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车辆操纵作为替代安全措施:从配备 GPS 的常规驾驶员智能手机中提取数据。

Vehicle manoeuvers as surrogate safety measures: Extracting data from the gps-enabled smartphones of regular drivers.

机构信息

Department of Civil Engineering and Applied Mechanics, McGill University, Room 391, Macdonald Engineering Building, 817 Sherbrooke Street West, Montréal, Québec, H3A 0C3, Canada.

Department of Civil Engineering and Applied Mechanics, McGill University, Room 268, Macdonald Engineering Building, 817 Sherbrooke Street West, Montréal, Québec, H3A 0C3, Canada.

出版信息

Accid Anal Prev. 2018 Jun;115:160-169. doi: 10.1016/j.aap.2018.03.005. Epub 2018 Mar 22.

Abstract

Network screening is a key element in identifying and prioritizing hazardous sites for engineering treatment. Traditional screening methods have used observed crash frequency or severity ranking criteria and statistical modelling approaches, despite the fact that crash-based methods are reactive. Alternatively, surrogate safety measures (SSMs) have become popular, making use of new data sources including video and, more rarely, GPS data. The purpose of this study is to examine vehicle manoeuvres of braking and accelerating extracted from a large quantity of GPS data collected using the smartphones of regular drivers, and to explore their potential as SSMs through correlation with historical collision frequency and severity across different facility types. GPS travel data was collected in Quebec City, Canada in 2014. The sample for this study contained over 4000 drivers and 21,000 trips. Hard braking (HBEs) and accelerating events (HAEs) were extracted and compared to historical crash data using Spearman's correlation coefficient and pairwise Kolmogorov-Smirnov tests. Both manoeuvres were shown to be positively correlated with crash frequency at the link and intersection levels, though correlations were much stronger when considering intersections. Locations with more braking and accelerating also tend to have more collisions. Concerning severity, higher numbers of vehicle manoeuvres were also related to increased collision severity, though this relationship was not always statistically significant. The inclusion of severity testing, which is an independent dimension of safety, represents a substantial contribution to the existing literature. Future work will focus on developing a network screening model that incorporates these SSMs.

摘要

网络筛选是识别和优先考虑工程处理危险场所的关键要素。传统的筛选方法使用观察到的碰撞频率或严重程度排名标准和统计建模方法,尽管基于碰撞的方法是被动的。或者,替代安全措施 (SSM) 变得流行,利用新数据源,包括视频,以及更罕见的 GPS 数据。本研究的目的是从使用智能手机收集的大量 GPS 数据中提取车辆制动和加速的车辆操作,并通过与不同设施类型的历史碰撞频率和严重程度的相关性来探索它们作为 SSM 的潜力。GPS 出行数据于 2014 年在加拿大魁北克市收集。本研究的样本包含超过 4000 名驾驶员和 21000 次行程。使用 Spearman 相关系数和成对 Kolmogorov-Smirnov 检验从历史碰撞数据中提取和比较硬制动 (HBE) 和加速事件 (HAE)。这两种操作都与链路和交叉口级别的碰撞频率呈正相关,尽管在考虑交叉口时相关性更强。制动和加速操作较多的位置也往往会发生更多的碰撞。关于严重程度,更多的车辆操作也与碰撞严重程度增加有关,尽管这种关系并不总是具有统计学意义。包含严重程度测试是对现有文献的重大贡献,严重程度测试是安全的一个独立维度。未来的工作将侧重于开发一个包含这些 SSM 的网络筛选模型。

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