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Prediction of flexural and split tensile strength of waste glass-concrete composite using machine learning algorithms

Derrick Mirindi et al · KeAi Communications Co., Ltd · 2026

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Waste material, including glass, presents significant environmental challenges due to its non-biodegradable nature and low global recycling rates. Incorporating waste glass into concrete offers a sustainable solution, but predicting its effects on mechanical properties, particularly flexural (fb) and split tensile (ft) strengths, remains complex. This study utilizes machine learning (ML) algorithms (decision tree (DT), extreme gradient boosting (XGBoost), adaptive boosting (AdaBoost), light gradient boosting machine (LightGBM), support vector regression (SVR), and gaussian process (GP)) to predict fband ftstrengths based on compressive strength (fc), concrete age, and glass replacement percentage of glass-concrete composites. Thirteen experimental studies were utilized using secondary data. Results demonstrate that Pearson correlation analysis reveals strong interdependence among mechanical properties (fc-fb: 0.809-0.876, fc-ft: 0.927-0.948, fb-ft: 0.943-0.970), with negligible influence of glass type and moderate positive impact of replacement percentage. The ML algorithms each offer unique predictive strengths—most notably, XGBoost training model achieves near-perfect accuracy (with R2 equal to 0.9991). However, k-fold cross-validation revealed overfitting concerns limiting applicability to conventional concrete compositions. Non-parametric analyses reveal moderate fc-fbcorrelations (Spearman’s ρ=0.5879, p=0.0739) and statistically significant fc-ftrelationships (ρ=0.6364, p=0.0479), while ML models achieve high predictive accuracy by exploiting multi-feature interactions beyond simple pairwise correlations. These ML models enable optimized mix designs, advancing sustainable construction through efficient waste glass utilization as a partial aggregate replacement.

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APA 7

al, D. M. E. (2026). Prediction of flexural and split tensile strength of waste glass-concrete composite using machine learning algorithms. https://doi.org/10.1016/j.grets.2025.100275

MLA

al, Derrick Mirindi et. "Prediction of flexural and split tensile strength of waste glass-concrete composite using machine learning algorithms." 2026. https://doi.org/10.1016/j.grets.2025.100275.

Chicago

al, Derrick Mirindi et. 2026. "Prediction of flexural and split tensile strength of waste glass-concrete composite using machine learning algorithms.". https://doi.org/10.1016/j.grets.2025.100275.

Harvard

al, D. M. E. 2026, Prediction of flexural and split tensile strength of waste glass-concrete composite using machine learning algorithms, KeAi Communications Co, Ltd, available at: https://doi.org/10.1016/j.grets.2025.100275 [Accessed 24 Jun. 2026].

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Título
Prediction of flexural and split tensile strength of waste glass-concrete composite using machine learning algorithms
Autor / colaboradores
Derrick Mirindi et al
Editorial
KeAi Communications Co., Ltd
Año de publicación
2026
ISSN
2949-7361
ISSN
2949-7361
Idioma
eng

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