Amin Muhammad Nasir, Ahmad Waqas, Khan Kaffayatullah, Ahmad Ayaz, Nazar Sohaib, Alabdullah Anas Abdulalim
Department of Civil and Environmental Engineering, College of Engineering, King Faisal University, Al-Ahsa 31982, Saudi Arabia.
Department of Civil Engineering, COMSATS University Islamabad, Abbottabad 22060, Pakistan.
Materials (Basel). 2022 Jul 27;15(15):5207. doi: 10.3390/ma15155207.
Incorporating waste material, such as recycled coarse aggregate concrete (RCAC), into construction material can reduce environmental pollution. It is also well-known that the inferior properties of recycled aggregates (RAs), when incorporated into concrete, can impact its mechanical properties, and it is necessary to evaluate the optimal performance. Accordingly, artificial intelligence has been used recently to evaluate the performance of concrete compressive behaviour for different types of construction material. Therefore, supervised machine learning techniques, i.e., DT-XG Boost, DT-Gradient Boosting, SVM-Bagging, and SVM-Adaboost, are executed in the current study to predict RCAC's compressive strength. Additionally, SHapley Additive exPlanations (SHAP) analysis shows the influence of input parameters on the compressive strength of RCAC and the interactions between them. The correlation coefficient (R), root mean square error (RMSE), and mean absolute error (MAE) are used to assess the model's performance. Subsequently, the k-fold cross-validation method is executed to validate the model's performance. The R value of 0.98 from DT-Gradient Boosting supersedes those of the other methods, i.e., DT- XG Boost, SVM-Bagging, and SVM-Adaboost. The DT-Gradient Boosting model, with a higher R value and lower error (i.e., MAE, RMSE) values, had a better performance than the other ensemble techniques. The application of machine learning techniques for the prediction of concrete properties would consume fewer resources and take less time and effort for scholars in the respective engineering field. The forecasting of the proposed DT-Gradient Boosting models is in close agreement with the actual experimental results, as indicated by the assessment output showing the improved estimation of RCAC's compressive strength.
将废料,如再生粗骨料混凝土(RCAC),掺入建筑材料中可以减少环境污染。众所周知,再生骨料(RAs)掺入混凝土后性能较差,会影响其力学性能,因此有必要评估其最佳性能。相应地,近年来人工智能已被用于评估不同类型建筑材料的混凝土抗压性能。因此,本研究采用监督机器学习技术,即决策树-极限梯度提升(DT-XG Boost)、决策树-梯度提升(DT-Gradient Boosting)、支持向量机-装袋法(SVM-Bagging)和支持向量机-自适应增强法(SVM-Adaboost)来预测RCAC的抗压强度。此外,SHapley值加法解释(SHAP)分析显示了输入参数对RCAC抗压强度的影响以及它们之间的相互作用。使用相关系数(R)、均方根误差(RMSE)和平均绝对误差(MAE)来评估模型的性能。随后,采用k折交叉验证方法来验证模型的性能。决策树-梯度提升(DT-Gradient Boosting)的R值为0.98,超过了其他方法,即决策树-极限梯度提升(DT-XG Boost)、支持向量机-装袋法(SVM-Bagging)和支持向量机-自适应增强法(SVM-Adaboost)。决策树-梯度提升(DT-Gradient Boosting)模型具有较高的R值和较低的误差(即MAE、RMSE)值,其性能优于其他集成技术。机器学习技术在混凝土性能预测中的应用将为相关工程领域的学者节省资源,减少时间和精力。所提出的决策树-梯度提升(DT-Gradient Boosting)模型的预测结果与实际实验结果非常吻合,评估结果表明对RCAC抗压强度的估计有所改进。