Concrete Decisions: How XAI is Paving the Way for Future Construction Materials

Authors

  • Fiorella Cravero Instituto De Ciencias E Ingeniería De La Computación (Icic), Universidad Nacional Del Sur (Uns) - Consejo Nacional De Investigaciones Científicas Y Técnicas (Conicet), Bahía Blanca, Argentina; Departamento De Informática, Facultad De Ingeniería Y Tecnologías (Fit), Universidad Católica Del Uruguay (Ucu), Montevideo, Uruguay
  • Gustavo Esteban Vazquez Departamento De Informática, Facultad De Ingeniería Y Tecnologías (Fit), Universidad Católica Del Uruguay (Ucu), Montevideo, Uruguay
  • Ignacio Ponzoni Instituto De Ciencias E Ingeniería De La Computación (Icic), Universidad Nacional Del Sur (Uns) - Consejo Nacional De Investigaciones Científicas Y Técnicas (Conicet), Bahía Blanca, Argentina; Departamento De Ciencias E Ingeniería De La Computación (Dcic), Universidad Nacional Del Sur (Uns), Bahía Blanca, Argentina.
  • Monica Fatima Diaz Planta Piloto De Ingeniería Química, Conicet - Uns, Bahía Blanca, Argentina; Departamento De Ingeniería Química (Diq), Universidad Nacional Del Sur (Uns), Bahía Blanca, Argentina.

DOI:

https://doi.org/10.18687/LACCEI2025.1.1.1997

Keywords:

Construction industry, concrete, mechanical properties, machine learning, explainable artificial intelligence.

Abstract

For approximately twenty-five years, machine learning methods have been used to develop predictive models applied to construction materials. Concrete in particular is widely studied as it is the core of this industry, seeking to improve its properties to comply with both safety standards and market demands for more competitive products. There are major challenges in this area, one is the need for reliable data for the correct training of models, and other is understanding the choices made by computational methodologies to achieve such accurate models. To increase confidence in these useful tools, for example, when deciding to change a formulation and estimate its mechanical profile, it is necessary to evaluate the behavior of the model. For this, explainable artificial intelligence methodologies are beginning to be used. In this paper we review problems and advances in the area, hoping to contribute to the decision-making of construction engineers.

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Published

2025-04-09

How to Cite

Cravero, F., Vazquez, G. E., Ponzoni, I., & Diaz, M. F. (2025). Concrete Decisions: How XAI is Paving the Way for Future Construction Materials. LACCEI, 1(12). https://doi.org/10.18687/LACCEI2025.1.1.1997