基于交通违法与碰撞时空相关性的道路交通安全风险信号捕捉

IF 1.6 3区 工程技术 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Rui Zhang, Bin Shuai, Pengfei Gao, Yulong Li
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引用次数: 0

摘要

目的:探索路网约束下交通违法行为作为交通安全时空风险指标的可能性,识别道路交通安全时空风险的关键交通违法类型,并研究其在路段层面的分布格局。方法:首先,采用网络约束条件下的Ripley’s K函数,采用严格的统计推断方法,对各类交通违法行为与交通事故的时空相关性进行深入研究,找出与交通事故具有显著相关性的关键类型;其次,我们将Ripley的K函数与网络约束、网络核密度估计和局部Moran指数相结合,识别出这些违规的高发路段。在此基础上,我们引入了土地利用类型影响强度的概念,利用兴趣点信息分析路段层面的土地利用特征,揭示这些主要交通违法行为的分布模式。结果:对深圳实际数据的分析显示,在2.1-3.8公里的空间范围内,不同时间场景下,共有17项关键交通违法行为与不同严重程度的碰撞显著相关。这些类型通常被认为直接导致崩溃的可能性相对较低,值得更多关注。这些主要的交通违规行为往往集中在“商业和金融”和“公共交通基础设施”路段。此外,与工作日相比,周末的重点交通违法类型数量更多,空间集聚特征更明显,聚集区域的土地利用类型从“公共行政与服务”转向“公共绿地与景点”和“居住与生活”。结论:特定交通违法行为在特定时空范围内可作为道路交通安全风险的信号,关键交通违法行为的时空聚集格局与城市土地利用密切相关。这一发现可以为利用重点交通违法行为进行道路交通事故实时监测预警提供理论支持,同时也为从土地利用角度探讨交通违法行为的成因提供启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Capturing signals of road traffic safety risk: based on the spatial-temporal correlation between traffic violations and crashes.

Objective: The paper aims to explore the possibility of using traffic violations as indicators for spatial-temporal risk of traffic safety within road network constraints, identify key types of traffic violations that indicate spatial-temporal risks in road traffic safety, and investigate their distribution patterns at the road section level.

Methods: Firstly, we employ the Ripley's K function with network constraints and utilize rigorous statistical inference to thoroughly examine the spatial-temporal correlation between various types of traffic violations and crashes, identifying key types that exhibit significant correlation with crashes. Secondly, we combine Ripley's K function with network constraints, Network Kernel Density Estimation, and Local Moran's Index, to identify high-incidence road sections of these violations. Building upon this foundation, we introduce the concept of Influence Intensity for Land Use Type, which leverages Point of Interest information to analyze the land use characteristics at the road section level, revealing the distribution patterns of these key traffic violations.

Results: Analysis of actual data from Shenzhen, China reveals a total of 17 key traffic violations significantly correlated with crashes of varying severity across different time scenarios in the spatial ranges of 2.1-3.8 kilometers. These include types that are typically considered to have a relatively low likelihood of directly causing crashes that deserve more attention. These key traffic violations tend to aggregate in road sections categorized as "Business & Finance" and "Public Transport Infrastructure." Furthermore, in contrast to weekdays, weekends witness a higher number of key traffic violation types with more pronounced spatial aggregation characteristics, and the land use type of aggregation areas shifts from "Public Administration & Services" to "Public Green Spaces & Attractions" and "Residence & Living."

Conclusions: This study demonstrates that particular traffic violations can serve as signals for road traffic safety risk within specific space-time scopes, and the spatial-temporal aggregation patterns of these key traffic violations are closely linked to the urban land use. This finding can offer theoretical support for utilizing key traffic violations in real-time monitoring and early warning of road traffic crashes, while also providing inspiration for exploring the causes of these traffic violations from a land use perspective.

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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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