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首页> 外文期刊>Iranian Journal of Science and Technology, Transactions of Civil Engineering >A Novel Formulation for the Compressive Strength of IBP-Based Geopolymer Stabilized Clayey Soils Using ANN and GMDH-NN Approaches
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A Novel Formulation for the Compressive Strength of IBP-Based Geopolymer Stabilized Clayey Soils Using ANN and GMDH-NN Approaches

机译:基于ABP和GMDH-NN方法的基于IBP的地聚合物稳定的黏土抗压强度的新公式

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摘要

Applicability of geopolymer binder, as one of the environmentally friendly materials in geotechnical constructions, can be evaluated by the compressive strength. Due to the difficulties and time-consuming process of experimental studies, soft computing approaches would be considerable. Feasibility and the performance of the neural network-based group method of data handling (GMDH-NN) and artificial neural network (ANN) for unconfined compressive strength (UCS) prediction were investigated in this paper. Ground-granulated blast-furnace slag was used as geopolymer source material, and the alkali activator was sodium hydroxide solution. According to previous researches, soil plasticity index, ground-granulated blast-furnace slag percentage, the molar concentration of activator, activator-to-binder ratio, sodium-to-alumina atomic ratio and silicate-to-alumina atomic ratio were chosen as essential parameters for mechanical behavior of stabilized soil and consequently as the input parameters for the purpose of UCS prediction. The statistical results of this study showed that GMDH-NN and ANN are reliable approaches to be utilized for geopolymer stabilized soil UCS value prediction. Performances of these two methods for predicting unseen data were acceptable based on the coefficient of determination which is 0.9677 and 0.9741 for GMDH-NN and ANN techniques, respectively. Moreover, a novel direct formulation is provided employing a GMDH-NN method which can be used for ease of UCS calculation.
机译:地质聚合物粘合剂作为岩土工程施工中的一种环保材料,其可应用性可通过抗压强度进行评估。由于实验研究的困难和耗时的过程,软计算方法将是相当可观的。本文研究了基于神经网络的数据处理分组方法(GMDH-NN)和人工神经网络(ANN)进行无边压缩强度(UCS)预测的可行性和性能。将磨碎的高炉矿渣用作地质聚合物的原料,碱活化剂为氢氧化钠溶液。根据以前的研究,必须选择土壤可塑性指数,高炉矿渣的颗粒度,活化剂的摩尔浓度,活化剂与粘结剂的比例,钠与氧化铝的原子比以及硅酸盐与氧化铝的原子比。稳定土的力学性能参数,因此作为UCS预测的输入参数。这项研究的统计结果表明,GMDH-NN和ANN是可靠的方法,可用于地质聚合物稳定的土壤UCS值预测。根据GMDH-NN和ANN技术的确定系数分别为0.9677和0.9741,这两种预测看不见数据的方法的性能是可以接受的。而且,提供了使用GMDH-NN方法的新颖的直接制剂,其可以用于UCS计算的容易性。

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