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Probability of Roadside Accidents for Curved Sections on Highways

机译:高速公路弯道路段的路边事故概率

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摘要

To predict the probability of roadside accidents for curved sections on highways, we chose eight risk factors that may contribute to the probability of roadside accidents to conduct simulation tests and collected a total of 12,800 data obtained from the PC-crash software. The chi-squared automatic interaction detection (CHAID) decision tree technique was employed to identify significant risk factors and explore the influence of different combinations of significant risk factors on roadside accidents according to the generated decision rules, so as to propose specific improved countermeasures as the reference for the revision of the Design Specification for Highway Alignment (JTG D20-2017) of China. Considering the effects of related interactions among different risk factors on roadside accidents, path analysis was applied to investigate the importance of the significant risk factors. The results showed that the significant risk factors were in decreasing order of importance, vehicle speed, horizontal curve radius, vehicle type, adhesion coefficient, hard shoulder width, and longitudinal slope. The first five important factors were chosen as predictors of the probability of roadside accidents in the Bayesian network analysis to establish the probability prediction model of roadside accidents. Eventually, the thresholds of the various factors for roadside accident blackspot identification were given according to probabilistic prediction results.
机译:为了预测高速公路弯道路段发生路边事故的概率,我们选择了8个可能影响路边事故概率的风险因素进行模拟测试,并收集了从PC碰撞软件中获得的总共12,800个数据。采用卡方自动交互检测(CHAID)决策树技术,根据生成的决策规则识别显著危险因素,探究不同重大危险因素组合对路边事故的影响,提出具体的改进对策,为我国《公路线形设计规范》(JTG D20-2017)的修订提供参考。考虑不同危险因素之间交互作用对道路事故的影响,采用路径分析方法考察显著危险因素的重要性。结果表明:显著危险因素依次为重要性、车速、水平曲线半径、车辆类型、粘附系数、硬路肩宽度和纵向坡度。在贝叶斯网络分析中,选择前5个重要因素作为路边事故概率的预测因子,建立路边事故概率预测模型。最终,根据概率预测结果给出了路侧事故黑点识别的各因素阈值。

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