利用轨迹数据加强实时冲突识别:探索交通流状态变量之间相互作用的影响。

IF 1.6 3区 工程技术 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Traffic Injury Prevention Pub Date : 2024-11-11 DOI:10.1080/15389588.2024.2404715
Dan Wu, Gaoming Wu
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引用次数: 0

摘要

研究目的本研究旨在解决使用历史碰撞数据和轨迹数据进行碰撞和冲突识别的局限性。具体而言,研究重点是通过调查交通流状态变量及其相互作用对冲突的影响来加强实时冲突识别:方法:处理来自 HighD 的车辆轨迹数据,提取特定时间间隔(10 秒)内的交通流状态和相应冲突。进一步使用逻辑回归模型来验证变量(包括交互项)对不同车道类别(内、中、外车道)冲突的影响。此外,还采用了机器学习技术来比较包括或不包括变量交互的冲突识别性能:结果:交通流状态变量的交互项对不同类别车道的冲突有显著影响。因此,在分析冲突风险时,必须同时考虑交通变量的单独影响及其交互影响。与不考虑交互项的情况相比,考虑变量的交互作用可提高冲突识别的准确性并降低识别错误率:交通流状态变量的交互项会显著影响并增强冲突识别,从而提高识别准确率并降低错误率。这些发现有助于推进实时冲突识别的高精度识别,对改进道路安全措施具有重要意义。
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Enhancing real-time conflict identification using trajectory data: Exploring the impact of interactions among traffic flow state variables.

Objective: This study aims to address the limitations of using historical crash data and trajectory data for crash and conflict identification. Specifically, it focuses on enhancing real-time conflict identification by investigating the influence of traffic flow state variables and their interactions on conflicts.

Methods: Vehicle trajectory data from HighD were processed, allowing extraction of traffic flow state and corresponding conflict during a specific time interval (10 s). Logistic regression models were further used to verify the impact of variables, including interaction terms, on the conflicts for different lane categories (inner, middle, and outer lanes). Additionally, machine learning techniques were employed to compare conflict identification performance including or excluding variable interactions.

Results: The interaction terms of the traffic flow state variables have significant effects on the conflicts for different categories of lanes. It is therefore essential to consider both the individual effects of traffic variables and their interaction effects to analyze conflict risk. Considering variable interactions leads to improved conflict identification accuracy and reduced identification error rates in comparison to the condition where interaction items are not taken into account.

Conclusions: The interaction terms of traffic flow state variables significantly affect and enhance conflict identification, improving accuracy and reducing error rates. These findings contribute to advancing the high-precision identification of real-time conflict identification, with implications for improving road safety measures.

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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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