Litcius/Paper detail

Analysis of injury severity in rear-end crashes on an expressway involving different types of vehicles using random-parameters logit models with heterogeneity in means and variances

Chenzhu Wang, Fei Chen, Yunlong Zhang, Jianchuan Cheng

2022Transportation Letters48 citationsDOI

Abstract

To examine the difference in contributing factors of rear-end crashes of different injury severity involving different types of vehicles, this paper proposed random-parameters multinomial logit models with heterogeneity in means and variances. A three-year (2017–2019) rear-end crash data collected from Beijing-Shanghai Highways in China was used to calibrate the models. The rear-end crashes were classified as five types (Car-Car, Car-Truck, Truck-Truck, Truck-Car, Others). With two possible injury severity outcomes of medium/severe injury and light injury, a wide range of possible variables including crash, traffic, speed, geometric, and sight characteristics were considered in this study. Likelihood ratio tests revealed the rationality of adopting merged models using the data across three-year periods. Remarkably significant differences were shown in crashes involving different types of vehicles. The results accounting for the possible heterogeneity could be of value to roadway designers and traffic management departments seeking to promote highway safety and raise accurate safety countermeasures.

Topics & Concepts

TruckMultinomial logistic regressionCrashTransport engineeringMixed logitBeijingStatisticsRange (aeronautics)EconometricsLogistic regressionComputer scienceEngineeringMathematicsAutomotive engineeringChinaGeographyAerospace engineeringArchaeologyProgramming languageTraffic and Road SafetyUrban Transport and AccessibilityTraffic Prediction and Management Techniques