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Statistical and Spatial Analysis of Large Truck Crashes in Texas (2017–2021)

Author

Listed:
  • Khondoker Billah

    (Department of Civil Engineering, East West University, Aftabnagar, Dhaka 1212, Bangladesh)

  • Hatim O. Sharif

    (School of Civil and Environmental Engineering and Construction Management, University of Texas at San Antonio, San Antonio, TX 78249, USA)

  • Samer Dessouky

    (School of Civil and Environmental Engineering and Construction Management, University of Texas at San Antonio, San Antonio, TX 78249, USA)

Abstract

Freight transportation, dominated by trucks, is an integral part of trade and production in the USA. Given the prevalence of large truck crashes, a comprehensive investigation is imperative to ascertain the underlying causes. This study analyzed 2017–2021 Texas crash data to identify factors impacting large truck crash rates and injury severity and to locate high-risk zones for severe incidents. Logistic regression models and bivariate analysis were utilized to assess the impacts of various crash-related variables individually and collectively. Heat maps and hotspot analysis were employed to pinpoint areas with a high frequency of both minor and severe large truck crashes. The findings of the investigation highlighted night-time no-passing zones and marked lanes as primary road traffic control, highway or FM roads, a higher posted road speed limit, dark lighting conditions, male and older drivers, and curved road alignment as prominent contributing factors to large truck crashes. Furthermore, in cases where the large truck driver was determined not to be at fault, the likelihood of severe collisions significantly increased. The study’s findings urge policymakers to prioritize infrastructure improvements like dual left-turn lanes and extended exit ramps while advocating for wider adoption of safety technologies like lane departure warnings and autonomous emergency braking. Additionally, public awareness campaigns aimed at reducing distracted driving and drunk driving, particularly among truck drivers, could significantly reduce crashes. By implementing these targeted solutions, we can create safer roads for everyone in Texas.

Suggested Citation

  • Khondoker Billah & Hatim O. Sharif & Samer Dessouky, 2024. "Statistical and Spatial Analysis of Large Truck Crashes in Texas (2017–2021)," Sustainability, MDPI, vol. 16(7), pages 1-26, March.
  • Handle: RePEc:gam:jsusta:v:16:y:2024:i:7:p:2780-:d:1365006
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