USO DE TÉCNICAS COMPUTACIONAIS NO APRIMORAMENTO DA TOMADA DE DICISÕES NO SETOR DE CONSTRUÇÃO: REVISÃO SISTEMÁTICA DA LITERATURA
DOI:
https://doi.org/10.46421/entac.v18i.1181Keywords:
Operations Research, Algorithms, Simulation, Planning, Decision-MakingAbstract
In the construction market, the use of computational techniques, derived from the field of Operations Research, as a way to support decision making both in the pre-construction phases and during execution, becomes increasingly relevant each day. Thus, the present study aims to assess which tools have been attracting the most attention from researchers, and in which processes they are currently being used. To this end, the Systematic Review of Literature method was chosen. An extensive search process was carried out in three publication databases, and it was possible to select 41 recent studies that relate to the topic in question. The articles were analyzed according to the type of technique used, being highlighted the use of meta-heuristic algorithms and simulation. Finally, it was also possible to observe the application of these techniques in several types of processes, such as activity and costs planning, use of resources, construction site layout and safety performance.
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