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Prediction of self-consolidating concrete properties using XGBoost machine learning algorithm: Rheological properties

Amine el Mahdi Safhi, Hamed Dabiri, Ahmed Soliman, Kamal H. Khayat

2024Powder Technology33 citationsDOIOpen Access PDF

Abstract

Rheological properties are critical for assessing self-consolidating concrete (SCC)’s performance and application. However, predicting these properties accurately, specifically plastic viscosity and yield stress, faces challenges due to inconsistent data, small sample sizes, and measurement inaccuracies, with the type of rheometer significantly impacting results. This study meticulously analyzes 348 mixtures from 19 peer-reviewed sources, focusing on experiments that detail rheometer types to understand variability in rheological properties. Twelve variables, including cement content and water-to-powder ratio, were identified as key to SCC's rheology. Utilizing these, an XGBoost model demonstrated exceptional accuracy (R2 of 0.99), markedly better than traditional methods. This advance not only aids in SCC design but also showcases the potential of machine learning in construction materials research, suggesting a new direction for material property prediction and innovation in construction.

Topics & Concepts

RheometerRheologyViscosityMaterials scienceCementSample (material)Mechanical engineeringComposite materialComputer scienceMachine learningArtificial intelligenceEngineeringThermodynamicsPhysicsConcrete and Cement Materials ResearchInnovations in Concrete and Construction MaterialsInnovative concrete reinforcement materials