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考虑驾驶员和道路风险指标的事故严重程度建模:贝叶斯网络方法。

Modeling crash severity by considering risk indicators of driver and roadway: A Bayesian network approach.

机构信息

Intelligent Transportation Systems Research Center, Southeast University, Nanjing 211189, China.

Intelligent Transportation Systems Research Center, Southeast University, Nanjing 211189, China.

出版信息

J Safety Res. 2021 Feb;76:64-72. doi: 10.1016/j.jsr.2020.11.006. Epub 2020 Dec 14.

Abstract

INTRODUCTION

Traffic crashes could result in severe outcomes such as injuries and deaths. Thus, understanding factors associated with crash severity is of practical importance. Few studies have deeply examined how prior violation and crash experience of drivers and roadways are associated with crash severity.

METHOD

In this study, a set of risk indicators of road users and roadways were developed based on their prior violation and crash records (e.g., cumulative crash frequency of a roadway), in order to reflect certain aspect or degree of their driving risk. To explore the impacts of those indicators on crash severity and complex interactions among all contributing factors, a Bayesian network approach was developed, based on citywide crash data collected in Kunshan, China from 2016 to 2018. A variable selection procedure based on Information Value (IV) was developed to identify significant variables, and the Bayesian network was employed to explicitly explore statistical associations between crash severity and significant variables.

RESULTS

In terms of balanced accuracy and AUCs, the proposed approach performed reasonably well. Bayesian modeling results indicated that the prior crash/violation experiences of road users and roadways were very important risk indicators. For example, migrant workers tend to have high injury risk due to their dangerous violation behaviors, such as retrograding, red-light running, and right-of-way violation. Furthermore, results showed that certain variable combinations had enhanced impacts on severity outcome than single variables. For example, when a migrant worker and a non-motorized vehicle are involved in a crash happening on a local road with high cumulative violation frequency in the previous year, the probability for drivers suffering serious injury or fatality is much higher than that caused by any single factor. Practical applications: The proposed methodology and modeling results provide insights for developing effective countermeasures to reduce crash severity and improve traffic system safety performance.

摘要

简介

交通事故可能导致严重后果,如受伤和死亡。因此,了解与事故严重程度相关的因素具有实际意义。很少有研究深入探讨驾驶员和道路的先前违规和事故经历与事故严重程度的关系。

方法

在本研究中,根据道路使用者和道路的先前违规和事故记录(例如,道路的累积事故频率),制定了一组道路使用者和道路的风险指标,以反映其驾驶风险的某些方面或程度。为了探索这些指标对事故严重程度的影响以及所有因素之间的复杂相互作用,基于 2016 年至 2018 年在中国昆山收集的全市范围的事故数据,开发了一种基于贝叶斯网络的方法。基于信息值 (IV) 的变量选择过程用于识别显著变量,贝叶斯网络用于明确探索事故严重程度与显著变量之间的统计关联。

结果

就平衡准确性和 AUC 而言,所提出的方法表现相当不错。贝叶斯建模结果表明,道路使用者和道路的先前事故/违规经历是非常重要的风险指标。例如,农民工由于逆行、闯红灯和违反优先通行权等危险违规行为,往往存在较高的受伤风险。此外,结果表明,某些变量组合对严重后果的影响比单个变量更大。例如,当农民工和非机动车辆在当地道路上发生事故,且该道路在前一年的累积违规频率较高时,驾驶员遭受重伤或死亡的概率远高于任何单一因素造成的概率。

实际应用

所提出的方法和建模结果为制定有效措施以降低事故严重程度和提高交通系统安全性能提供了深入见解。

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