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Prediction of Zeolite-Cemented Sand Tensile Strength by GMDH type Neural Network

机译:GMDH型神经网络预测沸石粘附砂抗拉强度

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摘要

Soil tensile strength (q(t)) plays an important role in controlling cracks and tensile failures particularly in the design of foundations that usually fail under tensile stresses at the bottom of the treated layer. Soil-cement mixtures are used in many engineering applications including building of stabilized pavement bases and canal lining. Splitting tensile test (STT) is one of the common applied methods for indirect determination of q(t). Given that the determination of q(t) of artificially cemented soils from STT-especially for samples with long curing time-is relatively costly and time-consuming, there is a need to develop some empirical models that can estimate determinable properties simply. In the current study, it has been analyzed that whether the Group Method of Data Handling (GMDH)-type Neural Network (NN) is suitable to predict the q(t) of sands stabilized with zeolite and cement. For this purpose, a program of STT considering three distinct porosity ratios, four cement contents and six different percent of cement replacement by zeolite in 42, 56 and 90 days of curing time is performed in present study. Active particle (AP) has been introduced as a new parameter for modeling the GMDH-type NN. The performances of the proposed models reveal that GMDH is a reliable and accurate approach to predict the q(t) of sands stabilized by zeolite-cement mixture. Proposing an equation in current study, it can be interpreted that AP is one of the key parameters to predict the q(t) of zeolite-cemented sands. The sensitivity analysis on the proposed GMDH model with the best performance has shown that the proposed q(t) is considerably influenced by cement content variations.
机译:土壤拉伸强度(Q(t))在控制裂缝和拉伸失效方面起重要作用,特别是在经过处理层底部的拉伸应力下通常在拉伸应力下的基础上进行设计。土壤 - 水泥混合物用于许多工程应用,包括建造稳定的路面基地和管道衬里。分裂拉伸试验(STT)是间接测定Q(T)的常见应用方法之一。鉴于从STT的人工化合物土壤的Q(t)的测定 - 特别是对于具有长固化时间的样品 - 相对昂贵且耗时,需要开发一些能够简单地估计可确定性特性的经验模型。在目前的研究中,已经分析了数据处理的组方法(GMDH) - 型神经网络(NN)是否适合于预测用沸石和水泥稳定的砂的Q(t)。为此目的,在本研究中,在42,56和90天内,考虑到三种不同的孔隙率比,四个水泥含量和六种不同的水泥置换的STT程序。已引入有源粒子(AP)作为用于建模GMDH型NN的新参数。所提出的模型的性能揭示了GMDH是一种可靠且准确的方法来预测通过沸石 - 水泥混合物稳定的砂的Q(t)。提出当前研究中的等式,可以解释为AP是预测沸石粘液砂的Q(t)的关键参数之一。具有最佳性能的提议的GMDH模型的灵敏度分析表明,所提出的Q(T)受水泥含量变化的显着影响。

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