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Understanding operation patterns of urban online ride-hailing services: A case study of Xiamen

机译:了解城市网上骑行服务的操作模式:厦门的案例研究

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摘要

Online ride-hailing has gradually become a popular travel choice worldwide, while it also brought policy challenges to balance the traditional taxi industry and online ride-hailing services. Understanding the operation patterns of urban online ride-hailing services is essential for government policy-making. However, insufficient attention has been paid to the operating characteristics of online ride-hailing vehicles due to limited empirical data. This paper proposes a cluster analysis framework for the identification of different operation patterns of urban online ride-hailing. The customer order and GPS data of online ride-hailing vehicles and traditional taxis in Xiamen, China is used in this study. The k-means++ clustering algorithm is used based on the proposed intensity and stability indices of ride-hailing vehicle operating characteristics. The results show that there are three types of online ride-hailing operation patterns, namely full-time (which accounts for 52.801%), part-time (29.502%), and occasional (17.697%). The operation pattern of full-time ride-hailing vehicles is similar to that of traditional taxis, but with lower intensity and stability due to a reduced workload and flexible time schedule. Part-time ride hailing vehicles are operated unsteadily and irregularly in the drivers' spare time, and the working time periods are mainly concentrated in the morning and evening peak hours. Occasional ride-hailing vehicles provide very limited service. Finally, several policy suggestions for online ride-hailing from the perspective of government management, e.g., the number of licenses and operation places and time periods, are proposed based on the results.
机译:在线乘车似乎逐渐成为全世界的热门旅游选择,而它也会带来政策挑战,以平衡传统的出租车行业和在线乘车服务。了解城市网上乘车服务的运作模式对政府的政策制定至关重要。然而,由于有限的经验数据,对在线乘车车辆的操作特性支付了不足的关注。本文提出了一个集群分析框架,用于识别城市网上骑行的不同操作模式。在本研究中使用了在线乘车车辆和厦门传统出租车的客户订单和GPS数据。 K-Means ++聚类算法基于乘车骑行车辆操作特性的提出强度和稳定性指标使用。结果表明,有三种类型的在线乘车操作模式,即全职(占52.801%),兼职(29.502%),偶尔(17.697%)。全职乘车车辆的操作模式类似于传统出租车的操作模式,但由于工作量减少和灵活的时间表,具有较低的强度和稳定性。兼职骑行车辆在驾驶员业余时间不稳定,不规则地运营,工作时间段主要集中在早晨和晚间高峰时段。偶尔的骑行车辆提供非常有限的服务。最后,从政府管理的角度,例如,基于结果提出了从政府管理的角度来看,从政府管理的角度进行了几项政策建议。

著录项

  • 来源
    《Transport policy》 |2021年第2期|100-118|共19页
  • 作者

    Xiong Ziyue; Li Jian; Wu Hangbin;

  • 作者单位

    Tongji Univ Urban Mobil Inst 4800 Caoan Rd Shanghai 201804 Peoples R China;

    Tongji Univ Minist Educ Key Lab Rd & Traff Engn 4800 Caoan Rd Shanghai 201804 Peoples R China|Tongji Univ Coll Transportat Engn 4800 Caoan Rd Shanghai 201804 Peoples R China;

    Tongji Univ Urban Mobil Inst 4800 Caoan Rd Shanghai 201804 Peoples R China|Tongji Univ Coll Surveying & Geoinformat 1239 Siping Rd Shanghai 200092 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Online ride-hailing; Cluster analysis; k-means plus plus algorithm; Operation patterns; Policy-making;

    机译:在线骑行;集群分析;K-Meanse Plus Plus算法;操作模式;政策制作;

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