Print Email Facebook Twitter Analysis of Injury Severity of Drivers Involved Different Types of Two-Vehicle Crashes Using Random-Parameters Logit Models with Heterogeneity in Means and Variances Title Analysis of Injury Severity of Drivers Involved Different Types of Two-Vehicle Crashes Using Random-Parameters Logit Models with Heterogeneity in Means and Variances Author Wu, Qiang (Nantong University) Song, Dongdong (Beijing Jiaotong University) Wang, Chenzhu (Southeast University) Chen, Fei (Southeast University) Cheng, Jianchuan (Southeast University) Easa, Said M. (Toronto Metropolitan University) Yang, Y. (TU Delft Transport and Planning) Yang, Wenchen (Broadvision Engineering Consultants Co., Ltd.; Yunnan Key Laboratory of Digital Communications) Date 2023 Abstract This study proposes random-parameters multinomial logit models, with heterogeneity in means and variances, to explore the differences in the factors influencing injury severities of drivers involved in different types of two-vehicle crashes. The models are verified using crash data from the United Kingdom (UK) over three years (2016–2018). Three types of crashes are separately identified (car-car, car-truck, and truck-truck crashes). In this study, a wide variety of potential variables, including the driver, vehicle, road, and environmental characteristics, are considered, with two possible injury-severity outcomes: severe and slight injury. The results show that unobserved heterogeneity existed for young drivers in both car-car and truck-truck crash models and the 30 mph speed limit in the three separate models. Remarkably variations are observed in crashes involving different types of vehicles. The driver’s age and gender, speeding, sideswipes, presence of junctions, weekdays, unlit, and weather conditions significantly impact driver-injury severities in various types of vehicle crashes. These findings are expected to help policymakers seek to improve highway safety and implement proper safety countermeasures. To reference this document use: http://resolver.tudelft.nl/uuid:751dc447-830d-4c96-a68d-31aa34f1386b DOI https://doi.org/10.1155/2023/3399631 ISSN 0197-6729 Source Journal of Advanced Transportation, 2023 Part of collection Institutional Repository Document type journal article Rights © 2023 Qiang Wu, Dongdong Song, Chenzhu Wang, Fei Chen, Jianchuan Cheng, Said M. Easa, Y. Yang, Wenchen Yang Files PDF 3399631.pdf 524.39 KB Close viewer /islandora/object/uuid:751dc447-830d-4c96-a68d-31aa34f1386b/datastream/OBJ/view