Strategies to improve productivity in construction
A systematic literature review
DOI:
https://doi.org/10.46421/entac.v20i1.5927Keywords:
Management, Productivity, Civil constructionAbstract
Productivity management remains a challenge in the building sector, prompting companies to adopt various strategies for improvement. Therefore, this paper aims to identify these strategies through a systematic literature review of 45 studies retrieved from the Web of Science. Nine strategies were identified, with emphasis on digital technologies such as machine learning, artificial intelligence, and augmented reality. Additionally, the strategies highlight BIM, Lean Construction, People-Centred Management, and Modular Construction. The study concludes that the goal of improving productivity remains a hot topic, requiring multiple strategies that encompass various dimensions such as technical (construction methods), technological (applications to support project execution and design), and social (human factors). Therefore, the main contribution of the study lies in helping to delineate current research in this field, permitting a critical reflection on the theme.
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