基于Mrfo的含废纤维地聚合物性能人工神经网络预测

Reshma Raj Parameswaran Vijayalekshmi, Simon Judes Sujatha
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摘要

基于粉煤灰(FA)的地聚合物混凝土(GPC)正在被研究,作为一种可能的替代方案,它对环境的影响比使用波特兰水泥基复合材料更小。但强度预测的精度仍有待提高。本研究基于各种类型的机器学习(ML)方法来预测GPC的抗压强度(C-S)。提出了一种基于人工神经网络(ANN)的蝠鲼觅食优化(MRFO)预测GPC抗压强度(C-S)的新方法。为了解决各种优化问题,蝠鲼有三种觅食行为:链式觅食、旋风觅食和翻筋斗觅食。决定系数(R2)用于衡量结果的准确性,其范围通常为0到1。利用人工神经网络对优化结果进行预测。采用各种统计评价标准,如决定系数、平均绝对百分比偏差和均方根偏差,来评价所建立模型的有效性。交叉验证技术(k-fold)证实了模型的性能。结果表明,ANN-MRFO模型较好地预测了FA-GPC混合物的C-S。对模型的敏感性分析表明,固化温度、碱性液与粘结剂的比例和水玻璃的用量是估算FA-GPC的C-S最重要的参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Mrfo Based Artificial Neural Network Based Prediction of Geopolymer Containing Waste Fibre Performance
Geopolymer concrete (GPC) based on fly ash (FA) is being studied as a possible alternative solution with a lower environmental impact rather than the use of Portland cement based composites. However, the accuracy of the strength prediction still needs to be improved. This study was based on the investigation of various types of machine learning (ML) approaches to predict the compressive strength (C-S) of GPC. This paper proposes a novel approach to predict the compressive strength (C-S) of GPC utilizing Manta Ray Foraging Optimization (MRFO) based on Artificial Neural Network (ANN). Manta ray has three foraging behaviors like chain foraging, cyclone foraging, and somersault foraging for solving various optimization problems. The coefficient of determination (R2) is used to measure how accurate the results are, which usually ranged from 0 to 1. ANN is utilized to forecast the optimized outcomes. Various statistical assessment criteria, such as the coefficient of determination, the mean-absolute percentage deviation, and root-mean-square deviation, were used to evaluate the efficiency of the developed models. The cross-validation technique (k-fold) confirmed the model's performance. The results indicated that the ANN-MRFO model predicted the C–S of FA-GPC mixtures better than the other models. Also, the sensitivity analysis of the proposed model shows that the curing temperature, the ratio of alkaline liquid to the binder, and the amount of sodium silicate are the most important parameters for estimating the C–S of the FA-GPC.
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