Prediction of Swelling Parameters of Two Clayey Soils from Algeria Using Artificial Neural Networks

Fatima Zohra Merouane, S. Mamoune
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引用次数: 4

Abstract

Abstract The phenomenon of swelling is one of the more complicated geotechnical problems that the engineer have to deal with. However, its quantification is essential for the design of structures and various methods can be applied to the identification of this phenomenon. Some, such as mineralogical identification and direct measurements of swelling, are more or less long and require very specific equipment. However, there are other methods that offer the advantage of being relatively fast and lesser expensive: they are based on soil mechanics parameters. Using these parameters, several authors have introduced soil swelling prediction models, mostly in the form of classifications and empirical formulas. This work concerns in the first part the identification and classification of the swelling potential of two clays located in north-western Algeria. Followed by a statistical analysis carried out to test the reliability of the observations for the estimation of the pressure and the swelling amplitude using a multiple linear regression. A second part is devoted to the development of a prediction method by artificial neural networks allowing the estimation of swelling parameters (pressure and amplitude) by minimizing the difference between the experimental measurements and the numerical results. Modeling by artificial neural networks is of great interest in the field of prediction. The application of two networks makes it possible to obtain good forecasts of the swelling parameters.
阿尔及利亚两种粘性土膨胀参数的人工神经网络预测
摘要膨胀现象是工程师必须处理的较为复杂的岩土工程问题之一。然而,它的量化是必不可少的结构设计和各种方法可以应用于识别这一现象。有些,如矿物学鉴定和膨胀的直接测量,或多或少需要很长的时间,需要非常特殊的设备。然而,还有其他方法提供了相对快速和更便宜的优势:它们基于土壤力学参数。利用这些参数,一些作者提出了土体膨胀预测模型,大多采用分类和经验公式的形式。本工作的第一部分涉及阿尔及利亚西北部两种粘土的膨胀势的识别和分类。然后进行统计分析,利用多元线性回归检验观测值对压力和膨胀幅度估计的可靠性。第二部分致力于开发一种人工神经网络预测方法,通过最小化实验测量和数值结果之间的差异来估计膨胀参数(压力和振幅)。人工神经网络建模是预测领域的一个重要研究方向。两种网络的应用使得对膨胀参数进行较好的预测成为可能。
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