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模拟年平均日交通量对预测城市和郊区信号交叉口多车碰撞事故的影响。

Modeling the effects of AADT on predicting multiple-vehicle crashes at urban and suburban signalized intersections.

作者信息

Chen Chen, Xie Yuanchang

机构信息

Department of Civil and Environmental Engineering, University of Massachusetts Lowell, 1 University Avenue, Lowell, MA 01854, United States.

出版信息

Accid Anal Prev. 2016 Jun;91:72-83. doi: 10.1016/j.aap.2016.02.016. Epub 2016 Mar 11.

Abstract

Annual Average Daily Traffic (AADT) is often considered as a main covariate for predicting crash frequencies at urban and suburban intersections. A linear functional form is typically assumed for the Safety Performance Function (SPF) to describe the relationship between the natural logarithm of expected crash frequency and covariates derived from AADTs. Such a linearity assumption has been questioned by many researchers. This study applies Generalized Additive Models (GAMs) and Piecewise Linear Negative Binomial (PLNB) regression models to fit intersection crash data. Various covariates derived from minor-and major-approach AADTs are considered. Three different dependent variables are modeled, which are total multiple-vehicle crashes, rear-end crashes, and angle crashes. The modeling results suggest that a nonlinear functional form may be more appropriate. Also, the results show that it is important to take into consideration the joint safety effects of multiple covariates. Additionally, it is found that the ratio of minor to major-approach AADT has a varying impact on intersection safety and deserves further investigations.

摘要

年平均日交通量(AADT)通常被视为预测城市和郊区交叉路口事故频率的主要协变量。安全性能函数(SPF)通常采用线性函数形式来描述预期事故频率的自然对数与从AADT导出的协变量之间的关系。这种线性假设受到了许多研究人员的质疑。本研究应用广义相加模型(GAM)和分段线性负二项式(PLNB)回归模型来拟合交叉路口事故数据。考虑了从次要和主要进近AADT导出的各种协变量。对三个不同的因变量进行建模,分别是多车事故总数、追尾事故和角度碰撞事故。建模结果表明,非线性函数形式可能更合适。此外,结果表明考虑多个协变量的联合安全效应很重要。此外,发现次要与主要进近AADT的比率对交叉路口安全有不同影响,值得进一步研究。

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