4.6 Article

Temporal stability of the impact of factors determining drivers' injury severities across traffic barrier crashes in mountainous regions

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DOI: 10.1016/j.amar.2023.100282

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Mountainous regions; Injury severity; Traffic barrier; Temporal stability; Comparison of discrete outcome models; Random thresholds; Random parameters; Generalized ordered logit; Multinormal logit; Heterogeneity in means; Heterogeneity in variances

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This paper assesses the impact of different types of traffic barriers on driver injury-severity using various models. The results show that the RPLHMV model outperforms other models and provides quantitative descriptions of explanatory variables on injury severity. The study also reveals temporal variations in the effects of factors on driver injury-severity.
Traffic barrier crashes have been a major concern in many prior studies in traffic safety lit-erature, especially in the crash-prone sections of mountainous regions. However, the effect of factors affecting the injury-severities resulting from crashes involving different types of traffic barriers may be different. This paper provides an empirical assessment of the perfor-mance of ordered and unordered discrete outcome models for examining the impact of exogenous factors determining the driver injury-severity of crashes involving two types of traffic barriers in mountainous regions: w-beam barriers and cable barriers. For the ordered framework, the alternative modeling approaches include: the generalized ordered logit (GOL) and the random thresholds random parameters generalized ordered logit model (RTRPGOL). Whereas, for the unordered framework, the alternative modeling approaches include: the multinomial logit (MNL), the random parameters multinormal logit (RPL), and the random parameters multinormal logit model with heterogeneity in the means and variances (RPLHMV). Using injury-severity data from 2016 to 2019 for mountainous regions in Guiyang City, China, three injury-severity categories are deter-mined as outcome variables: severe injury (SI), minor injury (MI), and no injury (NI), while the potential influencing factors including drivers-, vehicles-, road-, and environment -specific characteristics are statistically analyzed. The model estimation results show: (a) that the MNL model statistically outperforms the GOL model in terms of goodness-of-fit measures; (b) the RTRPGOL model is statistically superior to the MNL and RPL models; and (c) the RPLHMV model is statistically superior to the RTRPGOL model, and therefore the preferred option among the model alternatives. To that end, the RPLHMV model is leveraged to quantitatively describe the impact of explanatory variables on the driver injury-severity and explore how these factors change over the years (between 2016- 2017 and 2018-2019). The results further show that the factors affecting driver injury severities and the effects of significant factors on injury severity probabilities change across traffic barrier crash models and across years. In addition, the results of the temporal effects analysis show that some variables present relative temporal stability, which is important for formulating long-term strategies to enhance traffic safety on mountainous roads. Most importantly, the effects of the explanatory factors that exhibit relative temporal

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