Identifying roadway departure crash patterns on rural two-lane highways under different lighting conditions: association knowledge using data mining approach
Ahmed Hossain, Xiaoduan Sun, Shahrin Islam, Shah Alam, Md Mahmud, Hossain

TL;DR
This study analyzes roadway departure crash patterns on rural two-lane highways under different lighting conditions using data mining, revealing key behavioral and environmental factors associated with crashes to inform safety strategies.
Contribution
It applies association rules mining to identify complex interactions among risk factors under various lighting conditions, a novel approach in this context.
Findings
Fatal crashes in daylight linked to weather and roadway conditions.
Dark conditions show strong links to alcohol, young drivers, and animal collisions.
Behavioral patterns like intoxication and distraction are critical in crash risk.
Abstract
More than half of all fatalities on U.S. highways occur due to roadway departure (RwD) each year. Previous research has explored various risk factors that contribute to RwD crashes, however, a comprehensive investigation considering the effect of lighting conditions has been insufficiently addressed. Using the Louisiana Department of Transportation and Development crash database, fatal and injury RwD crashes occurring on rural two-lane (R2L) highways between 2008-2017 were analyzed based on daylight and dark (with/without streetlight). This research employed a safe system approach to explore meaningful complex interactions among multidimensional crash risk factors. To accomplish this, an unsupervised data mining algorithm association rules mining (ARM) was utilized. Based on the generated rules, the findings reveal several interesting crash patterns in the daylight,…
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