Amin Muhammad Nasir, Khan Kaffayatullah, Ahmad Waqas, Javed Muhammad Faisal, Qureshi Hisham Jahangir, Saleem Muhammad Umair, Qadir Muhammad Ghulam, Faraz Muhammad Iftikhar
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 May 23;14(10):2128. doi: 10.3390/polym14102128.
The application of artificial intelligence approaches like machine learning (ML) to forecast material properties is an effective strategy to reduce multiple trials during experimentation. This study performed ML modeling on 481 mixes of geopolymer concrete with nine input variables, including curing time, curing temperature, specimen age, alkali/fly ash ratio, NaSiO/NaOH ratio, NaOH molarity, aggregate volume, superplasticizer, and water, with CS as the output variable. Four types of ML models were employed to anticipate the compressive strength of geopolymer concrete, and their performance was compared to find out the most accurate ML model. Two individual ML techniques, support vector machine and multi-layer perceptron neural network, and two ensembled ML methods, AdaBoost regressor and random forest, were employed to achieve the study's aims. The performance of all models was confirmed using statistical analysis, k-fold evaluation, and correlation coefficient (R). Moreover, the divergence of the estimated outcomes from those of the experimental results was noted to check the accuracy of the models. It was discovered that ensembled ML models estimated the compressive strength of the geopolymer concrete with higher precision than individual ML models, with random forest having the highest accuracy. Using these computational strategies will accelerate the application of construction materials by decreasing the experimental efforts.
将机器学习(ML)等人工智能方法应用于预测材料性能是减少实验过程中多次试验的有效策略。本研究对481种地质聚合物混凝土混合料进行了ML建模,输入变量有九个,包括养护时间、养护温度、试件龄期、碱/粉煤灰比、硅酸钠/氢氧化钠比、氢氧化钠摩尔浓度、骨料体积、高效减水剂和水,输出变量为抗压强度(CS)。采用四种类型的ML模型来预测地质聚合物混凝土的抗压强度,并比较它们的性能以找出最准确的ML模型。采用了两种单独的ML技术,即支持向量机和多层感知器神经网络,以及两种集成ML方法,即AdaBoost回归器和随机森林,以实现该研究的目标。使用统计分析、k折评估和相关系数(R)来确认所有模型的性能。此外,记录估计结果与实验结果的差异以检验模型的准确性。结果发现,集成ML模型比单独的ML模型更精确地估计了地质聚合物混凝土的抗压强度,其中随机森林的准确性最高。使用这些计算策略将通过减少实验工作量来加速建筑材料的应用。