基于自然公路驾驶数据的驾驶动作分析

Guofa Li, S. Li, Li-Li Jia, Wenjun Wang, B. Cheng, Fang Chen
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引用次数: 12

摘要

公路行驶约占道路车辆行驶里程的70%,是交通安全部署中的一个关键问题。在构成高度复杂驾驶任务的各种机动中,每一种机动都需要了解驾驶状态、车辆性能和驾驶员行为之间的联系。这篇论文试图对高速公路上的驾驶动作作一个完整的描述。18名司机参与了这项研究。他们驾驶一辆仪表化的汽车在高速公路上行驶,收集了2600公里的自然驾驶数据。将数据进行手工分割,分为11个机动组。对机动过程的分析表明:1)提出了机动转移概率模型。根据该模型,根据过渡概率绘制了7种典型的驾驶模式。与接近/跟随/变道相关的过渡事件占所有公路过渡事件的95%。2)自由左/右变道和由左/右变道超车所需时间分别为7.6/6.6秒和7.1/7.0秒。远、中、近跟机动分别为22.5秒、21.4秒和16.3秒。两组间差异均有统计学意义。3)分析了驾驶员在每个机动动作中的行为。司机在自由变道时比在超车变道时开得更快。对于超车变道,观察到两种驾驶模式:加速变道和减速变道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Driving Maneuvers Analysis Using Naturalistic Highway Driving Data
Accounting about 70% of vehicle miles on roadways, highway driving is a critical issue in traffic safety deployment. Of the various maneuvers that comprise the highly complex driving task, each one requires understanding on the connections between driving states, vehicle performance and drivers' actions. This paper attempts to flesh out a complete picture of driving maneuvers on highways. Eighteen drivers participated in this study. They drove an instrumented vehicle on highways to accumulate 2,600 km naturalistic driving data. The data were segmented and classified into 11 maneuver groups manually. Analysis on the maneuvers revealed that: 1) A maneuver transition probabilities model was proposed. According to this model, 7 typical driving patterns were drawn based on the transition probabilities. Transition events pertaining to approaching/following/lane changing accounted for 95% of all the highway transition events. 2) The durations were 7.6/6.6 s and 7.1/7.0 s for free left/right lane changes and overtake from left/right lane changes, respectively. The numbers were 22.5, 21.4 and 16.3 s for far, middle and near following maneuvers, respectively. Statistical significances were found within both groups. 3) How drivers behave in each maneuver was analyzed. Drivers drove faster in free lane changes than did in overtake lane changes. For overtake lane changes, two driving patterns were observed: accelerate to change lane and decelerate to change lane.
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