Modeling conflict risk with real-time traffic data for road safety assessment: a copula-based joint approach

IF 2.7 4区 工程技术 Q2 TRANSPORTATION SCIENCE & TECHNOLOGY
Yuping Hu, Ye Li, Chen Yuan, Helai Huang
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引用次数: 4

Abstract

This study proposes a conflict-based traffic safety assessment method by associating conflict frequency and severity with short-term traffic characteristics. Instead of analysing historical crash data, this study employs microscopic trajectory data to quantify the relationship between conflict risk and traffic characteristics. The time-to-collision (TTC) index is used to detect conflicts, and a severity index (SI) is proposed on the basis of time-integrated TTC. With SI, the k-means algorithm is applied to classify the conflict severity level. Then the severity of regional conflict risk is split to three levels. Zero truncated Poisson regression and ordered logit regression methods are employed to estimate the effects of short-term traffic characteristics on conflict frequency and severity, respectively. Furthermore, the copula-based joint modelling method is applied to explore the potential non-linear dependency of conflict risk outcomes. A total of 18 copula models are tested to select the optimal ones. The HighD dataset from Germany is utilized to examine the proposed framework. Both between-lane and within-lane factors are considered. Results show that the correlations between traffic characteristics and conflict risk are significant, and the dependency of conflict outcomes varies among different severity levels. The difference of speed variation between lanes significantly influences the conflict frequency and severity simultaneously. Findings indicate that the proposed method is practicable to assess real-time traffic safety within a specific region by using short-term (30-second time interval) traffic characteristics. This study also contributes to develop targeted proactive safety strategies by evaluating road safety based on conflict risk, and considering different severity levels.
基于实时交通数据的道路安全评估冲突风险建模:基于copula的联合方法
本研究提出了一种基于冲突的交通安全评估方法,将冲突频率和严重程度与短期交通特征相关联。本研究没有分析历史碰撞数据,而是使用微观轨迹数据来量化冲突风险与交通特征之间的关系。使用冲突时间(TTC)指数来检测冲突,并在时间积分TTC的基础上提出了严重性指数(SI)。对于SI,应用k均值算法对冲突严重程度进行分类。然后将区域冲突风险的严重程度划分为三个级别。分别采用零截断泊松回归和有序logit回归方法来估计短期交通特征对冲突频率和严重程度的影响。此外,应用基于copula的联合建模方法来探索冲突风险结果的潜在非线性依赖性。共对18个copula模型进行了测试,以选择最佳模型。利用德国的HighD数据集来检验所提出的框架。同时考虑车道间和车道内因素。结果表明,交通特征与冲突风险之间存在显著相关性,冲突结果的依赖性在不同严重程度之间存在差异。车道之间的速度变化差异显著影响冲突频率和严重程度。研究结果表明,所提出的方法通过使用短期(30秒时间间隔)交通特征来评估特定区域内的实时交通安全是可行的。这项研究还通过根据冲突风险评估道路安全,并考虑不同的严重程度,有助于制定有针对性的主动安全策略。
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来源期刊
Transportation Safety and Environment
Transportation Safety and Environment TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
3.90
自引率
13.60%
发文量
32
审稿时长
10 weeks
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