Pontificia Universidad Católica de Chile Pontificia Universidad Católica de Chile
Melgar, M. M. M., Miranda, Y. M. Y., Al-Hussein, M. A. M., & Barkokebas, B. B. B. (2025). Incorporation of Context-based Data to Refine Machine Learning Models in Industrialized Construction. Computing In Construction, 6. https://doi.org/10.35490/ec3.2025.381 (2025)

Incorporation of Context-based Data to Refine Machine Learning Models in Industrialized Construction

Revista : Proceedings of the 2025 European Conference on Computing in Construction
Tipo de publicación : Conferencia No A* ni A Ir a publicación

Abstract

The industrialized construction promises to transform the industry by performing activities in shop floors to improve operational efficiency. However, the lack of integration between practical experience and real-time data limits more efficient operations in the shop floor. This study addresses this limitation by combining design parameters from BIM models with real-time production data collected via RFID in a semi-automated shop floor. By including context-based data in machine learning models, cycle time prediction accuracy was improved, compared to models containing only design-based data. highlighting how data granularity optimizes operational planning and production processes in Industrialized Construction.