Investigating Factors Influencing Crash Severity on Mountainous Two-Lane Roads: Machine Learning Versus Statistical Models

Author:

Qi Ziyuan1,Yao Jingmeng1,Zou Xuan1,Pu Kairui1,Qin Wenwen12ORCID,Li Wu12ORCID

Affiliation:

1. Faculty of Transportation Engineering, Kunming University of Science and Technology, Kunming 650500, China

2. Yunnan Integrated Transport Development and Regional Logistics Management Think Tank, Kunming University of Science and Technology, Kunming 650500, China

Abstract

Due to poor road design, challenging terrain, and difficult geological conditions, traffic accidents on mountainous two-lane roads are more frequent and severe. This study aims to address the lack of understanding of key factors affecting accident severity with the goal of improving mountainous traffic safety, thereby contributing to sustainable transportation systems. The focus of this study is to compare the interpretability of model performances with three statistical models (Ordered Logit, Partial Proportional Odds Model, and Multinomial Logit) and six machine learning models (Decision Tree, Random Forest, Gradient Boosting, Extra Trees, AdaBoost, and XGBoost) on two-lane mountain roads in Yunnan Province, China. Additionally, we assessed the ability of these models to uncover underlying causal relationships, particularly how accident causes affect severity. Using the SHapley Additive exPlanations (SHAP) method, we interpreted the influence of risk factors in the machine learning models. Our findings indicate that machine learning models, especially XGBoost, outperform statistical models in predicting accident severity. The results highlight that accident patterns are the most significant determinants of severity, followed by road-related factors and the type of colliding vehicles. Environmental factors like weather, however, have minimal impact. Notably, vehicle falling, head-on collisions, and longitudinal slope sections are linked to more severe accidents, while minor accidents are more frequent on horizontal curve sections and areas that combine curves and slopes. These insights can help traffic management agencies develop targeted measures to reduce accident rates and enhance road safety, which is critical for promoting sustainable transportation in mountainous regions.

Funder

Kunming University of Science and Technology Innovative Research Team

Kunming University of Science and Technology Academic Excellence Cultivation Project

Yunnan Fundamental Research Projects

Yunnan Xing Dian Talents Plan Young Program

Publisher

MDPI AG

Reference59 articles.

1. Dynamic prediction of traffic accident risk in dangerous curved road sections in mountainous areas based on trajectory data;Ji;China J. Highw. Transp.,2022

2. Multivariate space-time modeling of crash frequencies by injury severity levels;Ma;Anal. Methods Accid. Res.,2017

3. Truck safety evaluation on Wyoming mountain passes;Apronti;Accid. Anal. Prev.,2019

4. Ranking contributors to traffic crashes on mountainous freeways from an incomplete dataset: A sequential approach of multivariate imputation by chained equations and random forest classifier;Li;Accid. Anal. Prev.,2020

5. Injury severity analysis of familiar drivers and unfamiliar drivers in single-vehicle crashes on the mountainous highways;Wen;Accid. Anal. Prev.,2020

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