Analysis of the Effect of the Speed Factor on Highway Safety Using the Machine Learning Method

IF 0.6 Q4 ENGINEERING, CIVIL
Vahid Najafi moghaddam Gilani, Milad Sashurpour, S. Hassanjani, S. Hosseinian
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引用次数: 2

Abstract

Abstract Speed is one of the most important factors that can significantly change the severity of accidents. Providing a model with predictive factors leads to designing traffic plans to promote safety. This study aims to create statistical models for accidents occurred on Firuzkuh highway, Iran. Moreover, the probability of each type of accident was determined using the logit model. Various modeling methods, such as backward, forward, and entering methods, were evaluated to find the best method. Finally, since the backward method had the best performance in terms of R2 and goodness of fit, the logit model of accidents was created. According to the model, the independent variables of the 12-24 hours, rainy weather, a speed of 81-95 and 96-110 km/h, the lack of attention ahead and the Pride brand of vehicle increased the severity of accidents, while the variables with negative coefficients of Tuesdays, the summer and spring seasons, sunny weather, a male driver, and daylight, reduced the severity of accidents.
用机器学习方法分析速度因子对公路安全的影响
摘要车速是影响交通事故严重程度的重要因素之一。提供一个具有预测因素的模型,从而设计交通计划以促进安全。本研究旨在为伊朗Firuzkuh高速公路上发生的事故建立统计模型。利用logit模型确定了各类事故发生的概率。评估了各种建模方法,如向后、向前和进入方法,以找到最佳方法。最后,由于后向方法在R2和拟合优度方面表现最好,因此建立了事故的logit模型。模型显示,12-24小时、阴雨天气、81-95 km/h和96-110 km/h的车速、前方不注意和Pride品牌等自变量增加了事故的严重程度,而星期二、夏季和春季、晴天、男性驾驶员和日光等负系数变量降低了事故的严重程度。
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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21
审稿时长
29 weeks
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