Zheng Dong, Wu Rongxing, Sufian Muhammad, Kahla Nabil Ben, Atig Miniar, Deifalla Ahmed Farouk, Accouche Oussama, Azab Marc
School of Architectural Engineering, Ningbo Polytechnic, Ningbo 315800, China.
School of Civil Engineering, Southeast University, Nanjing 210096, China.
Materials (Basel). 2022 Jul 27;15(15):5194. doi: 10.3390/ma15155194.
Research has focused on creating new methodologies such as supervised machine learning algorithms that can easily calculate the mechanical properties of fiber-reinforced concrete. This research aims to forecast the flexural strength (FS) of steel fiber-reinforced concrete (SFRC) using computational approaches essential for quick and cost-effective analysis. For this purpose, the SFRC flexural data were collected from literature reviews to create a database. Three ensembled models, i.e., Gradient Boosting (GB), Random Forest (RF), and Extreme Gradient Boosting (XGB) of machine learning techniques, were considered to predict the 28-day flexural strength of steel fiber-reinforced concrete. The efficiency of each method was assessed using the coefficient of determination (R), statistical evaluation, and k-fold cross-validation. A sensitivity approach was also used to analyze the impact of factors on predicting results. The analysis showed that the GB and RF models performed well, and the XGB approach was in the acceptable range. Gradient Boosting showed the highest precision with an R of 0.96, compared to Random Forest (RF) and Extreme Gradient Boosting (XGB), which had R values of 0.94 and 0.86, respectively. Moreover, statistical and k-fold cross-validation studies confirmed that Gradient Boosting was the best performer, followed by Random Forest (RF), based on reduced error levels. The Extreme Gradient Boosting model performance was satisfactory. These ensemble machine learning algorithms can benefit the construction sector by providing fast and better analysis of material properties, especially for fiber-reinforced concrete.
研究集中于创建新方法,如监督式机器学习算法,其能够轻松计算纤维增强混凝土的力学性能。本研究旨在使用快速且经济高效分析所必需的计算方法预测钢纤维增强混凝土(SFRC)的抗弯强度(FS)。为此,从文献综述中收集了SFRC抗弯数据以创建数据库。考虑了三种机器学习技术的集成模型,即梯度提升(GB)、随机森林(RF)和极端梯度提升(XGB),来预测钢纤维增强混凝土的28天抗弯强度。使用决定系数(R)、统计评估和k折交叉验证来评估每种方法的效率。还采用了敏感性方法来分析各因素对预测结果的影响。分析表明,GB和RF模型表现良好,XGB方法处于可接受范围内。与随机森林(RF)和极端梯度提升(XGB)相比,梯度提升表现出最高精度,其R值为0.96,而随机森林(RF)和极端梯度提升(XGB)的R值分别为0.94和0.86。此外,统计和k折交叉验证研究证实,基于降低的误差水平,梯度提升是表现最佳的模型,其次是随机森林(RF)。极端梯度提升模型的性能令人满意。这些集成机器学习算法可为建筑行业带来益处,通过对材料性能提供快速且更好的分析,特别是对于纤维增强混凝土。