Sebnem Er, Álvaro Briz-Redon, Sulaiman Salau, Robin Lovelace
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The results reveal that among the covariates included in the selected model, node degree (used as a proxy for traffic flow), the presence of traffic signals, having any major road around the intersection (road class), location along “Main Road”, and the presence of a taxi route at the intersection were all associated with an increase in traffic collision counts at the intersections. The years 2018 and 2019 were associated with higher collision counts compared to the reference year, 2015. For the probability component of the model, the existence of traffic signals at the intersection and location along “Main Road”were both associated with an increase in the chances of at least one collision being observed at the intersection, whereas having any high-speed road around the intersection decreased this chance.</p></div>","PeriodicalId":46392,"journal":{"name":"Applied Spatial Analysis and Policy","volume":"18 3","pages":""},"PeriodicalIF":1.9000,"publicationDate":"2025-07-31","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://link.springer.com/content/pdf/10.1007/s12061-025-09703-0.pdf","citationCount":"0","resultStr":"{\"title\":\"Modelling of Traffic Collisions at Road Intersections in Cape Town, South Africa: A Bayesian Spatio-Temporal Approach\",\"authors\":\"Sebnem Er, Álvaro Briz-Redon, Sulaiman Salau, Robin Lovelace\",\"doi\":\"10.1007/s12061-025-09703-0\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>This paper models road traffic collision counts recorded between 2015 and 2019 in a ward located in the central part of Cape Town in South Africa, using a Bayesian spatio-temporal zero-inflated Negative Binomial approach. The method accounted for the excess zeros present in collision data by separately modeling zero and non-zero collision counts, while also capturing spatial and temporal dependencies through prior distributions. Road-level information was used as fixed-effects covariates, including speed limits, presence of traffic calming measures, traffic signals, road class, number of lanes, whether the intersection is on “Main Road”, and whether a public transport route passes through the intersection. The results reveal that among the covariates included in the selected model, node degree (used as a proxy for traffic flow), the presence of traffic signals, having any major road around the intersection (road class), location along “Main Road”, and the presence of a taxi route at the intersection were all associated with an increase in traffic collision counts at the intersections. The years 2018 and 2019 were associated with higher collision counts compared to the reference year, 2015. 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Modelling of Traffic Collisions at Road Intersections in Cape Town, South Africa: A Bayesian Spatio-Temporal Approach
This paper models road traffic collision counts recorded between 2015 and 2019 in a ward located in the central part of Cape Town in South Africa, using a Bayesian spatio-temporal zero-inflated Negative Binomial approach. The method accounted for the excess zeros present in collision data by separately modeling zero and non-zero collision counts, while also capturing spatial and temporal dependencies through prior distributions. Road-level information was used as fixed-effects covariates, including speed limits, presence of traffic calming measures, traffic signals, road class, number of lanes, whether the intersection is on “Main Road”, and whether a public transport route passes through the intersection. The results reveal that among the covariates included in the selected model, node degree (used as a proxy for traffic flow), the presence of traffic signals, having any major road around the intersection (road class), location along “Main Road”, and the presence of a taxi route at the intersection were all associated with an increase in traffic collision counts at the intersections. The years 2018 and 2019 were associated with higher collision counts compared to the reference year, 2015. For the probability component of the model, the existence of traffic signals at the intersection and location along “Main Road”were both associated with an increase in the chances of at least one collision being observed at the intersection, whereas having any high-speed road around the intersection decreased this chance.
期刊介绍:
Description
The journal has an applied focus: it actively promotes the importance of geographical research in real world settings
It is policy-relevant: it seeks both a readership and contributions from practitioners as well as academics
The substantive foundation is spatial analysis: the use of quantitative techniques to identify patterns and processes within geographic environments
The combination of these points, which are fully reflected in the naming of the journal, establishes a unique position in the marketplace.
RationaleA geographical perspective has always been crucial to the understanding of the social and physical organisation of the world around us. The techniques of spatial analysis provide a powerful means for the assembly and interpretation of evidence, and thus to address critical questions about issues such as crime and deprivation, immigration and demographic restructuring, retailing activity and employment change, resource management and environmental improvement. Many of these issues are equally important to academic research as they are to policy makers and Applied Spatial Analysis and Policy aims to close the gap between these two perspectives by providing a forum for discussion of applied research in a range of different contexts
Topical and interdisciplinaryIncreasingly government organisations, administrative agencies and private businesses are requiring research to support their ‘evidence-based’ strategies or policies. Geographical location is critical in much of this work which extends across a wide range of disciplines including demography, actuarial sciences, statistics, public sector planning, business planning, economics, epidemiology, sociology, social policy, health research, environmental management.
FocusApplied Spatial Analysis and Policy will draw on applied research from diverse problem domains, such as transport, policing, education, health, environment and leisure, in different international contexts. The journal will therefore provide insights into the variations in phenomena that exist across space, it will provide evidence for comparative policy analysis between domains and between locations, and stimulate ideas about the translation of spatial analysis methods and techniques across varied policy contexts. It is essential to know how to measure, monitor and understand spatial distributions, many of which have implications for those with responsibility to plan and enhance the society and the environment in which we all exist.
Readership and Editorial BoardAs a journal focused on applications of methods of spatial analysis, Applied Spatial Analysis and Policy will be of interest to scholars and students in a wide range of academic fields, to practitioners in government and administrative agencies and to consultants in private sector organisations. The Editorial Board reflects the international and multidisciplinary nature of the journal.