Identification of accident-prone segments using APIU: A case study on highway safety analysis in China.

IF 1.6 3区 工程技术 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Yonghong Yang, Yu Zhang, Zhao Yang, Tao Zheng, Yixi Hu
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引用次数: 0

Abstract

Objective: This study proposes the accident point interval unit (APIU) method combined with the characteristics of road traffic accidents. The aim is to automatically identify accident aggregation areas, providing basis for highway design and traffic management.

Methods: Historical accident data from a secondary highway in Guizhou Province and an expressway in Guangdong Province over 3 to 4 years were analyzed using APIU to identify accident-prone segments. A backpropagation (BP) neural network model was utilized to calculate the weight of the impact of the alignment on the occurrence of the accidents, which were then integrated with evaluation levels to formulate a risk index model.

Results: The APIU exhibited stability and consistency in identifying accident-prone sections, effectively accounting for the influence of adjacent road sections. The BP neural network model quantified the impact of road alignment on accidents, and the risk index model provided a comprehensive evaluation of road section risk. A significant risk zone was identified within 200 to 300 m before the accident staking point, validating APIU.

Conclusions: Using the APIU, accident-prone segments can be accurately identified. The risk indexes start rising within a specific range before the accident stakes, suggesting that road accidents are influenced by the geometric alignment preceding the accident point. Based on this insight, highway authorities can implement targeted safety measures and enhance signage in critical areas.

基于APIU的事故易发路段识别——以中国公路安全分析为例。
目的:结合道路交通事故的特点,提出事故点间隔单元(APIU)方法。目的是自动识别事故聚集区域,为公路设计和交通管理提供依据。方法:采用APIU对贵州省某二级公路和广东省某高速公路3 ~ 4年的历史事故数据进行分析,识别事故易发路段。利用BP神经网络模型计算路线对事故发生的影响权重,并与评价等级相结合,建立风险指数模型。结果:APIU在识别事故易发路段时表现出稳定性和一致性,有效地考虑了相邻路段的影响。BP神经网络模型量化了道路线形对事故的影响,风险指数模型对路段风险进行了综合评价。在事故发生点前200至300米内确定了一个重要的风险区域,验证了APIU。结论:使用APIU可以准确识别易发生事故的节段。风险指数在事故发生前的一定范围内开始上升,表明道路事故受事故点前的几何对齐的影响。基于这一见解,公路管理部门可以实施有针对性的安全措施,并在关键区域加强标识。
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来源期刊
Traffic Injury Prevention
Traffic Injury Prevention PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
3.60
自引率
10.00%
发文量
137
审稿时长
3 months
期刊介绍: The purpose of Traffic Injury Prevention is to bridge the disciplines of medicine, engineering, public health and traffic safety in order to foster the science of traffic injury prevention. The archival journal focuses on research, interventions and evaluations within the areas of traffic safety, crash causation, injury prevention and treatment. General topics within the journal''s scope are driver behavior, road infrastructure, emerging crash avoidance technologies, crash and injury epidemiology, alcohol and drugs, impact injury biomechanics, vehicle crashworthiness, occupant restraints, pedestrian safety, evaluation of interventions, economic consequences and emergency and clinical care with specific application to traffic injury prevention. The journal includes full length papers, review articles, case studies, brief technical notes and commentaries.
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