Utilize este identificador para referenciar este registo: https://hdl.handle.net/1822/77371

TítuloInnovative modeling framework of chloride resistance of recycled aggregate concrete using ensemble-machine-learning methods
Autor(es)Liu, Kai-Hua
Zheng, Jia-Kai
Pacheco-Torgal, F.
Zhao, Xin-Yu
Palavras-chaveRecycled aggregate concrete
Chloride penetration
Machine learning
Service life prediction
Model interpretability
Mixture
Data27-Abr-2022
EditoraElsevier
RevistaConstruction and Building Materials
Resumo(s)This study investigates the feasibility of introducing machine learning algorithms to predict the diffusion resistance to chloride penetration of recycled aggregate concrete (RAC). A total of 226 samples collated from published literature were used to train and test the developed machine learning framework, which integrated four standalone models and two ensemble models. The hyperparameters involved were fine-tuned by grid search and 10-fold cross-validation. Results showed that all the models had good performance in predicting the chloride penetration resistance of RAC and among them, the gradient boosting model outperformed the others. The water content was identified as the most critical factor affecting the chloride ion permeability of RAC based on the standardized regression coefficient analysis. The model’s interpretability was greatly improved through a two-way partial dependence analysis. Finally, based on the proposed machine learning models, a performance-based mixture design method and a service life prediction approach for RAC were developed, thereby offering novel and robust design tools for achieving more durable and resilient development goals in procuring sustainable concrete.
TipoArtigo
URIhttps://hdl.handle.net/1822/77371
DOI10.1016/j.conbuildmat.2022.127613
ISSN0950-0618
Versão da editorahttps://www.sciencedirect.com/science/article/pii/S0950061822012880
Arbitragem científicayes
AcessoAcesso aberto
Aparece nas coleções:C-TAC - Artigos em Revistas Internacionais

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