Discovering Spatio-Temporal Clusters of Road Collisions Using the Method of Fast Bayesian Model-Based Cluster Detection

Public availability of geo-coded or geo-referenced road collisions (crashes) makes it possible to perform geovisualisation and spatio-temporal analysis of road collisions across a city. This study aims to detect spatio-temporal clusters of road collisions across Greater London between 2010 and 2014....

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Main Authors: Yeran Sun, Yu Wang, Ke Yuan, Ting On Chan, Ying Huang
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/20/8681
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spelling doaj-c792b35c78fe47ddafb5fc4dcc491a582020-11-25T03:10:08ZengMDPI AGSustainability2071-10502020-10-01128681868110.3390/su12208681Discovering Spatio-Temporal Clusters of Road Collisions Using the Method of Fast Bayesian Model-Based Cluster DetectionYeran Sun0Yu Wang1Ke Yuan2Ting On Chan3Ying Huang4Department of Geography, College of Science, Swansea University, Swansea SA28PP, UKDepartment of Urban and Rural Planning, School of Architecture, Tianjin University, Tianjin 300072, ChinaAcademy of China Open Economy Studies, University of International Business and Economics, Beijing 100029, ChinaSchool of Geography and Planning, Sun Yat-sen University, Guangzhou 510275, ChinaSchool of Geography and Planning, Sun Yat-sen University, Guangzhou 510275, ChinaPublic availability of geo-coded or geo-referenced road collisions (crashes) makes it possible to perform geovisualisation and spatio-temporal analysis of road collisions across a city. This study aims to detect spatio-temporal clusters of road collisions across Greater London between 2010 and 2014. We implemented a fast Bayesian model-based cluster detection method with no covariates and after adjusting for potential covariates respectively. As empirical evidence on the association of street connectivity measures and the occurrence of road collisions had been found, we selected street connectivity measures as the potential covariates in our cluster detection. Results of the most significant cluster and the second most significant cluster during five consecutive years are located around the central areas. Moreover, after adjusting the covariates, the most significant cluster moves from the central areas of London to its peripheral areas, while the second most significant cluster remains unchanged. Additionally, one potential covariate used in this study, length-based road density, exhibits a positive association with the number of road collisions; meanwhile count-based intersection density displays a negative association. Although the covariates (i.e., road density and intersection density) exhibit potential impact on the clusters of road collisions, they are unlikely to contribute to the majority of clusters. Furthermore, the method of fast Bayesian model-based cluster detection is developed to discover spatio-temporal clusters of serious injury collisions. Most of the areas at risk of serious injury collisions overlay those at risk of road collisions. Although not being identified as areas at risk of road collisions, some districts, e.g., City of London, are regarded as areas at risk of serious injury collisions.https://www.mdpi.com/2071-1050/12/20/8681traffic safetyroad collisionspatio-temporal cluster detectionfast Bayesian model-based detection methodstreet connectivity
collection DOAJ
language English
format Article
sources DOAJ
author Yeran Sun
Yu Wang
Ke Yuan
Ting On Chan
Ying Huang
spellingShingle Yeran Sun
Yu Wang
Ke Yuan
Ting On Chan
Ying Huang
Discovering Spatio-Temporal Clusters of Road Collisions Using the Method of Fast Bayesian Model-Based Cluster Detection
Sustainability
traffic safety
road collision
spatio-temporal cluster detection
fast Bayesian model-based detection method
street connectivity
author_facet Yeran Sun
Yu Wang
Ke Yuan
Ting On Chan
Ying Huang
author_sort Yeran Sun
title Discovering Spatio-Temporal Clusters of Road Collisions Using the Method of Fast Bayesian Model-Based Cluster Detection
title_short Discovering Spatio-Temporal Clusters of Road Collisions Using the Method of Fast Bayesian Model-Based Cluster Detection
title_full Discovering Spatio-Temporal Clusters of Road Collisions Using the Method of Fast Bayesian Model-Based Cluster Detection
title_fullStr Discovering Spatio-Temporal Clusters of Road Collisions Using the Method of Fast Bayesian Model-Based Cluster Detection
title_full_unstemmed Discovering Spatio-Temporal Clusters of Road Collisions Using the Method of Fast Bayesian Model-Based Cluster Detection
title_sort discovering spatio-temporal clusters of road collisions using the method of fast bayesian model-based cluster detection
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-10-01
description Public availability of geo-coded or geo-referenced road collisions (crashes) makes it possible to perform geovisualisation and spatio-temporal analysis of road collisions across a city. This study aims to detect spatio-temporal clusters of road collisions across Greater London between 2010 and 2014. We implemented a fast Bayesian model-based cluster detection method with no covariates and after adjusting for potential covariates respectively. As empirical evidence on the association of street connectivity measures and the occurrence of road collisions had been found, we selected street connectivity measures as the potential covariates in our cluster detection. Results of the most significant cluster and the second most significant cluster during five consecutive years are located around the central areas. Moreover, after adjusting the covariates, the most significant cluster moves from the central areas of London to its peripheral areas, while the second most significant cluster remains unchanged. Additionally, one potential covariate used in this study, length-based road density, exhibits a positive association with the number of road collisions; meanwhile count-based intersection density displays a negative association. Although the covariates (i.e., road density and intersection density) exhibit potential impact on the clusters of road collisions, they are unlikely to contribute to the majority of clusters. Furthermore, the method of fast Bayesian model-based cluster detection is developed to discover spatio-temporal clusters of serious injury collisions. Most of the areas at risk of serious injury collisions overlay those at risk of road collisions. Although not being identified as areas at risk of road collisions, some districts, e.g., City of London, are regarded as areas at risk of serious injury collisions.
topic traffic safety
road collision
spatio-temporal cluster detection
fast Bayesian model-based detection method
street connectivity
url https://www.mdpi.com/2071-1050/12/20/8681
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