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Forecasting the self-healing capacity of engineered cementitious composites using bagging regressor and stacking regressor

Fahid Aslam, Rayed Alyousef, Hamad Hassan Awan, Muhammad Faisal Javed

2023Structures23 citationsDOIOpen Access PDF

Abstract

Engineered cementitious composite (ECC) is a unique product that can significantly contribute to self-healing when continuously hydrated. To measure its self-healing capacity, it is necessary to evaluate the crack-width once the healing process is complete. ECC has a remarkable ability to self-heal, but predicting its self-healing potential is challenging. In this study, two different ensemble machine learning (ML) algorithms i.e. bagging regressor (BR) and stacking regressor (SR) were employed to estimate ECC’s self-healing capacity. Model effectiveness was assessed using error analysis and k-fold cross-validation methods. The SR model had a higher R 2 and was more successful in predicting the outcomes than the BR model. However, both ensemble models with smaller error values also showed improved model performance. Furthermore, the crack-healing characteristics of wheat straw ash, rice husk ash , and pumice powder are recommended to be evaluated in future studies using ML methods .

Topics & Concepts

HuskSelf-healingMaterials scienceCementitiousPumiceEnsemble learningStackingComposite materialComposite numberComputer scienceMachine learningCementMedicineChemistryVolcanoBiologyOrganic chemistrySeismologyAlternative medicineGeologyPathologyBotanyMicrobial Applications in Construction MaterialsConcrete and Cement Materials ResearchInnovative concrete reinforcement materials
Forecasting the self-healing capacity of engineered cementitious composites using bagging regressor and stacking regressor | Litcius