Incorporating travel time reliability in predicting the likelihood of severe crashes on arterial highways using non-parametric random-effect regression

被引:0
作者
Emmanuel Kidando [1 ]
Ren Moses [2 ]
Eren Erman Ozguven [1 ]
Thobias Sando [3 ]
机构
[1] Department of Civil and Environmental Engineering,FAMU-FSU College of Engineering,Florida State University
[2] Department of Civil and Environmental Engineering,FAMU-FSU College of Engineering,Florida A & M University
[3] School of Engineering,University of North Florida
关键词
Travel time reliability; Crash severity; Non-parametric distributed; random-effect; Gaussian distributed random-effect; Dirichlet process prior;
D O I
暂无
中图分类号
U491.31 [交通事故处理、分析与统计];
学科分类号
0306 ; 0838 ;
摘要
Travel time reliability(TTR) modeling has gain attention among researchers' due to its ability to represent road user satisfaction as well as providing a predictability of a trip travel time.Despite this significant effort,its impact on the severity of a crash is not well explored.This study analyzes the effect of TTR and other variables on the probability of the crash severity occurring on arterial roads.To address the unobserved heterogeneity problem,two random-effect regressions were applied;the Dirichlet random-effect(DRE)and the traditional random-effect(TRE) logistic regression.The difference between the two models is that the random-effect in the DRE is non-parametrically specified while in the TRE model is parametrically specified.The Markov Chain Monte Carlo simulations were adopted to infer the parameters' posterior distributions of the two developed models.Using four-year police-reported crash data and travel speeds from Northeast Florida,the analysis of goodness-of-fit found the DRE model to best fit the data.Hence,it was used in studying the influence of TTR and other variables on crash severity.The DRE model findings suggest that TTR is statistically significant,at 95 percent credible intervals,influencing the severity level of a crash.A unit increases in TTR reduces the likelihood of a severe crash occurrence by 25 percent.Moreover,among the significant variables,alcohol/drug impairment was found to have the highest impact in influencing the occurrence of severe crashes.Other significant factors included traffic volume,weekends,speed,work-zone,land use,visibility,seatbelt usage,segment length,undivided/divided highway,and age.
引用
收藏
页码:470 / 481
页数:12
相关论文
共 21 条
[1]  
Analysis of Severe Injury Accident Rates on Interstate Highways Using a Random Parameter Tobit Model[J] . Minho Park,Dongmin Lee,Inmaculada T. Castro.Mathematical Problems in Engineering . 2017
[2]  
Mixture Models for Fitting Freeway Travel Time Distributions and Measuring Travel Time Reliability[J] . Shu Yang,Yao-Jan Wu.Transportation Research Record . 2016 (1)
[3]  
Crash Risk Analysis for Shanghai Urban Expressways: a Bayesian Semi-parametric Modelling Approach[J] . Rongjie Yu,Xuesong Wang,Kui Yang,Mohamed Abdel-Aty.Accident Analysis and Prevention . 2015
[4]  
Latent class analysis of the Effects of age, gender, and alcohol consumption on driver-injury severities[J] . Ali Behnood,Arash M. Roshandeh,Fred L. Mannering.Analytic Methods in Accident Research . 2014
[5]  
Crash Severity Analysis of Single Vehicle Run-off-Road Crashes[J] . Sunanda Dissanayake,Uttara Roy.Journal of Transportation Technologies . 2014 (01)
[6]  
A caution about using deviance information criterion while modeling traffic crashes[J] . Srinivas Reddy Geedipally,Dominique Lord,Soma Sekhar Dhavala.Safety Science . 2014
[7]  
Travel through time: the story of research on travel time reliability[J] . Michael A.P. Taylor.Transportmetrica B: Transport Dynamics . 2013 (3)
[8]   Variational learning of a Dirichlet process of generalized Dirichlet distributions for simultaneous clustering and feature selection [J].
Fan, Wentao ;
Bouguila, Nizar .
PATTERN RECOGNITION, 2013, 46 (10) :2754-2769
[9]  
Large Truck–Involved Crashes: Exploratory Injury Severity Analysis[J] . Mouyid Islam,Salvador Hernandez.Journal of Transportation Engineering . 2013 (6)
[10]  
A clustering regression approach: A comprehensive injury severity analysis of pedestrian–vehicle crashes in New York, US and Montreal, Canada[J] . Mohamed Gomaa Mohamed,Nicolas Saunier,Luis F. Miranda-Moreno,Satish V. Ukkusuri.Safety Science . 2013