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利用实时环形探测器数据和具有随机效应的分层贝叶斯二元逻辑模型调查肇事逃逸事故的发生情况和严重程度。

Investigation of hit-and-run crash occurrence and severity using real-time loop detector data and hierarchical Bayesian binary logit model with random effects.

作者信息

Xie Meiquan, Cheng Wen, Gill Gurdiljot Singh, Zhou Jiao, Jia Xudong, Choi Simon

机构信息

a School of Transportation and Logistics , Central South University of Forestry and Technology , Changsha , Hunan , China.

b Department of Civil Engineering , California State Polytechnic University , Pomona , Pomona , California.

出版信息

Traffic Inj Prev. 2018 Feb 17;19(2):207-213. doi: 10.1080/15389588.2017.1371302. Epub 2017 Nov 2.

Abstract

OBJECTIVE

Most of the extensive research dedicated to identifying the influential factors of hit-and-run (HR) crashes has utilized typical maximum likelihood estimation binary logit models, and none have employed real-time traffic data. To fill this gap, this study focused on investigating factors contributing to HR crashes, as well as the severity levels of HR.

METHODS

This study analyzed 4-year crash and real-time loop detector data by employing hierarchical Bayesian models with random effects within a sequential logit structure. In addition to evaluation of the impact of random effects on model fitness and complexity, the prediction capability of the models was examined. Stepwise incremental sensitivity and specificity were calculated and receiver operating characteristic (ROC) curves were utilized to graphically illustrate the predictive performance of the model.

RESULTS

Among the real-time flow variables, the average occupancy and speed from the upstream detector were observed to be positively correlated with HR crash possibility. The average upstream speed and speed difference between upstream and downstream speeds were correlated with the occurrence of severe HR crashes. In addition to real-time factors, other variables found influential for HR and severe HR crashes were length of segment, adverse weather conditions, dark lighting conditions with malfunctioning street lights, driving under the influence of alcohol, width of inner shoulder, and nighttime.

CONCLUSIONS

This study suggests the potential traffic conditions of HR and severe HR occurrence, which refer to relatively congested upstream traffic conditions with high upstream speed and significant speed deviations on long segments. The above findings suggest that traffic enforcement should be directed toward mitigating risky driving under the aforementioned traffic conditions. Moreover, enforcement agencies may employ alcohol checkpoints to counter driving under the influence (DUI) at night. With regard to engineering improvements, wider inner shoulders may be constructed to potentially reduce HR cases and street lights should be installed and maintained in working condition to make roads less prone to such crashes.

摘要

目的

大多数致力于识别肇事逃逸(HR)事故影响因素的广泛研究都采用了典型的最大似然估计二元逻辑模型,且均未使用实时交通数据。为填补这一空白,本研究着重调查导致HR事故的因素以及HR事故的严重程度。

方法

本研究通过在序贯逻辑结构内采用具有随机效应的分层贝叶斯模型,分析了4年的事故数据和实时环形探测器数据。除了评估随机效应对模型拟合度和复杂性的影响外,还检验了模型的预测能力。计算了逐步增量敏感性和特异性,并利用受试者工作特征(ROC)曲线以图形方式说明模型的预测性能。

结果

在实时流量变量中,观察到上游探测器的平均占有率和速度与HR事故可能性呈正相关。上游平均速度以及上下游速度差与严重HR事故的发生相关。除实时因素外,其他对HR事故和严重HR事故有影响的变量包括路段长度、恶劣天气条件、路灯故障时的昏暗照明条件、酒后驾驶、内侧路肩宽度和夜间。

结论

本研究揭示了HR事故和严重HR事故可能出现的潜在交通状况,即上游交通相对拥堵、上游速度较高且长路段存在显著速度偏差的情况。上述研究结果表明,交通执法应针对缓解上述交通状况下的危险驾驶行为。此外,执法机构可设置酒精检查站以打击夜间酒后驾车行为。在工程改进方面,可拓宽内侧路肩以潜在减少HR事故案例,并且应安装和维护路灯使其正常工作,以使道路不易发生此类事故。

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