Spatial pattern identification and crash severity analysis of road traffic crash hot spots in Ohio

Safety experts and transportation departments are focused on reducing road accidents and their societal and economic effects. The most crucial step in establishing a successful road safety practice is identifying dangerous highway zones through the study of crashes and looking at how the location of...

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Main Authors: Md Saiful Alam, Nusrat Jahan Tabassum
Format: Article
Language:English
Published: Elsevier 2023-05-01
Series:Heliyon
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2405844023035107
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author Md Saiful Alam
Nusrat Jahan Tabassum
author_facet Md Saiful Alam
Nusrat Jahan Tabassum
author_sort Md Saiful Alam
collection DOAJ
description Safety experts and transportation departments are focused on reducing road accidents and their societal and economic effects. The most crucial step in establishing a successful road safety practice is identifying dangerous highway zones through the study of crashes and looking at how the location of accidents relates to surrounding geography and other factors. Using the latest cutting-edge GIS analytical methods, this study aims to map the locations of accident hot spots and evaluate the severity and spatial extent of crash occurrences in Ohio. Road traffic crash (RTC) data has been analyzed using sophisticated GIS-based hot spot analysis for decades by safety researchers. Using four years' worth of crash data from the state of Ohio and spatial autocorrelation analysis, this study aims to show how a GIS technique can be used to find places where accidents are likely to happen (2017–2020). The study analyzed and ranked crash hotspot areas using the matching severity levels of RTCs. Cluster zones of high and low crash severity were discovered using the spatial autocorrelation tool and the Getis Ord Gi* statistics tool to evaluate the distribution of RTCs. The analysis used Getis Ord Gi*, the crash severity index, and Moran's I spatial autocorrelation of accident events. The findings indicated that these techniques were useful for identifying and rating crash hotspot locations. Since the sites of the identified accident hotspots are located in significant cities in the state of Ohio, such as Cleveland, Cincinnati, Toledo, and Columbus, the organizations in charge of traffic management should make it their top priority to minimize the negative socioeconomic impact that RTCs have and should also conduct a thorough investigation. This study's contribution is the incorporation of crash severity into hot spot analysis using GIS, which could lead to better-informed decision-making in the realm of highway safety.
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spelling doaj.art-ac352a02dece43679ee432b9fe30f87b2023-05-31T04:47:09ZengElsevierHeliyon2405-84402023-05-0195e16303Spatial pattern identification and crash severity analysis of road traffic crash hot spots in OhioMd Saiful Alam0Nusrat Jahan Tabassum1Corresponding author.; Bangladesh University of Engineering and Technology, Dhaka, BangladeshBangladesh University of Engineering and Technology, Dhaka, BangladeshSafety experts and transportation departments are focused on reducing road accidents and their societal and economic effects. The most crucial step in establishing a successful road safety practice is identifying dangerous highway zones through the study of crashes and looking at how the location of accidents relates to surrounding geography and other factors. Using the latest cutting-edge GIS analytical methods, this study aims to map the locations of accident hot spots and evaluate the severity and spatial extent of crash occurrences in Ohio. Road traffic crash (RTC) data has been analyzed using sophisticated GIS-based hot spot analysis for decades by safety researchers. Using four years' worth of crash data from the state of Ohio and spatial autocorrelation analysis, this study aims to show how a GIS technique can be used to find places where accidents are likely to happen (2017–2020). The study analyzed and ranked crash hotspot areas using the matching severity levels of RTCs. Cluster zones of high and low crash severity were discovered using the spatial autocorrelation tool and the Getis Ord Gi* statistics tool to evaluate the distribution of RTCs. The analysis used Getis Ord Gi*, the crash severity index, and Moran's I spatial autocorrelation of accident events. The findings indicated that these techniques were useful for identifying and rating crash hotspot locations. Since the sites of the identified accident hotspots are located in significant cities in the state of Ohio, such as Cleveland, Cincinnati, Toledo, and Columbus, the organizations in charge of traffic management should make it their top priority to minimize the negative socioeconomic impact that RTCs have and should also conduct a thorough investigation. This study's contribution is the incorporation of crash severity into hot spot analysis using GIS, which could lead to better-informed decision-making in the realm of highway safety.http://www.sciencedirect.com/science/article/pii/S2405844023035107Hotspot analysisGISRoad traffic crashGetis ord gi*Spatial autocorrelationClustering
spellingShingle Md Saiful Alam
Nusrat Jahan Tabassum
Spatial pattern identification and crash severity analysis of road traffic crash hot spots in Ohio
Heliyon
Hotspot analysis
GIS
Road traffic crash
Getis ord gi*
Spatial autocorrelation
Clustering
title Spatial pattern identification and crash severity analysis of road traffic crash hot spots in Ohio
title_full Spatial pattern identification and crash severity analysis of road traffic crash hot spots in Ohio
title_fullStr Spatial pattern identification and crash severity analysis of road traffic crash hot spots in Ohio
title_full_unstemmed Spatial pattern identification and crash severity analysis of road traffic crash hot spots in Ohio
title_short Spatial pattern identification and crash severity analysis of road traffic crash hot spots in Ohio
title_sort spatial pattern identification and crash severity analysis of road traffic crash hot spots in ohio
topic Hotspot analysis
GIS
Road traffic crash
Getis ord gi*
Spatial autocorrelation
Clustering
url http://www.sciencedirect.com/science/article/pii/S2405844023035107
work_keys_str_mv AT mdsaifulalam spatialpatternidentificationandcrashseverityanalysisofroadtrafficcrashhotspotsinohio
AT nusratjahantabassum spatialpatternidentificationandcrashseverityanalysisofroadtrafficcrashhotspotsinohio