大体积粉煤灰混凝土力学性能的智能预测方法

Musa Adamu, A. Batur Çolak, Ibrahim K. Umar, Yasser E. Ibrahim, Mukhtar F. Hamza
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引用次数: 0

摘要

塑料废物(PW)是一种主要的固体废物,其产量在全球范围内逐年增加。由于污水的不可生物降解性,妥善管理污水仍然是一项挑战。管理塑料废物最方便的方法之一是在混凝土中使用塑料作为天然骨料的部分替代品。然而,在混凝土中加入塑料废料的主要缺点是强度和耐久性降低。因此,为了减少PW在混凝土中的不良影响,通常会添加高活性的添加剂。在这项研究中,使用240个实验数据集来训练一个人工神经网络(ANN)模型,使用Levenberg Marquadt算法来预测高容量粉煤灰(HVFA)混凝土的力学性能和耐久性,其中粉煤灰和PW分别作为水泥和粗骨料的部分替代品,石墨烯纳米片(GNP)作为胶凝材料的添加剂。优化后的模型结构有5个输入参数,17个隐藏神经元,每个物理参数有一个输出层。对结果进行了图形和统计分析。结果表明,所生成的网络模型预测误差小于0.48%。将人工神经网络模型与支持向量回归(SVR)和逐步回归(SWLR)模型预测混凝土性能的效率进行了比较。在所有模型的确认阶段,人工神经网络的SVR和SWLR分别比SVR和SWLR高6%和74%。结果的图形化分析进一步证明了人工神经网络具有较高的预测能力。Doi: 10.28991/CEJ-2023-09-09-04全文:PDF
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent Approach for Predicting Mechanical Properties of High-Volume Fly Ash (HVFA) Concrete
Plastic waste (PW) is a major soild waste, which its generation continues to increase globally year in and year out. Proper management of the PW is still a challenge due to its non-biodegradable nature. One of the most convenient ways of managing plastic waste is by using it in concrete as a partial substitute for natural aggregate. However, the main shortcomings of adding plastic waste to concrete are a reduction in strength and durability. Hence, to reduce the undesirable impact of the PW in concrete, highly reactive additives are normally added. In this research, 240 experimental datasets were used to train an artificial neural network (ANN) model using Levenberg Marquadt algorithms for the prediction of the mechanical properties and durability of high-volume fly ash (HVFA) concrete containing fly ash and PW as partial substitutes for cement and coarse aggregate, respectively, and graphene nanoplatlets (GNP) as additives to cementitious materials. The optimized model structure has five input parameters, 17 hidden neurons, and one output layer for each of the physical parameters. The results were analyzed graphically and statistically. The obtained results revealed that the generated network model can forecast with deviations less than 0.48%. The efficiency of the ANN model in predicting concrete properties was compared with that of the SVR (support vector regression) and SWLR (stepwise regression) models. The ANN outperformed SVR and SWLR for all the models by up to 6% and 74% for SVR and SWLR, respectively, in the confirmation stage. The graphical analysis of the results further demonstrates the higher prediction ability of the ANN. Doi: 10.28991/CEJ-2023-09-09-04 Full Text: PDF
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