Khan Kaffayatullah, Ahmad Waqas, Amin Muhammad Nasir, 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.
Polymers (Basel). 2022 Jul 29;14(15):3065. doi: 10.3390/polym14153065.
Steel-fiber-reinforced concrete (SFRC) has been introduced as an effective alternative to conventional concrete in the construction sector. The incorporation of steel fibers into concrete provides a bridging mechanism to arrest cracks, improve the post-cracking behavior of concrete, and transfer stresses in concrete. Artificial intelligence (AI) approaches are in use nowadays to predict concrete properties to conserve time and money in the construction industry. Accordingly, this study aims to apply advanced and sophisticated machine-learning (ML) algorithms to predict SFRC compressive strength. In the current work, the applied ML approaches were gradient boosting, random forest, and XGBoost. The considered input variables were cement, fine aggregates (sand), coarse aggregates, water, silica fume, super-plasticizer, fly ash, steel fiber, fiber diameter, and fiber length. Previous studies have not addressed the effects of raw materials on compressive strength in considerable detail, leaving a research gap. The integration of a SHAP analysis with ML algorithms was also performed in this paper, addressing a current research need. A SHAP analysis is intended to provide an in-depth understanding of the SFRC mix design in terms of its strength factors via complicated, nonlinear behavior and the description of input factor contributions by assigning a weighing factor to each input component. The performances of all the algorithms were evaluated by applying statistical checks such as the determination coefficient (R), the root mean square error (RMSE), and the mean absolute error (MAE). The random forest ML approach had a higher, i.e., 0.96, R value with fewer errors, producing higher precision than other models with lesser R values. The SFRC compressive strength could be anticipated by applying the random forest ML approach. Further, it was revealed from the SHapley Additive exPlanations (SHAP) analysis that cement content had the highest positive influence on the compressive strength of SFRC. In this way, the current study is beneficial for researchers to effectively and quickly evaluate SFRC compressive strength.
钢纤维增强混凝土(SFRC)已被引入建筑领域,作为传统混凝土的一种有效替代品。在混凝土中掺入钢纤维可提供一种桥接机制,以阻止裂缝扩展、改善混凝土的开裂后性能并传递混凝土中的应力。如今,人工智能(AI)方法被用于预测混凝土性能,以在建筑行业节省时间和金钱。因此,本研究旨在应用先进且复杂的机器学习(ML)算法来预测SFRC的抗压强度。在当前工作中,应用的ML方法有梯度提升、随机森林和XGBoost。所考虑的输入变量包括水泥、细集料(砂)、粗集料、水、硅灰、高效减水剂、粉煤灰、钢纤维、纤维直径和纤维长度。以往的研究尚未详细探讨原材料对抗压强度的影响,留下了一个研究空白。本文还进行了SHAP分析与ML算法的整合,满足了当前的研究需求。SHAP分析旨在通过复杂的非线性行为,深入了解SFRC配合比设计的强度因素,并通过为每个输入成分分配一个权重因子来描述输入因子的贡献。所有算法的性能均通过应用统计检验进行评估,如决定系数(R)、均方根误差(RMSE)和平均绝对误差(MAE)。随机森林ML方法具有更高的R值,即0.96,且误差更少,比其他R值较小的模型具有更高的精度。应用随机森林ML方法可以预测SFRC的抗压强度。此外,从SHapley加性解释(SHAP)分析中可以看出,水泥含量对SFRC抗压强度的正向影响最大。通过这种方式,当前研究有助于研究人员有效且快速地评估SFRC的抗压强度。