Analysis of Pedestrian–Motor Vehicle Crashes in San Antonio, Texas

Pedestrian safety is becoming a global concern and an understanding of the contributing factors to severe pedestrian crashes is crucial. This study analyzed crash data for San Antonio, TX, over a six-year period to understand the effects of pedestrian–vehicle crash-related variables on pedestrian in...

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Bibliographic Details
Main Authors: Khondoker Billah, Hatim O. Sharif, Samer Dessouky
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/13/12/6610
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spelling doaj-a2e7873841c442e4aff191e4497206572021-06-30T23:47:40ZengMDPI AGSustainability2071-10502021-06-01136610661010.3390/su13126610Analysis of Pedestrian–Motor Vehicle Crashes in San Antonio, TexasKhondoker Billah0Hatim O. Sharif1Samer Dessouky2Department of Civil and Environmental Engineering, University of Texas at San Antonio, San Antonio, TX 78249, USADepartment of Civil and Environmental Engineering, University of Texas at San Antonio, San Antonio, TX 78249, USADepartment of Civil and Environmental Engineering, University of Texas at San Antonio, San Antonio, TX 78249, USAPedestrian safety is becoming a global concern and an understanding of the contributing factors to severe pedestrian crashes is crucial. This study analyzed crash data for San Antonio, TX, over a six-year period to understand the effects of pedestrian–vehicle crash-related variables on pedestrian injury severity based on the party at fault and to identify high-risk locations. Bivariate analysis and logistic regression were used to identify the most significant predictors of severe pedestrian crashes. High-risk locations were identified through heat maps and hotspot analysis. A failure to yield the right of way and driver inattention were the primary contributing factors to pedestrian–vehicle crashes. Fatal and incapacitating injury risk increased substantially when the pedestrian was at fault. The strongest predictors of severe pedestrian injury include the lighting condition, the road class, the speed limit, traffic control, collision type, the age of the pedestrian, and the gender of the pedestrian. The downtown area had the highest crash density, but crash severity hotspots were identified outside of the downtown area. Resource allocation to high-risk locations, a reduction in the speed limit, an upgrade of the lighting facilities in high pedestrian activity areas, educational campaigns for targeted audiences, the implementation of more crosswalks, pedestrian refuge islands, raised medians, and the use of leading pedestrian interval and hybrid beacons are recommended.https://www.mdpi.com/2071-1050/13/12/6610pedestrianmotor vehiclecrashesfatalitieslogistic regressionbivariate analysis
collection DOAJ
language English
format Article
sources DOAJ
author Khondoker Billah
Hatim O. Sharif
Samer Dessouky
spellingShingle Khondoker Billah
Hatim O. Sharif
Samer Dessouky
Analysis of Pedestrian–Motor Vehicle Crashes in San Antonio, Texas
Sustainability
pedestrian
motor vehicle
crashes
fatalities
logistic regression
bivariate analysis
author_facet Khondoker Billah
Hatim O. Sharif
Samer Dessouky
author_sort Khondoker Billah
title Analysis of Pedestrian–Motor Vehicle Crashes in San Antonio, Texas
title_short Analysis of Pedestrian–Motor Vehicle Crashes in San Antonio, Texas
title_full Analysis of Pedestrian–Motor Vehicle Crashes in San Antonio, Texas
title_fullStr Analysis of Pedestrian–Motor Vehicle Crashes in San Antonio, Texas
title_full_unstemmed Analysis of Pedestrian–Motor Vehicle Crashes in San Antonio, Texas
title_sort analysis of pedestrian–motor vehicle crashes in san antonio, texas
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2021-06-01
description Pedestrian safety is becoming a global concern and an understanding of the contributing factors to severe pedestrian crashes is crucial. This study analyzed crash data for San Antonio, TX, over a six-year period to understand the effects of pedestrian–vehicle crash-related variables on pedestrian injury severity based on the party at fault and to identify high-risk locations. Bivariate analysis and logistic regression were used to identify the most significant predictors of severe pedestrian crashes. High-risk locations were identified through heat maps and hotspot analysis. A failure to yield the right of way and driver inattention were the primary contributing factors to pedestrian–vehicle crashes. Fatal and incapacitating injury risk increased substantially when the pedestrian was at fault. The strongest predictors of severe pedestrian injury include the lighting condition, the road class, the speed limit, traffic control, collision type, the age of the pedestrian, and the gender of the pedestrian. The downtown area had the highest crash density, but crash severity hotspots were identified outside of the downtown area. Resource allocation to high-risk locations, a reduction in the speed limit, an upgrade of the lighting facilities in high pedestrian activity areas, educational campaigns for targeted audiences, the implementation of more crosswalks, pedestrian refuge islands, raised medians, and the use of leading pedestrian interval and hybrid beacons are recommended.
topic pedestrian
motor vehicle
crashes
fatalities
logistic regression
bivariate analysis
url https://www.mdpi.com/2071-1050/13/12/6610
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