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Prediction of swelling pressures of expansive soils using soft computing methods

机译:用软计算方法预测膨胀土的膨胀压力

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Lateral and vertical swelling pressures associated with expansive soils cause damages on structures. These pressures must be predicted before the structures are constructed in order to prevent the damages. The magnitude of the stresses can decrease rapidly when volume changes are partly allowed. Therefore, a material, which has a high compressibility, must be placed between expansive soils and the structures in both horizontal and vertical directions in order to decrease transmitted swelling pressure on structures. There are numerous techniques recommended for estimating the swelling pressures. However, these techniques are very complex and time-consuming. In this study, a new estimation model to predict the pressures is developed using experimental data. The data were collected in the laboratory using a newly developed device and experimental setup also. In the experimental setup, a rigid steel box was designed to measure transmitted swelling pressures in lateral and vertical directions. In the estimation model, approaches of artificial neural network (ANN) and adaptive neuro-fuzzy inference systems (ANFIS) are employed. In the first stage of the study, the lateral and vertical swelling pressures were measured with different thicknesses of expanded polystyrene geofoam placed between one of the vertical walls of the steel box and the expansive soil in the laboratory. Then, ANN and ANFIS approaches were trained using these results of the tests measured in the laboratory as input for the prediction of transmitted lateral and vertical swelling pressures. Results obtained showed that ANN-based prediction and ANFIS approaches could satisfactorily be used to estimate the transmitted lateral and vertical swelling pressures of expansive soils.
机译:与膨胀土壤相关的横向和纵向膨胀压力会导致结构损坏。为了防止损坏,在构造结构之前必须预测这些压力。当部分允许体积变化时,应力的大小会迅速减小。因此,必须在水平方向和垂直方向上将具有高可压缩性的材料放置在膨胀土和结构之间,以减小结构上传递的溶胀压力。建议使用多种技术来估计膨胀压力。但是,这些技术非常复杂且耗时。在这项研究中,使用实验数据开发了一种预测压力的新估计模型。数据是使用新开发的设备和实验装置在实验室中收集的。在实验装置中,设计了一个刚性钢箱,以测量横向和垂直方向上传递的溶胀压力。在估计模型中,采用了人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)的方法。在研究的第一阶段,在实验室中,在钢箱的垂直壁之一与膨胀土之间放置不同厚度的膨胀聚苯乙烯土工泡沫材料,以测量其横向和纵向膨胀压力。然后,使用实验室中测得的这些测试结果作为输入,以预测传播的横向和垂直膨胀压力,对ANN和ANFIS方法进行了训练。所得结果表明,基于ANN的预测和ANFIS方法可以令人满意地用于估算膨胀土的横向和纵向膨胀压力。

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