Examination of the Factors Influencing the Electric Vehicle Accident Size in Norway (2020–2021)

IF 2.6 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC World Electric Vehicle Journal Pub Date : 2023-12-20 DOI:10.3390/wevj15010003
Xuerui Hou, Meiling Su, Chenhui Liu, Ying Li, Qinglu Ma
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Abstract

With the great increase of electric vehicles (EVs) in the past decade, EV-involved traffic accidents have also been increasing quickly in many countries, bringing many new traffic safety challenges. Norway has the largest EV penetration rate in the world. Using the EV accident data from Norway in 2020 and 2021, this study aims to investigate the features of EV safety comprehensively. Firstly, a descriptive analysis is conducted. It has been found that rear-end collisions are the major collision type of EVs, and EVs are very likely to collide with pedestrians/cyclists. In addition, in terms of roadway type, EV accidents mainly occur on medium- and low-speed roads; in terms of environment, they mainly occur in good visibility conditions and dry road surface conditions. Then, a regression analysis is conducted to identify the key factors affecting the accident size, which is the number of traffic units involved in an accident and taken as the accident severity surrogate here. Since EV accidents are divided into four categories in order of accident size, the ordered logit model is adopted. It divides a multi-categorical dependent variable into multiple binary data points in order and calculates the probability of the dependent variable falling into each category with the logit model, respectively. The estimation results indicate that time of day, speed limit, and presence of medians have statistically significant impacts on the EV accident size. Finally, some countermeasures to prevent EV accidents are proposed based on the research results.
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研究影响挪威电动汽车事故规模的因素(2020-2021年)
过去十年来,随着电动汽车(EV)的大幅增加,在许多国家,涉及电动汽车的交通事故也迅速增加,带来了许多新的交通安全挑战。挪威是世界上电动汽车普及率最高的国家。本研究利用挪威2020年和2021年的电动汽车事故数据,旨在全面研究电动汽车安全的特点。首先,进行描述性分析。研究发现,追尾碰撞是电动汽车的主要碰撞类型,电动汽车极易与行人/骑自行车者发生碰撞。此外,从道路类型来看,电动车事故主要发生在中低速道路上;从环境来看,电动车事故主要发生在能见度良好和路面干燥的条件下。然后,进行回归分析,找出影响事故规模的关键因素。事故规模是指事故涉及的交通单位数量,在此作为事故严重程度的代用指标。由于电动车事故按事故规模大小分为四类,因此采用了有序对数模型。它将一个多类别因变量依次划分为多个二进制数据点,并分别用 logit 模型计算因变量落入每个类别的概率。估计结果表明,一天中的时间、车速限制和中间线的存在对电动车事故规模有显著的统计学影响。最后,根据研究结果提出了一些预防电动车事故的对策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
World Electric Vehicle Journal
World Electric Vehicle Journal Engineering-Automotive Engineering
CiteScore
4.50
自引率
8.70%
发文量
196
审稿时长
8 weeks
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