Khalaf Ali Abdulhasan, Kopecskó Katalin, Merta Ildiko
Department of Engineering Geology and Geotechnics, Faculty of Civil Engineering, Budapest University of Technology and Economics, 1111 Budapest, Hungary.
Building Physics and Building Ecology, Institute of Material Technology, Faculty of Civil Engineering, TU Wien, 1040 Vienna, Austria.
Polymers (Basel). 2022 Mar 31;14(7):1423. doi: 10.3390/polym14071423.
This article presents a regression tool for predicting the compressive strength of fly ash (FA) geopolymer concrete based on a process of optimising the Matlab code of a feedforward layered neural network (FLNN). From the literature, 189 samples of different FA geopolymer concrete mix-designs were collected and analysed according to ten input variables (all relevant mix-design parameters) and the output variable (cylindrical compressive strength). The developed optimal FLNN model proved to be a powerful tool for predicting the compressive strength of FA geopolymer concrete with a small range of mean squared error (MSE = 10.4 and 15.0), a high correlation coefficient with the actual values (R = 96.0 and 97.5) and a relatively small root mean squared error (RMSE = 3.22 and 3.87 MPa) for the training and testing data, respectively. Based on the optimised model, a powerful design chart for determining the mix-design parameters of FA geopolymer concretes was generated. It is applicable for both one- and two-part geopolymer concretes, as it takes a wide range of mix-design parameters into account. The design chart (with its relatively small error) will ensure cost- and time-efficient geopolymer production in future applications.
本文介绍了一种回归工具,该工具基于对前馈分层神经网络(FLNN)的Matlab代码进行优化的过程,用于预测粉煤灰(FA)地质聚合物混凝土的抗压强度。从文献中收集了189个不同FA地质聚合物混凝土配合比设计的样本,并根据十个输入变量(所有相关配合比设计参数)和输出变量(圆柱抗压强度)进行了分析。所开发的最优FLNN模型被证明是预测FA地质聚合物混凝土抗压强度的有力工具,对于训练数据和测试数据,其均方误差范围较小(MSE = 10.4和15.0),与实际值的相关系数较高(R = 96.0和97.5),且均方根误差相对较小(RMSE = 3.22和3.87 MPa)。基于优化后的模型,生成了一个用于确定FA地质聚合物混凝土配合比设计参数的强大设计图表。它适用于单组分和双组分地质聚合物混凝土,因为它考虑了广泛的配合比设计参数。该设计图表(误差相对较小)将确保在未来应用中实现成本和时间高效的地质聚合物生产。