Department of Civil and Environmental Engineering, College of Engineering, King Faisal University, Al-Ahsa, Saudi Arabia.
Department of Civil Engineering, COMSATS University Islamabad, Abbottabad, Pakistan.
PLoS One. 2023 Jan 23;18(1):e0280761. doi: 10.1371/journal.pone.0280761. eCollection 2023.
Using solid waste in building materials is an efficient approach to achieving sustainability goals. Also, the application of modern methods like artificial intelligence is gaining attention. In this regard, the flexural strength (FS) of cementitious composites (CCs) incorporating waste glass powder (WGP) was evaluated via both experimental and machine learning (ML) methods. WGP was utilized to partially substitute cement and fine aggregate separately at replacement levels of 0%, 2.5%, 5%, 7.5%, 10%, 12.5%, and 15%. At first, the FS of WGP-based CCs was determined experimentally. The generated data, which included six inputs, was then used to run ML techniques to forecast the FS. For FS estimation, two ML approaches were used, including a support vector machine and a bagging regressor. The effectiveness of ML models was assessed by the coefficient of determination (R2), k-fold techniques, statistical tests, and examining the variation amongst experimental and forecasted FS. The use of WGP improved the FS of CCs, as determined by the experimental results. The highest FS was obtained when 10% and 15% WGP was utilized as a cement and fine aggregate replacement, respectively. The modeling approaches' results revealed that the support vector machine method had a fair level of accuracy, but the bagging regressor method had a greater level of accuracy in estimating the FS. Using ML strategies will benefit the building industry by expediting cost-effective and rapid solutions for analyzing material characteristics.
利用固体废物制造建筑材料是实现可持续发展目标的有效途径。此外,人工智能等现代方法的应用也受到了关注。在这方面,通过实验和机器学习 (ML) 方法评估了掺入废玻璃粉 (WGP) 的水泥基复合材料 (CC) 的弯曲强度 (FS)。WGP 分别部分替代水泥和细骨料,替代水平分别为 0%、2.5%、5%、7.5%、10%、12.5%和 15%。首先,通过实验确定了基于 WGP 的 CC 的 FS。然后,使用生成的数据(包括六个输入)运行 ML 技术来预测 FS。对于 FS 估计,使用了两种 ML 方法,包括支持向量机和袋装回归器。通过确定系数 (R2)、k 折技术、统计检验以及检查实验和预测 FS 之间的差异,评估了 ML 模型的有效性。实验结果表明,WGP 的使用提高了 CC 的 FS。当分别将 10%和 15%的 WGP 用作水泥和细骨料的替代物时,FS 最高。建模方法的结果表明,支持向量机方法的准确性相当高,但袋装回归器方法在估计 FS 方面的准确性更高。使用 ML 策略将通过为分析材料特性提供经济高效且快速的解决方案,使建筑行业受益。