Department of Civil Engineering, Firat University, Elazig, Turkey.
Environ Sci Pollut Res Int. 2024 Jun;31(28):41246-41266. doi: 10.1007/s11356-024-33853-2. Epub 2024 Jun 7.
The greenhouse gases cause global warming on Earth. The cement production industry is one of the largest sectors producing greenhouse gases. The geopolymer is produced with synthesized by the reaction of an alkaline solution and the waste materials such as slag and fly ash. The use of eco-friendly geopolymer concrete decreases energy consumption and greenhouse gases. In this study, the f (compressive strength) of eco-friendly geopolymer concrete was predicted by the deep long short-term memory (LSTM) network model. Moreover, the support vector regression (SVR), least squares boosting ensemble (LSBoost), and multiple linear regression (MLR) models were devised to compare the forecast results of the deep LSTM algorithm. The input variables of the models were used as the mole ratio, the alkaline solution concentration, the curing temperature, the curing days, and the liquid-to-fly ash mass ratio. The output variable of the proposed models was chosen as the compressive strength (f). Furthermore, the effects of the input variable on the f of eco-friendly geopolymer concrete were determined by the sensitivity analysis. The f of eco-friendly geopolymer concrete was predicted by the deep LSTM, LSBoost, SVR, and MLR models with 99.23%, 98.08%, 78.57%, and 88.03% accuracy, respectively. The deep LSTM model forecasted the f of eco-friendly geopolymer concrete with higher accuracy than the SVR, LSBoost, and MLR models. The sensitivity analysis obtained that the curing temperature was the most important experimental variable that affected the f of geopolymer concrete.
温室气体导致地球变暖。水泥生产行业是产生温室气体的最大行业之一。地质聚合物是通过碱性溶液与矿渣和粉煤灰等废料反应合成的。使用环保型地质聚合物混凝土可降低能源消耗和温室气体排放。在本研究中,通过深度长短期记忆(LSTM)网络模型预测了环保型地质聚合物混凝土的 f(抗压强度)。此外,还设计了支持向量回归(SVR)、最小二乘提升集成(LSBoost)和多元线性回归(MLR)模型,以比较深度 LSTM 算法的预测结果。模型的输入变量用作摩尔比、碱性溶液浓度、养护温度、养护天数和液灰质量比。提出的模型的输出变量选择为抗压强度(f)。此外,通过敏感性分析确定了输入变量对环保型地质聚合物混凝土 f 的影响。深度 LSTM、LSBoost、SVR 和 MLR 模型分别以 99.23%、98.08%、78.57%和 88.03%的准确度预测了环保型地质聚合物混凝土的 f。深度 LSTM 模型预测环保型地质聚合物混凝土的 f 的准确度高于 SVR、LSBoost 和 MLR 模型。敏感性分析得出结论,养护温度是影响地质聚合物混凝土 f 的最重要实验变量。