调查城市道路网络中机动车碰撞密度模式的时间动态--纽约案例研究

IF 3.9 2区 工程技术 Q1 ERGONOMICS Journal of Safety Research Pub Date : 2024-03-10 DOI:10.1016/j.jsr.2024.02.009
Haoliang Chang , Corey Kewei Xu , Tian Tang
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引用次数: 0

摘要

机动车碰撞是城市高速公路上造成死亡和受伤的主要原因。从时间角度来看,一个路段是否被认定为易发生碰撞的路段随着时间的推移可能会有很大的波动,这使得交通机构很难提出交通干预措施。然而,对碰撞密度模式随时间变化的易碰撞路段进行识别和特征描述的研究还很有限。本研究提出了一个识别和特征描述框架,以剖析具有各种碰撞密度变化的易碰撞路段。首先,我们采用时空网络核密度估计(STNKDE)方法和时间序列聚类来识别具有不同碰撞密度模式的路段。接下来,我们根据时空信息、后果、车辆类型和碰撞诱因来描述易发生碰撞的路段。我们将所提出的方法应用于纽约市两年的机动车碰撞记录。结果发现了七个具有不同碰撞密度模式的路段集群。经常被确定为易发生碰撞的路段主要位于曼哈顿下城和布朗克斯区中心。此外,随着时间的推移,在碰撞密度较大的路段附近发生的碰撞会导致更多的伤亡事故,其中许多是由人为和车辆因素造成的。随着时间的推移,具有不同碰撞密度模式的易碰撞路段在时空领域和发生碰撞的情况方面存在明显差异。所提出的方法可以帮助决策者了解碰撞易发路段随时间的变化情况,并为更有针对性的交通处理提供参考。
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Investigating the temporal dynamics of motor vehicle collision density patterns in urban road networks – A case study of New York

Introduction

Motor vehicle collisions are a leading source of mortality and injury on urban highways. From a temporal perspective, the determination of a road segment as being collision-prone over time can fluctuate dramatically, making it difficult for transportation agencies to propose traffic interventions. However, there has been limited research to identify and characterize collision-prone road segments with varying collision density patterns over time.

Method

This study proposes an identification and characterization framework that profiles collision-prone roads with various collision density variations. We first employ the spatio-temporal network kernel density estimation (STNKDE) method and time-series clustering to identify road segments with different collision density patterns. Next, we characterize collision-prone road segments based on spatio-temporal information, consequences, vehicle types, and contributing factors to collisions. The proposed method is applied to two-year motor vehicle collision records for New York City.

Results

Seven clusters of road segments with different collision density patterns were identified. Road segments frequently determined as collision-prone were primarily found in Lower Manhattan and the center of the Bronx borough. Furthermore, collisions near road segments that exhibit greater collision densities over time result in more fatalities and injuries, many of which are caused by both human and vehicle factors.

Conclusions

Collision-prone road segments with various collision density patterns over time have distinct differences in the spatio-temporal domain and the collisions that occur on them.

Practical Applications

The proposed method can help policymakers understand how collision-prone road segments change over time, and can serve as a reference for more targeted traffic treatment.

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来源期刊
CiteScore
6.40
自引率
4.90%
发文量
174
审稿时长
61 days
期刊介绍: Journal of Safety Research is an interdisciplinary publication that provides for the exchange of ideas and scientific evidence capturing studies through research in all areas of safety and health, including traffic, workplace, home, and community. This forum invites research using rigorous methodologies, encourages translational research, and engages the global scientific community through various partnerships (e.g., this outreach includes highlighting some of the latest findings from the U.S. Centers for Disease Control and Prevention).
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