GEOGRAPHIC INFORMATION SYSTEM IN THE SPATIAL ANALYSIS OF URBAN TRAFFIC ACCIDENTS IN CASCAVEL, PARANÁ, BRAZIL

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Letícia Ellen Dal' Canton
Tamara Cantú Maltauro
Weverton Rodrigo Verica
Kleberson Rodrigo Nascimento
Erivelto Mercante
Luciana Pagliosa Carvalho Guedes

Resumo

Considering the high rates of traffic accidents, care provided to victims must be fast and efficient. The objective was to analyze the density of traffic accidents and the profile of the victims assisted by the 4th Fire Department in Cascavel. It was also intended to analyze traffic signs and a place to build a new Fire Station. Geographic Information System and geoprocessing resources were used to identify the traffic accidents hotspots applying kernel density estimation. The victims’ profile and their association with the severity of the injuries were obtained based on the chi-square statistic and the correspondence analysis. Field data were investigated to verify traffic signs at accident locations that involved victims with severity of more serious injuries. Most accidents occurred in the afternoon, involving men between 18 and 30 years old. Running over was the occurrence that most stood out considering the severity of the victims, with locations without any traffic signs. Moreover, a plot that meets all the requested criteria and is located in a region of high occurences of traffic accidents was found to build the new station.

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DAL’ CANTON, L. E.; MALTAURO, T. C.; VERICA, W. R.; NASCIMENTO, K. R.; MERCANTE, E.; GUEDES, L. P. C. GEOGRAPHIC INFORMATION SYSTEM IN THE SPATIAL ANALYSIS OF URBAN TRAFFIC ACCIDENTS IN CASCAVEL, PARANÁ, BRAZIL. Revista Baru - Revista Brasileira de Assuntos Regionais e Urbanos, Goiânia, Brasil, v. 6, n. 1, p. e8149, 2020. DOI: 10.18224/baru.v6i1.8149. Disponível em: https://seer.pucgoias.edu.br/index.php/baru/article/view/8149. Acesso em: 29 mar. 2024.
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Biografia do Autor

Letícia Ellen Dal' Canton, State University of Western Paraná (UNIOESTE)

PhD student in Agricultural Engineering Program in UNIOESTE. Master degree in Agricultural Engineering Programa (PGEAGRI) on UNIOESTE. Graduated in Mathematics on the State University of Western Paraná (UNIOESTE).

Tamara Cantú Maltauro, State University of Western Paraná (UNIOESTE)

Currently a PhD student in the Postgraduate Program in Agricultural Engineering in the State University of Western Paraná (Unioeste). Master’s degree in Agricultural Engineering, (Unioeste). Graduated in Mathematics in the State University of Western Paraná (Unioeste).

Weverton Rodrigo Verica, State University of Western Paraná (UNIOESTE)

Master in Agricultural Engineering from the Postgraduate Program in Agricultural Engineering (Unioeste). Graduated in Mathematics from the State University of Western Paraná (Unioeste).

Kleberson Rodrigo Nascimento, State University of Western Paraná (UNIOESTE)

Doctor and Master in the Postgraduate Program in Agricultural Engineering from the Unioeste. Graduate in Environmental Engineering at the University of Cataratas Dynamic University (UDC).

Erivelto Mercante, State University of Western Paraná (UNIOESTE)

PhD from the Faculty of Agricultural Engineering of the Unicamp. Doctor and Master Program in Agricultural Engineering from the Unioeste. Master in Agricultural Engineering from the Unioeste. Gratuate in Agricultural Engineering from the Unioeste. Professor at the Unioeste.

Luciana Pagliosa Carvalho Guedes, State University of Western Paraná (UNIOESTE)

PhD from the Agronomic Statistics and Experimentation of the USP. Doctor Program from the in Agricultural Engineering from the Unioeste. Master in Agricultural Engineering from the Unioeste. Gratuate in Mathematics from the Unioeste. Professor at the Unioeste.

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