Factors related to highway crash severity in Brazil through a multinomial logistic regression model

Lucas Franceschi, Luciano Kaesemodel, Vera Do Carmo Comparsi de Vargas, A. Konrath, L. R. Nakamura, Thiago Gentil Ramires, Camila Belleza Maciel Barreto, Amir Mattar Valente
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引用次数: 1

Abstract

Reducing the number of deaths by road crashes is an important priority for many countries around the world. Although focusing on the occurrence of crashes can provide safety policies that help reduce its numbers, studying their severity can provide different measures that may help further reduce the number of deaths by focusing on the most severe problems first. In this paper, a multinomial logistic regression model is fitted to nationwide highway crash data in Brazil from 2017 to 2019 to identify and estimate the associated factors to crash severity. Severity is classified as without injury, with injured victims or with fatal victims. Amongst other observations, results indicate that pedestrian involvement in highway crashes increase dramatically their severity. Also, conditions that favor greater speeds (clear weather, times when there are fewer vehicles on the road) are also related to an increase in crash severity, pointing to a proportional relation with traffic fluidity. Moreover, some observed limitations on the data may indicate that Brazil would benefit greatly from national crash records standards and unified databases, especially crossmatching crash reports with health data.
基于多项式逻辑回归模型的巴西公路交通事故严重程度相关因素
减少车祸死亡人数是世界上许多国家的一个重要优先事项。尽管关注撞车事故的发生可以提供有助于减少事故数量的安全政策,但研究其严重程度可以提供不同的措施,通过首先关注最严重的问题,有助于进一步减少死亡人数。本文将多项式逻辑回归模型拟合到2017年至2019年巴西全国公路交通事故数据中,以识别和估计影响事故严重程度的相关因素。严重程度分为无伤害、有受伤受害者或有致命受害者。除其他观察结果外,研究结果表明,行人参与高速公路撞车事故的严重程度急剧增加。此外,有利于提高速度的条件(晴朗的天气,路上车辆较少的时候)也与车祸严重程度的增加有关,这表明与交通流动性成正比。此外,观察到的一些数据限制可能表明,巴西将从国家碰撞记录标准和统一数据库中受益匪浅,尤其是将碰撞报告与健康数据交叉匹配。
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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