A hybrid approach for urban expressway traffic incident duration prediction with Cox regression and random survival forests models

Axiang Ke, Zhenqi Gao, Rongjie Yu, Min Wang, X. Wang
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引用次数: 5

Abstract

Traffic incidents such as crashes have significant impacts on urban expressway operation. The roadside service and operational efficiency of urban expressways could be improved based on a well-developed incident duration prediction model. In this study, a hybrid approach that combines Cox regression and random survival forests algorithm is developed to establish incident duration analysis model. The study is conducted based on traffic incident data from Shanghai urban expressways. For each traffic incident, information about the road geometry, traffic operation, and weather conditions was collected for experiments, where 80% of sample is used for training and the rest 20% for validation. In the hybrid model, a Cox regression model is predeveloped to investigate and identify the significant contributing factors of incident duration. Then, these identified significant factors are used as inputs for the random survival forests model. Finally, the statistical measurements including mean absolute error (MAE) and normalized mean square error (NMS) are used to measure the model performance and compare with other models. The analysis results show that incident type, location, affected lane numbers and other attributes have significant impacts on incident duration, and the hybrid approach model provides better prediction accuracy over traditional traffic incident duration prediction methods.
基于Cox回归和随机生存森林模型的城市高速公路交通事故持续时间预测混合方法
交通事故等交通事故对城市高速公路的运营有着重要的影响。建立完善的事故持续时间预测模型,可以提高城市高速公路的道路服务水平和运营效率。本研究采用Cox回归与随机生存森林算法相结合的混合方法建立事件持续时间分析模型。本研究是基于上海城市高速公路交通事故数据进行的。对于每个交通事件,收集道路几何形状、交通运行和天气条件等信息进行实验,其中80%的样本用于训练,其余20%用于验证。在混合模型中,预先开发了Cox回归模型来调查和确定事件持续时间的重要影响因素。然后,将这些识别出的显著因子作为随机生存森林模型的输入。最后,使用平均绝对误差(MAE)和归一化均方误差(NMS)等统计度量来衡量模型的性能,并与其他模型进行比较。分析结果表明,事件类型、位置、受影响车道数等属性对事件持续时间有显著影响,混合方法模型比传统的交通事件持续时间预测方法具有更好的预测精度。
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