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Splitting tensile strength prediction of Metakaolin concrete using machine learning techniques

Qiang Li, Guoqi Ren, Haoran Wang, Qikeng Xu, Jin‐Quan Zhao, Huifen Wang, Yonggang Ding

2023Scientific Reports16 citationsDOIOpen Access PDF

Abstract

Abstract Splitting tensile strength (STS) is an important mechanical property of concrete. Modeling and predicting the STS of concrete containing Metakaolin is an important method for analyzing the mechanical properties. In this paper, four machine learning models, namely, Artificial Neural Network (ANN), support vector regression (SVR), random forest (RF), and Gradient Boosting Decision Tree (GBDT) were employed to predict the STS. The comprehensive comparison of predictive performance was conducted using evaluation metrics. The results indicate that, compared to other models, the GBDT model exhibits the best test performance with an R 2 of 0.967, surpassing the values for ANN at 0.949, SVR at 0.963, and RF at 0.947. The other four error metrics are also the smallest among the models, with MSE = 0.041, RMSE = 0.204, MAE = 0.146, and MAPE = 4.856%. This model can serve as a prediction tool for STS in concrete containing Metakaolin, assisting or partially replacing laboratory compression tests, thereby saving costs and time. Moreover, the feature importance of input variables was investigated.

Topics & Concepts

MetakaolinRandom forestSupport vector machineArtificial neural networkComputer scienceGradient boostingArtificial intelligenceMean squared errorMachine learningDecision treePredictive modellingUltimate tensile strengthMean squared prediction errorCompressive strengthMathematicsMaterials scienceStatisticsComposite materialInnovative concrete reinforcement materialsInfrastructure Maintenance and MonitoringSmart Materials for Construction