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Investigation of powered 2-wheeler accident involvement in urban arterials by considering real-time traffic and weather data

机译:考虑实时交通和天气数据,调查城市动脉的动力2轮子事故

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摘要

Objective: Understanding the various factors that affect accident risk is of particular concern to decision makers and researchers. The incorporation of real-time traffic and weather data constitutes a fruitful approach when analyzing accident risk. However, the vastmajority of relevant research has no specific focus on vulnerable road users such as powered 2-wheelers (PTWs). Moreover, studies using data from urban roads and arterials are scarce. This study aims to add to the current knowledge by considering real-time traffic and weather data from 2 major urban arterials in the city of Athens, Greece, in order to estimate the effect of traffic, weather, and other characteristics on PTW accident involvement. Methods: Because of the high number of candidate variables, a random forest model was applied to reveal the most important variables. Then, the potentially significant variables were used as input to a Bayesian logistic regression model in order to reveal the magnitude of their effect on PTW accident involvement. Results: The results of the analysis suggest that PTWs are more likely to be involved in multivehicle accidents than in single-vehicle accidents. Itwas also indicated that increased traffic flow and variations in speed have a significant influence on PTW accident involvement. On the other hand, weather characteristics were found to have no effect. Conclusions: The findings of this study can contribute to the understanding of accident mechanisms of PTWs and reduce PTW accident risk in urban arterials.
机译:目的:了解影响事故风险的各种因素对决策者和研究人员来说是特别关注的。在分析事故风险时,纳入实时交通和天气数据构成了富有成效的方法。然而,相关研究的浩瀚在脆弱的道路使用者上没有专注于动力的2轮子(PTW)。此外,使用来自城市道路和动脉的数据的研究是稀缺的。本研究旨在通过考虑来自希腊市雅典市的2个主要城市动脉的实时交通和天气数据来增加目前的知识,以估计交通,天气和其他特征对PTW事故参与的影响。方法:由于候选变量大量,应用了随机林模型来揭示最重要的变量。然后,将可能的显着变量用作贝叶斯逻辑回归模型的输入,以揭示他们对PTW事故参与的影响的大小。结果:分析结果表明,PTW更有可能涉及多载事故中的多渊。 ITWAS还表明,增加了交通流量和速度的变化对PTW事故受累产生了重大影响。另一方面,发现天气特征没有效果。结论:本研究的结果可以促进对PTWS事故机制的理解,降低城市动脉的PTW意外风险。

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