on dockless bike-sharing (DBS) trips connecting to urban metro stations has always been a significant problem for planners. However, the evidence for correlations between microscale built-environment factors and DBS-metro transfer trips remains inconclusive. To address this, a framework, augmented by big data, is formulated to analyze the correlation of built environment with DBS–metro transfer trips from the macroscopic and microscopic views, considering Beijing as a case study. The trip density and cycling speed are calculated based on 11,120,676 pieces of DBS data and then used to represent the characteristic of DBS-metro transfer trips in a multiple linear regression model. Furthermore, a novel method is proposed to determine the built-environment sampling area around a station by its corresponding DBS travel distances. Accordingly, 6 microscale built-environment factors are extracted from street-view images using deep learning and integrated into the analysis model, together with 14 macroscale built-environment factors and 8 potential influencing factors of socioeconomic attributes and metro station attributes. The results reveal the significant positive influence of greenery and presence of barriers on trip density and cycling speed. Additionally, presence of streetlights is found to be negatively correlated with both trip density and cycling speed. Presence of signals is also found to have an influence on DBS-metro transfer trips, but it only negatively impacts trip density.
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建筑环境与连接城市地铁站的无桩共享单车之间的关系
建筑环境对连接城市地铁站的无码头共享单车(DBS)出行的影响一直是规划者面临的一个重大问题。然而,微型建筑环境因素与DBS地铁换乘行程之间相关性的证据仍然没有定论。为了解决这一问题,以北京为例,制定了一个由大数据扩充的框架,从宏观和微观角度分析建筑环境与DBS-地铁换乘出行的相关性。基于11120676条DBS数据计算出了出行密度和循环速度,并用多元线性回归模型表示了DBS地铁换乘出行的特征。此外,还提出了一种新的方法,通过相应的DBS行进距离来确定车站周围的建成环境采样区域。因此,使用深度学习从街景图像中提取了6个微观尺度的建成环境因素,并将其与14个宏观尺度的建设环境因素以及8个社会经济属性和地铁站属性的潜在影响因素整合到分析模型中。结果表明,绿化和障碍物的存在对出行密度和骑行速度有显著的积极影响。此外,路灯的存在与出行密度和骑行速度都呈负相关。信号的存在也会对DBS地铁换乘行程产生影响,但只会对行程密度产生负面影响。
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来源期刊
CiteScore
3.40
自引率
5.30%
发文量
34
审稿时长
30 weeks
期刊介绍: The Journal of Transport and Land Usepublishes original interdisciplinary papers on the interaction of transport and land use. Domains include: engineering, planning, modeling, behavior, economics, geography, regional science, sociology, architecture and design, network science, and complex systems. Papers reporting innovative methodologies, original data, and new empirical findings are especially encouraged.
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