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Utilization of a novel artificial intelligence technique (ANFIS) to predict the compressive strength of fly ash-based geopolymer

机译:利用新型人工智能技术(ANFIS)预测粉煤灰基地质聚合物的抗压强度

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摘要

Fly ash (FA) is widely used to synthesize geopolymers, but it is heterogeneous as it consists of reactive, partially reactive, and inert parts, which may influence the behavior of the resultant geopolymer. Therefore, in this experimental and analytical work, at first, the reactivity of the FA was assessed by modified Chapelle test, which was further investigated by conducting a dissolution test to study the influence of temperature (20, 60, and 100 degrees C) and time (6 - 24 h). Afterward, geopolymer paste was synthesized by varying: (i) alkaline to precursor ratio (0.3 - 0.5), (ii) sodium silicate to sodium hydroxide ratio (2 - 3), and (iii) curing temperature and age. Based on the additional parameter of the molarity of NaOH including the above-mentioned parameters, an adaptive neuro-fuzzy inference system (ANFIS) to predict the compressive strength was optimized. A prominent increase in reactivity was observed at 60 degrees C as compared to 20 degrees C. The compressive strength improved significantly at A/P ratio of 0.4 and 0.5 resulted in improved compressive strength in particular for the 2.5 SS/SH ratio which was verified by FTIR. Analytical results by ANFIS were compared with the multivariate adaptive regression spline (MARS) model in terms of R-2, RMSE, and MAE it was concluded that the ANFIS model showed better correlation and significantly fewer errors as compared to the MARS model. Finally, the developed model was checked and validated by employing the real experiment test results based on parametric values obtained from the ANFIS model. The developed model of this study can provide a novel approach for the design of geopolymers based on artificial intelligence technique.
机译:飞灰(FA)广泛用于合成地质聚合物,但它是异质的,因为它由反应性,部分反应性和惰性件组成,这可能影响所得地质聚合物的行为。因此,在该实验和分析作品中,首先,通过改性的小柱试验评估Fa的反应性,通过进行溶解试验进一步研究,以研究温度(20,60和100℃)的影响和时间(6 - 24小时)。之后,通过改变:(i)碱性对前体比(0.3-0.5),(II)硅酸钠(2-3)和(iii)固化温度和年龄的硅酸钠合成缘聚合物浆料。基于NaOH的摩尔度的附加参数,包括上述参数,优化了预测压缩强度的自适应神经模糊推理系统(ANFIS)。与20摄氏度相比,在60℃下观察到反应性的突出增加。压缩强度以0.4和0.5的A / P比的显着改善,导致验证的2.5 SS / SH比的改善的抗压强度。 FTIR。将ANFIS的分析结果与MAE,R-2,RMSE和MAE的多变量自适应回归花键(MARS)进行比较,结果得出结论,与MARS模型相比,ANFIS模型显示出更好的相关性和误差。最后,通过基于从ANFIS模型获得的参数值采用真实实验测试结果来检查和验证开发模型。该研究的开发模型可以提供基于人工智能技术的地质聚合物设计的新方法。

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