Inteligência artificial para automação de estimativa de custo em projeto arqitetônico
uma revisão sistemática da literatura
DOI:
https://doi.org/10.46421/sbtic.v4i00.2616Palabras clave:
Inteligência Artificial, Estimativa de custos, Projeto Arquitetônico, Revisão sistemática da literaturaResumen
O custo é um fator importante na definição da viabilidade de projeto. Por isso, compreender o impacto das decisões projetuais no custo auxilia o arquiteto a realizar escolhas melhor embasadas. Analisando o recente avanço das tecnologias envolvendo Inteligência Artificial (IA) na arquitetura, supõe-se a IA como um potencial meio de solução. Neste contexto, foi realizada uma revisão sistemática da literatura (RSL) no repositório do Portal Periódicos CAPES para entender como a inteligência artificial pode ser implementada para automatização da estimativa de custos no processo de projeto. Com isso, foram desenvolvidos o mapeamento dos principais parâmetros de custo e a documentação das capacidades das IAs estudadas na arquitetura, bem como suas limitações. Por fim, realiza-se um comparativo de desempenho e propõe-se direcionamentos para futuras pesquisas. Assim, os resultados apontam que, por meio da IA, é possível obter um mecanismo de predição de custo adequado para o arquiteto, uma vez entendida a relação entre os recursos necessários e o nível de precisão pretendido.
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Derechos de autor 2023 SIMPÓSIO BRASILEIRO DE TECNOLOGIA DA INFORMAÇÃO E COMUNICAÇÃO NA CONSTRUÇÃO
Esta obra está bajo una licencia internacional Creative Commons Atribución 4.0.
Adota-se Atribuição 4.0 Internacional (CC BY 4.0). Ver detalhamento em https://creativecommons.org/licenses/by/4.0/deed.pt_BR
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Fundação Cearense de Apoio ao Desenvolvimento Científico e Tecnológico
Números de la subvención R$450