Wang Qichen, Ahmad Waqas, Ahmad Ayaz, Aslam Fahid, Mohamed Abdullah, Vatin Nikolai Ivanovich
Department of Civil and Environmental Engineering, University of Iowa, Iowa City, IA 52242, USA.
Department of Civil Engineering, COMSATS University Islamabad, Abbottabad 22060, Pakistan.
Polymers (Basel). 2022 Mar 8;14(6):1074. doi: 10.3390/polym14061074.
Geopolymers may be the best alternative to ordinary Portland cement because they are manufactured using waste materials enriched in aluminosilicate. Research on geopolymer composites is accelerating. However, considerable work, expense, and time are needed to cast, cure, and test specimens. The application of computational methods to the stated objective is critical for speedy and cost-effective research. In this study, supervised machine learning approaches were employed to predict the compressive strength of geopolymer composites. One individual machine learning approach, decision tree, and two ensembled machine learning approaches, AdaBoost and random forest, were used. The coefficient correlation (R), statistical tests, and k-fold analysis were used to determine the validity and comparison of all models. It was discovered that ensembled machine learning techniques outperformed individual machine learning techniques in forecasting the compressive strength of geopolymer composites. However, the outcomes of the individual machine learning model were also within the acceptable limit. R values of 0.90, 0.90, and 0.83 were obtained for AdaBoost, random forest, and decision models, respectively. The models' decreased error values, such as mean absolute error, mean absolute percentage error, and root-mean-square errors, further confirmed the ensembled machine learning techniques' increased precision. Machine learning approaches will aid the building industry by providing quick and cost-effective methods for evaluating material properties.
地质聚合物可能是普通硅酸盐水泥的最佳替代品,因为它们是使用富含铝硅酸盐的废料制造的。对地质聚合物复合材料的研究正在加速。然而,铸造、养护和测试试样需要大量的工作、费用和时间。将计算方法应用于上述目标对于快速且经济高效的研究至关重要。在本研究中,采用监督式机器学习方法来预测地质聚合物复合材料的抗压强度。使用了一种单独的机器学习方法(决策树)以及两种集成机器学习方法(AdaBoost和随机森林)。系数相关性(R)、统计测试和k折分析用于确定所有模型的有效性和比较。研究发现,在预测地质聚合物复合材料的抗压强度方面,集成机器学习技术优于单独的机器学习技术。然而,单独机器学习模型的结果也在可接受范围内。AdaBoost、随机森林和决策模型的R值分别为0.90、0.90和0.83。模型的误差值降低,如平均绝对误差、平均绝对百分比误差和均方根误差,进一步证实了集成机器学习技术的精度提高。机器学习方法将通过提供快速且经济高效的材料性能评估方法来帮助建筑行业。