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Keywords: Metakaolin
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Journal Articles
Computational modeling for strength prediction of nano silica-metakaolin blended concrete: a hybrid response surface methodology-machine learning approach
Available to Purchase
Journal:
Engineering Computations
Engineering Computations (2026) 43 (1): 229–262.
Published: 05 November 2025
...% nano-silica (NS) and 12.5% metakaolin (MK), was experimentally and microstructurally validated. SHAP analysis further identified NS, MK, cement and superplasticizer as the most influential factors affecting CS. Originality/value This work uniquely integrates statistical, ML and microstructural...
