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Analysis of Traffic Crashes Involving Pedestrians Using Big Data: Investigation of Contributing Factors and Identification of Hotspots

机译:大数据分析的行人交通事故:成因调查和热点识别

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摘要

This study aims to explore the potential of using big data in advancing the pedestrian risk analysis including the investigation of contributing factors and the hotspot identification. Massive amounts of data of Manhattan from a variety of sources were collected, integrated, and processed, including taxi trips, subway turnstile counts, traffic volumes, road network, land use, sociodemographic, and social media data. The whole study area was uniformly split into grid cells as the basic geographical units of analysis. The cell-structured framework makes it easy to incorporate rich and diversified data into risk analysis. The cost of each crash, weighted by injury severity, was assigned to the cells based on the relative distance to the crash site using a kernel density function. A tobit model was developed to relate grid-cell-specific contributing factors to crash costs that are left-censored at zero. The potential for safety improvement (PSI) that could be obtained by using the actual crash cost minus the cost of similar sites estimated by the tobit model was used as a measure to identify and rank pedestrian crash hotspots. The proposed hotspot identification method takes into account two important factors that are generally ignored, i.e., injury severity and effects of exposure indicators. Big data, on the one hand, enable more precise estimation of the effects of risk factors by providing richer data for modeling, and on the other hand, enable large-scale hotspot identification with higher resolution than conventional methods based on census tracts or traffic analysis zones.
机译:本研究旨在探讨利用大数据推进行人风险分析的潜力,包括调查影响因素和热点识别。收集,整合和处理了来自各种来源的曼哈顿的大量数据,包括出租车行程,地铁转盘计数,交通量,道路网络,土地使用,社会人口统计数据和社交媒体数据。整个研究区域均匀地划分为网格单元,作为分析的基本地理单位。单元结构的框架使将丰富多样的数据整合到风险分析中变得容易。每次碰撞的成本(按伤害严重程度加权)是使用内核密度函数根据到碰撞点的相对距离分配给单元的。开发了一个tobit模型,以将特定于网格单元的影响因素与零损失的碰撞成本相关联。通过使用实际碰撞成本减去通过轨道模型估算的类似地点的成本可以获得的安全改进潜力(PSI)被用作识别和排序行人碰撞热点的一种方法。提出的热点识别方法考虑了通常被忽略的两个重要因素,即伤害严重性和暴露指标的影响。一方面,大数据可通过提供更丰富的数据进行建模,从而能够更精确地估算风险因素的影响;另一方面,与基于人口普查或流量分析的传统方法相比,分辨率更高的大规模热点得以识别区域。

著录项

  • 来源
    《Risk analysis》 |2017年第8期|1459-1476|共18页
  • 作者单位

    NYU, CitySMART Lab, Ctr Urban Sci & Progress, Dept Civil & Urban Engn, Brooklyn, NY 11201 USA;

    NYU, CitySMART Lab, Ctr Urban Sci & Progress, Dept Civil & Urban Engn, Brooklyn, NY 11201 USA;

    NYU, CitySMART Lab, Ctr Urban Sci & Progress, Dept Civil & Urban Engn, Brooklyn, NY 11201 USA;

    Old Dominion Univ, Dept Modeling Simulat & Visualizat Engn, Norfolk, VA USA;

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

    Big data; grid cell analysis; pedestrian risk;

    机译:大数据;网格单元分析;行人风险;
  • 入库时间 2022-08-18 02:56:35

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