Use of Artificial Neural Network in Predicting Permeability of Dispersive Clay Treated With Lime and Pozzolan

A. Vakili, S. Davoodi, Alireza Arab, M. Selamat
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引用次数: 18

Abstract

The treatment of a dispersive core soil can be achieved by mixing with lime and pozzolan, separately or simultaneously. On a dispersive soil treated with lime and pozzolan, experimental measurements of permeability were carried out with varying curing times and percentages of the additives. The results from these measurements were used in establishing an artificial neural network model meant to predict the permeability of more samples while being treated as carrying out laboratory measurements would be time consuming. Six parameters namely percentage passing of the 0.005 mm size (p), plasticity index (PI), maximum dry density (MDD), lime percentage (L), pozzolan percentage (pp), and curing time (t) were the inputs to the model while the output was permeability value. The prediction performances of various neural network models were evaluated using statistical performance indices such as root of the mean squared error (RMSE), the mean squared error (MSE), and the multiple coefficient of determination (R 2 ). The results show that the multilayer perceptron (MLP) neural network model with nine nodes in the hidden layer was desirable for predicting permeability of dispersive soils while being stabilized by lime and pozzolan, separately or simultaneously. For the model, R 2 =0.9895 and RMSE=3.5604×10 -8 cm/sec.
应用人工神经网络预测石灰和灰岩处理的分散粘土渗透率
分散型核心土的处理可以通过单独或同时与石灰和火山灰混合来实现。在石灰和火山灰处理过的分散土上,进行了不同养护时间和添加剂百分比下的渗透性试验测量。这些测量结果被用于建立一个人工神经网络模型,该模型旨在预测更多样品的渗透率,而进行实验室测量将是耗时的。模型输入0.005 mm粒径通过率(p)、塑性指数(PI)、最大干密度(MDD)、石灰含量(L)、火山灰含量(pp)、养护时间(t) 6个参数,输出渗透率值。采用均方误差(RMSE)、均方误差(MSE)和多重决定系数(r2)等统计性能指标对各种神经网络模型的预测性能进行评价。结果表明,隐层中有9个节点的多层感知器(MLP)神经网络模型可以单独或同时预测石灰和火山灰稳定时分散性土壤的渗透性。对于模型,r2 =0.9895, RMSE=3.5604×10 -8 cm/sec。
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