PREDICTION OF SWELLING PARAMETERS OF TWO CLAYEY SOILS FROM ALGERIA USING ARTIFICIAL NEURAL NETWORKS
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Mathematical Modelling in Civil Engineering
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.
