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Identifying driving safety profiles from smartphone data using unsupervised learning

机译:使用无监督学习从智能手机数据识别驾驶安全性概况

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摘要

A large number of drivers with different driving characteristics co-exist on the road network. Assessing a person's driving profile and detecting aggressive and unsafe driving behavior is essential to enhance road safety, reduce fuel consumption and at a macroscopic level - tackle congestion. Nowadays, driving data can be massively collected via sensors embedded in mobile phones, avoiding the expensive and inefficient solutions of in-vehicle devices. In this paper, these data are used to detect unsafe driving styles based on two-stage clustering approach and using information on harsh events occurrence, acceleration profile, mobile usage and speeding. First, an initial clustering was performed in order to separate aggressive from non aggressive trips. Subsequently, to distinguish "normal" trips from unsafe trips, a second level clustering was performed. In this way, trips have been categorized into six distinct groups with increasing importance with respect to safety. Findings reveal that about 50% of the trips were characterized as "safe trips", while in 23.5% of the trips drivers were driving above the speed limit and only 7.5% of the trips are characterized by distracted driving. The further analysis of drivers in relation to the grouping of their trips showed that drivers cannot maintain a stable driving profile through time, but exhibit a strong volatile behavior per trip. Finally, a discussion is provided on the implications of the main findings in research and practice.
机译:在道路网络上共存具有不同驾驶特性的大量驱动因素。评估一个人的驾驶简介和检测攻击性和不安全的驾驶行为对于提高道路安全性,降低燃料消耗和宏观水平 - 解决充血至关重要。如今,可以通过嵌入在移动电话中的传感器大量地收集驱动数据,避免车载装置的昂贵且低效的解决方案。在本文中,这些数据用于基于两阶段聚类方法检测不安全的驾驶样式,并使用关于苛刻事件发生,加速分布,移动使用和超速的信息。首先,执行初始聚类,以便将积极从非攻击性分开。随后,为了区分从不安全的旅行的“正常”次途径,执行第二级聚类。通过这种方式,随着对安全性的重要性而越来越重要,旅行被分为六个不同的群体。调查结果表明,大约50%的旅行被描述为“安全旅行”,而在23.5%的跳闸驱动器中驾驶以上速度限制,只有7.5%的旅行的特点是分散驾驶。关于他们旅行分组的驱动程序的进一步分析表明,司机不能通过时间维持稳定的驾驶型材,但每次旅行表现出强烈的挥发行为。最后,讨论了研究和实践中主要结果的影响。

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