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Identifying factors affecting the safety of mid-block bicycle lanes considering mixed 2-wheeled traffic flow

机译:识别考虑混合2轮交通流量的中块自行车道安全的因素

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摘要

Objective: Electric bikes (e-bikes) have been one of the fastest growing trip modes in Southeast Asia over the past 2decades. The increasing popularity of e-bikes raised some safety concerns regarding urban transport systems. The primary objective of this study was to identify whether and how the generalized linear regression model (GLM) could be used to relate cyclists' safety with various contributing factors when riding in a mid-block bike lane. The types of 2-wheeled vehicles in the study included bicycle-style electric bicycles (BSEBs), scooter-style electric bicycles (SSEBs), and regular bicycles (RBs).Methods: Traffic conflict technology was applied as a surrogate measure to evaluate the safety of 2-wheeled vehicles. The safety performance model was developed by adopting a generalized linear regression model for relating the frequency of rear-end conflicts between e-bikes and regular bikes to the operating speeds of BSEBs, SSEBs, and RBs in mid-block bike lanes.Results: The frequency of rear-end conflicts between e-bikes and bikes increased with an increase in the operating speeds of e-bikes and the volume of e-bikes and bikes and decreased with an increase in the width of bike lanes. The large speed difference between e-bikes and bikes increased the frequency of rear-end conflicts between e-bikes and bikes in mid-block bike lanes. A 1% increase in the average operating speed of e-bikes would increase the expected number of rear-end conflicts between e-bikes and bikes by 1.48%. A 1% increase in the speed difference between e-bikes and bikes would increase the expected number of rear-end conflicts between e-bikes/bikes by 0.16%.Conclusions: The conflict frequency in mid-block bike lanes can be modeled using generalized linear regression models. The factors that significantly affected the frequency of rear-end conflicts included the operating speeds of e-bikes, the speed difference between e-bikes and regular bikes, the volume of e-bikes, the volume of bikes, and the width of bike lanes. The safety performance model can help better understand the causes of crash occurrences in mid-block bike lanes.
机译:目的:电动自行车(E-Bikes)是过去的2份东南亚日益增长的旅行模式之一。电子自行车的越来越普及提出了一些关于城市交通系统的安全问题。本研究的主要目标是确定广义线性回归模型(GLM)是否可以用来将骑自行车者的安全性与各种贡献因素相关,当乘坐中间块的自行车道时。研究中的2轮车辆类型包括自行车式电动自行车(BSEB),踏板车式电动自行车(SSEB)和常规自行车(RBS)。方法:交通冲突技术被应用为评估的代理措施2轮车辆的安全性。通过采用广义线性回归模型开发了安全性能模型,用于将E-Bikes和常规自行车之间的后端冲突与BSEBS,SESEB和RBS中的常规自行车的运行速度相关联的频率开发。结果:该E-Bikes和自行车之间的后端冲突的频率随着电子自行车的运行速度和电子自行车和自行车的数量而增加,并且随着自行车道的宽度而下降。电子自行车和自行车之间的大速度差异增加了中间块自行车道之间的电子自行车和自行车之间的后端冲突的频率。 E-骑自行车的平均运行速度增加1%将增加E-Bikes和自行车之间的预期后端冲突的数量1.48%。 E-骑自行车和自行车之间的速度差异增加了1%的速度差异将增加E-Bikes / Bikes之间的后端冲突数0.16%.Conclusions:可以使用广义建模中间块自行车道的冲突频率线性回归模型。显着影响后端冲突频率的因素包括电子自行车的运行速度,电子自行车和常规自行车之间的速度差异,电子自行车的体积,自行车的体积以及自行车道的宽度。安全性能模型可以帮助更好地了解中块自行车道的碰撞事件的原因。

著录项

  • 来源
    《Traffic Injury Prevention》 |2017年第8期|共6页
  • 作者单位

    Southeast Univ Jiangsu Collaborat Innovat Ctr Modern Urban Traff Jiangsu Key Lab Urban ITS Si Pai Lou 2 Nanjing 210096 Jiangsu Peoples R China;

    Univ Calif Berkeley Calif PATH Richmond CA USA;

    Southeast Univ Jiangsu Collaborat Innovat Ctr Modern Urban Traff Jiangsu Key Lab Urban ITS Si Pai Lou 2 Nanjing 210096 Jiangsu Peoples R China;

    Southeast Univ Jiangsu Collaborat Innovat Ctr Modern Urban Traff Jiangsu Key Lab Urban ITS Si Pai Lou 2 Nanjing 210096 Jiangsu Peoples R China;

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

    E-bike; BSEB; SSEB; bike lane; generalized linear regression model; safety;

    机译:E-Bike;BSEB;SSEB;自行车道;广义线性回归模型;安全;

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