Huang Xu, Huang Junhui, Kaewunruen Sakdirat
Department of Civil Engineering, University of Birmingham, Birmingham B15 2TT, United Kingdom.
Department of Civil Engineering, University of Birmingham, Birmingham B15 2TT, United Kingdom.
Waste Manag. 2025 Feb 1;193:539-550. doi: 10.1016/j.wasman.2024.12.034. Epub 2024 Dec 31.
Recycling waste glass (WG) can be time-consuming, costly, and impractical. However, its incorporation into concrete significantly reduces environmental impact and carbon emissions. This paper introduces machine learning (ML) to civil engineering to optimise WG utilisation in concrete, supporting sustainability objectives. By employing a dataset of 471 experimental samples of waste glass concrete (WGC), various ML algorithms are applied, including Gradient Boosting Regressor (GBR), Random Forest (RF), Support Vector Regression (SVR), Adaptive Boosting (AdaBoost), Deep Neural Network (DNN), and k-Nearest Neighbours (kNN), to predict properties containing compressive strength (CS), alkali-silica reaction (ASR), and saved carbon credits (SCC). The proposed models achieve outstanding prediction performance with Coefficient of determination (R) values of 0.95 for CS, 0.97 for ASR, and 0.99 for SCC using GBR and SVR, demonstrating high prediction accuracy with Root mean square error (RMSE) values of 3.31 MPa for CS, 0.03 % for ASR, and 0.11 for SCC. The SHapley Additive exPlanations (SHAP) analysis is utilised to interpret the model results, ensuring transparency and interpretability of the proposed ML models. The results reveal that the incorporation level of WG is a more significant influencing factor for these properties than the mean size of WG (MSWG).
回收废玻璃既耗时、成本高又不切实际。然而,将其掺入混凝土中可显著减少对环境的影响和碳排放。本文将机器学习引入土木工程领域,以优化混凝土中废玻璃的利用,支持可持续发展目标。通过使用471个废玻璃混凝土(WGC)实验样本的数据集,应用了各种机器学习算法,包括梯度提升回归器(GBR)、随机森林(RF)、支持向量回归(SVR)、自适应提升(AdaBoost)、深度神经网络(DNN)和k近邻(kNN),来预测包括抗压强度(CS)、碱-硅酸反应(ASR)和节省的碳信用额(SCC)等性能。所提出的模型使用GBR和SVR实现了出色的预测性能,CS的决定系数(R)值为0.95,ASR为0.97,SCC为0.99,CS的均方根误差(RMSE)值为3.31MPa,ASR为0.03%,SCC为0.11,证明了高预测准确性。利用SHapley加法解释(SHAP)分析来解释模型结果,确保所提出的机器学习模型的透明度和可解释性。结果表明,与废玻璃的平均尺寸(MSWG)相比,废玻璃的掺入水平对这些性能的影响更为显著。