Machine learning-based prediction for compressive and flexural strengths of steel fiber-reinforced concrete

•Compressive and flexural strengths of SFRC are successfully predicted by machine learning algorithms.•Tree-based and boosting models are recommended for SFRC predictions.•W/C ratio and silica fume are most important parameters of predicting compressive strength.•Fiber volume fraction and silica fum...

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Veröffentlicht in:Construction & building materials 2021-01, Vol.266, p.121117, Article 121117
Hauptverfasser: Kang, Min-Chang, Yoo, Doo-Yeol, Gupta, Rishi
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Sprache:eng
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Zusammenfassung:•Compressive and flexural strengths of SFRC are successfully predicted by machine learning algorithms.•Tree-based and boosting models are recommended for SFRC predictions.•W/C ratio and silica fume are most important parameters of predicting compressive strength.•Fiber volume fraction and silica fume are the most important for predicting flexural strength.•XGBoost and gradient boost regressors are selected as the most appropriate machine learning algorithms of SFRC. Steel fiber-reinforced concrete (SFRC) has a performance superior to that of normal concrete because of the addition of discontinuous fibers. The development of strengths prediction technique of SFRC is, however, still in its infancy compared to that of normal concrete because of its complexity and limited available data. To overcome this limitation, research was conducted to develop an optimum machine learning algorithm for predicting the compressive and flexural strengths of SFRC. The resulting feature impact was also analyzed to confirm the reliability of the models. To achieve this, compressive and flexural strengths data from SFRC were collected through extensive literature reviews, and a database was created. Eleven machine learning algorithms were then established based on the dataset. K-fold validation was conducted to prevent overfitting, and the algorithms were regulated. The boosting- and tree-based models had the optimal performance, whereas the K-nearest neighbor, linear, ridge, lasso regressor, support vector regressor, and multilayer perceptron models had the worst performance. The water-to-cement ratio and silica fume content were the most influential factors in the prediction of compressive strength of SFRC, whereas the silica fume and fiber volume fraction most strongly influenced the flexural strength. Finally, it was found that, in general, the compressive strength prediction performance was better than the flexural strength prediction performance, regardless of the machine learning algorithm.
ISSN:0950-0618
1879-0526
DOI:10.1016/j.conbuildmat.2020.121117