交通事故中的危险行为分析

Mayank Chaudhari, S. Sarkar, Divyasheel Sharma
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引用次数: 1

摘要

在人们使用的所有交通系统中,公共交通方式是最常见和最危险的,每天在世界范围内造成大量死亡。统计数据表明,与交通事故有关的死亡率在青少年中较高。尽管政府和执法机构制定了各种道路安全战略和规则来应对这种情况,但这些方法主要针对交通道路的设计、运营和可用性。最近大多数数据驱动的分析论文都是根据过去的数据建立交通模式模型或预测事故。在本文中,我们考虑了一个全面的、长达一年的死亡分析报告系统(FARS)数据,以分析与人类、天气和物理条件(如路面、光照条件等)相关的各种因素在交通事故中的作用。我们建立了智能风险预测模型,可以帮助决策者确保道路安全。该模型根据驾驶员的行为、历史、环境条件和与交通道路相关的物理条件,估计(i)未来时间框架内的事故风险,以及(ii)与交通道路上的驾驶员相关的风险。
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Analyzing Risky Behavior in Traffic Accidents
Among all the transportation systems that people use, the public traffic-ways are most common and dangerous resulting in a significant number of fatalities per day worldwide. Statistics have shown that the mortality rates related to traffic accident are more among youth. Although various road safety strategies and rules are developed by the government and law-enforcement agencies to combat the situation, these methods mainly target design, operation, and usability of traffic-ways. Most of the recent data-driven analysis papers model the traffic patterns or predict accidents from the past data. In this paper, we consider a comprehensive, year long fatality analysis reporting system (FARS) data to analyze the role of various factors related to humans, weather and physical conditions (e.g., road surface, light condition etc.) involved in traffic accidents. We build an intelligent risk prediction model that can help decision-makers to ensure road safety. The proposed model estimates (i.) the accident risk over a future time frame, and (ii.) the risk associated with the drivers present on the traffic-way based on the driver’s behavior, history, environmental conditions and physical conditions related to traffic-way.
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