Aplicações de BIM, RPA e visão computacional de forma integrada para o planejamento e controle da segurança em canteiros de obras

Autores

DOI:

https://doi.org/10.46421/sibragec.v13i00.2604

Palavras-chave:

Construção 4.0, Drone, Aprendizado de Máquina, Modelagem da Informação da Construção, Revisão Sistemática de literatura

Resumo

Há diversas aplicações de tecnologias digitais associadas ao paradigma da Construção 4.0 no contexto da segurança. No entanto, as implementações ocorrem muitas vezes de forma individual, não sendo aproveitado o potencial de aplicação integrada dessas tecnologias. Nesse sentido, esse artigo tem como objetivo analisar as aplicações integradas de modelagem da informação da construção (BIM), aeronaves remotamente pilotadas (RPA) e visão computação (VC) no planejamento e controle da segurança (PCS) em canteiros de obras. A estratégia metodológica adotada foi a Revisão Sistemática de Literatura. A partir dos 14 estudos considerados elegíveis, foram identificados modelos, métodos e frameworks que tratam da implementação de BIM, RPA e VC em duplas ou trio destinadas ao PCS. As contribuições observadas dão indícios do potencial de uso dessas tecnologias integradas aplicadas ao PCS. No entanto, considerando o estágio inicial de amadurecimento de propostas de integração envolvendo as tecnologias, sugere-se o desenvolvimento de modelos/frameworks validados mais robustos que integrem BIM, RPA e VC aproveitando as potencialidades individuais dessas tecnologias.

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Biografia do Autor

Hugo Sefrian Peinado, Universidade Federal da Bahia

Mestrado em Engenharia Urbana pela Universidade Estadual de Maringá (Maringá - PR, Brasil). Doutorando em Engenharia Civil pela Universidade Federal da Bahia (Salvador - BA, Brasil).

Dayana Bastos Costa, Universidade Federal da Bahia

Doutorado em Engenharia Civil pela Universidade Federal do Rio Grande do Sul (Porto Alegre - RS, Brasil). Professora Associada do Departamento de Construção e Estruturas da Universidade Federal da Bahia (Salvador - BA, Brasil)

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Publicado

05/11/2023

Como Citar

PEINADO, H. S.; COSTA, D. B. Aplicações de BIM, RPA e visão computacional de forma integrada para o planejamento e controle da segurança em canteiros de obras. In: SIMPÓSIO BRASILEIRO DE GESTÃO E ECONOMIA DA CONSTRUÇÃO, 13., 2023. Anais [...]. Porto Alegre: ANTAC, 2023. p. 1–9. DOI: 10.46421/sibragec.v13i00.2604. Disponível em: https://eventos.antac.org.br/index.php/sibragec/article/view/2604. Acesso em: 2 maio. 2024.

Edição

Seção

Gestão da Saúde e Segurança do Trabalho

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