Modelos de prognóstico de produtividade na construção civil: caracterização e análise crítica comparativa em estudo de caso
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The productivity rates used as references by construction companies are
generally obtained empirically, either through databases of previous projects
or based on reference indices from budgeting manuals. However, the use of
average productivity indicators represents an overly simplistic approach
considering the current need for a deeper understanding of construction
activities, given the large number of content and context factors that can
influence services. An alternative for predicting productivity lies in forecasting
models, which are systematic approaches used to develop mathematical or
computational representations that describe the reality of a system, process, or
phenomenon. Thus, this study aims to apply and compare four different
modeling techniques for productivity forecasting, including two statistical
models and two artificial intelligence models. The productivity forecasting was
carried out based on nine content and context input factors deemed significant
for concrete formwork execution services. The different models employed were
evaluated. The results demonstrate that it is not always possible to find the
best accuracy parameters within a single model.
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CORREA, Marcelo Inocêncio Ferreira; BRANDSTETTER, Maria Carolina Gomes de Oliveira; ROMAGNOLI, Larsson Diogo Seabra Coelho. Modelos de prognóstico de produtividade na construção civil: caracterização e análise crítica comparativa em estudo de caso. Ambiente Construído, Porto Alegre, v. 25, e145278, 2025. DOI: 10.1590/s1678-86212025000100917. Disponível em: https://www.scielo.br/j/ac/a/mJjFhwfjBJ89vCFJNLkGbQc/?lang=pt. Acesso em: 25 jun. 2026.