Civil Engineering Department, College of Engineering, University of Sulaimani, Sulaimani, Kurdistan Region, Iraq.
Environ Sci Pollut Res Int. 2022 Oct;29(47):71232-71256. doi: 10.1007/s11356-022-20863-1. Epub 2022 May 21.
Geopolymers are innovative cementitious materials that can completely replace traditional Portland cement composites and have a lower carbon footprint than Portland cement. Recent efforts have been made to incorporate various nanomaterials, most notably nano-silica (nS), into geopolymer concrete (GPC) to improve the composite's properties and performance. Compression strength (CS) is one of the essential properties of all types of concrete composites, including geopolymer concrete. As a result, creating a credible model for forecasting concrete CS is critical for saving time, energy, and money, as well as providing guidance for scheduling the construction process and removing formworks. This paper presents a large amount of mixed design data correlated to mechanical strength using empirical correlations and neural networks. Several models, including artificial neural network, M5P-tree, linear regression, nonlinear regression, and multi-logistic regression models, were utilized to create models for forecasting the CS of GPC incorporated with nS. In this case, about 207 tested CS values were collected from literature studies and then analyzed to promote the models. For the first time, eleven effective variables were employed as input model parameters during the modeling process, including the alkaline solution to binder ratio, binder content, fine and coarse aggregate content, NaOH and NaSiO content, NaSiO/NaOH ratio, molarity, nS content, curing temperatures, and ages. The developed models were assessed using different statistical tools such as root mean squared error, mean absolute error, scatter index, objective function value, and coefficient of determination. Based on these statistical assessment tools, results revealed that the ANN model estimated the CS of GPC incorporated with nS more accurately than the other models. On the other hand, the alkaline solution to binder ratio, molarity, NaOH content, curing temperature, and ages were those parameters that have significant influences on the CS of GPC incorporated with nS.
地质聚合物是一种创新性的胶凝材料,可以完全替代传统的波特兰水泥复合材料,并且比波特兰水泥的碳足迹更低。最近的努力已经将各种纳米材料,尤其是纳米二氧化硅(nS),纳入地质聚合物混凝土(GPC)中,以提高复合材料的性能。抗压强度(CS)是所有类型的混凝土复合材料的基本性质之一,包括地质聚合物混凝土。因此,创建一个可靠的模型来预测混凝土 CS 对于节省时间、能源和金钱,以及为施工过程的计划和模板的去除提供指导至关重要。本文提出了大量使用经验相关性和神经网络将机械强度与混合设计数据相关联的混合设计数据。使用人工神经网络、M5P 树、线性回归、非线性回归和多逻辑回归模型等几种模型,创建了预测掺入 nS 的 GPC 的 CS 的模型。在这种情况下,从文献研究中收集了大约 207 个测试 CS 值,然后进行了分析以促进模型的建立。首次在建模过程中,将 11 个有效变量用作输入模型参数,包括碱溶液与胶凝材料的比例、胶凝材料含量、细骨料和粗骨料含量、NaOH 和 NaSiO3 含量、NaSiO3/NaOH 比、摩尔浓度、nS 含量、养护温度和龄期。使用不同的统计工具,如均方根误差、平均绝对误差、散点指数、目标函数值和确定系数,对开发的模型进行了评估。基于这些统计评估工具,结果表明,与其他模型相比,人工神经网络模型更准确地估计了掺入 nS 的 GPC 的 CS。另一方面,碱溶液与胶凝材料的比例、摩尔浓度、NaOH 含量、养护温度和龄期是对掺入 nS 的 GPC 的 CS 有显著影响的参数。