Revealing Spatio-Temporal Patterns and Influencing Factors of Dockless Bike Sharing Demand

被引:40
|
作者
Lin, Pengfei [1 ]
Weng, Jiancheng [1 ]
Hu, Song [1 ]
Alivanistos, Dimitrios [2 ]
Li, Xin [3 ]
Yin, Baocai [1 ]
机构
[1] Beijing Univ Technol, Key Lab Transportat Engn, Beijing 100124, Peoples R China
[2] Elsevier BV, NL-1643 NX Amsterdam, Netherlands
[3] Minist Transport Peoples Republ China, Res Inst Highway, Beijing 100088, Peoples R China
来源
IEEE ACCESS | 2020年 / 8卷
基金
中国国家自然科学基金;
关键词
Spatiotemporal phenomena; Bicycles; Urban areas; Meteorology; Public transportation; Roads; Dockless bike sharing system; spatiotemporal patterns; built environment; community detection; gradient boosting decision tree; BUILT ENVIRONMENT; TRAVEL PATTERNS; BICYCLE; USAGE; PROGRAMS; NETWORK; IMPACT; TRIPS;
D O I
10.1109/ACCESS.2020.2985329
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Dockless bike sharing plays an important role in complementing urban transportation systems and promoting the sustainable development of cities worldwide. To improve system operational efficiency, it is critical to study the spatiotemporal patterns of dockless bike sharing demand as well as factors influencing these patterns. Based on bicycle trip data from Mobike, Point of Interest (POI) data and smart card data in Beijing, we built a spatially embedded network and implemented the Infomap algorithm, a community detection method to uncover the usage patterns. Then, the Gradient Boosting Decision Tree (GBDT) model was adopted to investigate the effect of the built environment and public transit services by controlling the temporal variables. The spatiotemporal distribution shows imbalanced characteristics. About half of the total trips occur in the morning/evening rush hours and at noon. The community detection results further reveal a polycentric pattern of trip demand distribution and 120 sub-regions with a significant difference in connection strength and scale. The result of the GBDT model indicates that factors including subway ridership, bus ridership, hour, residence density, office density have considerable impacts on trip demand, contributing about 62.6% of the total influence. Factors also represent complex nonlinear relationships with dockless bike sharing usage. The effect ranges of each factor were identified, it indicates rebalancing schemes could be changed according to spatial location. These findings may help planners and policymakers to determine the reasonable scale of bike deployment and improve the efficiency of redistribution in local regions while reducing rebalance costs.
引用
收藏
页码:66139 / 66149
页数:11
相关论文
共 50 条
  • [21] COMPARING THE SPATIOTEMPORAL TRAVEL PATTERNS AND INFLUENCING FACTORS OF BIKE SHARING AND E- BIKE SHARING SYSTEMS
    Chen, Yang
    Xu, Shishuo
    Du, Mingyi
    Ma, Haizhi
    Wang, Sikai
    Li, Fangning
    GEOSPATIAL WEEK 2023, VOL. 48-1, 2023, : 339 - 345
  • [22] Hyper-clustering enhanced spatio-temporal deep learning for traffic and demand prediction in bike-sharing systems
    Zhao, Shengjie
    Zhao, Kai
    Xia, Yusen
    Jia, Wenzhen
    INFORMATION SCIENCES, 2022, 612 : 626 - 637
  • [23] Patterns and influencing factors of spatio-temporal variability of soil organic carbon in karst catchment
    Zhang, Zhenming
    Zhou, Yunchao
    Wang, Shijie
    Huang, Xianfei
    INTERNATIONAL JOURNAL OF GLOBAL WARMING, 2019, 17 (01) : 89 - 107
  • [24] A model framework for discovering the spatio-temporal usage patterns of public free-floating bike-sharing system
    Du, Yuchuan
    Deng, Fuwen
    Liao, Feixiong
    TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2019, 103 : 39 - 55
  • [25] Dockless Shared-Bike Demand Prediction with Temporal Convolutional Networks
    Jin, Kun
    Wang, Wei
    Li, Shuang
    Liu, Pei
    Sun, Heyang
    CICTP 2020: TRANSPORTATION EVOLUTION IMPACTING FUTURE MOBILITY, 2020, : 2851 - 2863
  • [26] A Tool-Chain for Statistical Spatio-Temporal Model Checking of Bike Sharing Systems
    Ciancia, Vincenzo
    Latella, Diego
    Massink, Mieke
    Paskauskas, Rytis
    Vandin, Andrea
    LEVERAGING APPLICATIONS OF FORMAL METHODS, VERIFICATION AND VALIDATION: FOUNDATIONAL TECHNIQUES, PT I, 2016, 9952 : 657 - 673
  • [27] Spatio-temporal Clustering and Forecasting Method for Free-Floating Bike Sharing Systems
    Caggiani, Leonardo
    Ottomanelli, Michele
    Camporeale, Rosalia
    Binetti, Mario
    ADVANCES IN SYSTEMS SCIENCE, ICSS 2016, 2017, 539 : 244 - 254
  • [28] Exploiting Interpretable Patterns for Flow Prediction in Dockless Bike Sharing Systems
    Gu, Jingjing
    Zhou, Qiang
    Yang, Jingyuan
    Liu, Yanchi
    Zhuang, Fuzhen
    Zhao, Yanchao
    Xiong, Hui
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2022, 34 (02) : 640 - 652
  • [29] Spatio-temporal evolution patterns and influencing factors of PM2.5 in Chinese urban agglomerations
    Wang Z.
    Liang L.
    Wang X.
    Dili Xuebao/Acta Geographica Sinica, 2019, 74 (12): : 2614 - 2630
  • [30] Spatio-Temporal Patterns of NDVI and Its Influencing Factors Based on the ESTARFM in the Loess Plateau of China
    Fan, Xinyi
    Gao, Peng
    Tian, Biqing
    Wu, Changxue
    Mu, Xingmin
    REMOTE SENSING, 2023, 15 (10)