National Technical University of Athens, 5 Iroon Polytechniou Str, Zografou Campus, 157 73 Athens, Greece.
Accid Anal Prev. 2013 Sep;58:340-5. doi: 10.1016/j.aap.2012.12.026. Epub 2013 Jan 29.
The paper proposes a methodology based on Bayesian Networks for identifying the power two wheeler (PTW) driving patterns that arise at the emergence of a critical incident based on high resolution driving data (100Hz) from a naturalistic PTW driving experiment. The proposed methodology aims at identifying the prevailing PTW drivers' actions at the beginning and during critical incidents and associating the critical incidents to specific PTW driving patterns. Results using data from one PTW driver reveal three prevailing driving actions for describing the onset of an incident and an equal number of actions that a PTW driver executes during the course of an incident to avoid a crash. Furthermore, the proposed methodology efficiently relates the observed sets of actions with different types of incidents occurring during overtaking or due to the interactions of the rider with moving or stationary obstacles and the opposing traffic. The observed interrelations define several driving patterns that are characterized by different initial actions, as well as by different likelihood of sequential actions during the incident. The proposed modeling may have significant implications to the efficient and less time consuming analysis of the naturalist data, as well as to the development of custom made PTW driver assistance systems.
本文提出了一种基于贝叶斯网络的方法,用于根据自然主义的两轮电动车(PTW)驾驶实验中 100Hz 的高分辨率驾驶数据,识别在关键事件发生时出现的 PTW 驾驶模式。该方法旨在识别在关键事件开始时和期间,PTW 驾驶员的主要行为,并将关键事件与特定的 PTW 驾驶模式联系起来。使用一名 PTW 驾驶员的数据的结果表明,有三种主要的驾驶行为可以描述事故的发生,以及在事故过程中驾驶员为避免碰撞而执行的同等数量的行为。此外,该方法有效地将观察到的一系列行为与超车过程中或由于骑手与移动或静止障碍物以及对向交通相互作用而发生的不同类型的事故联系起来。观察到的相互关系定义了几种驾驶模式,这些模式的特点是不同的初始行为,以及在事故过程中顺序行为的不同可能性。该模型的建立对于高效、耗时更少地分析自然主义数据,以及开发定制的两轮电动车驾驶员辅助系统,可能具有重要意义。