Title of article
A genetic-based model to predict maximum lateral displacement of retaining wall in granular soil
Author/Authors
Johari، Ali نويسنده Associate Professor, Department of Fisheries, Faculty Marine Science, Tarbiat Modares University, Noor, Iran , , Javadi، Akbar نويسنده He is currently a Professor of Geotechnical Engineering and Head of the Computational Geomechanics at the University of Exeter in the UK. , , Najafi، Mohammad Hadi نويسنده ,
Issue Information
دوماهنامه با شماره پیاپی 0 سال 2016
Pages
12
From page
54
To page
65
Abstract
Retaining walls are one of the most common geotechnical structures.
Horizontal displacement at the top of the retaining wall is an important parameter in
design of retaining structures because of serviceability of the wall and adjacent structures.
In this research, the Gene Expression Programming (GEP) is used for developing a model
to predict this design parameter of retaining wall. The input parameters of the model
consist of eective period of adjacent structure, horizontal and rocking stiness of the
foundation of adjacent structure, density, Youngʹs modulus, and friction angle of granular
soil as well as the thickness and height of retaining wall. The output of the model is
maximum lateral displacement of retaining wall. A database including 240 cases, created
from 3D nite element modeling of a soil-retaining wall with an adjacent steel structure
modeled as surcharge, is employed to develop the model. Comparison of the GEP-based
model predictions with the simulated data indicates a very good performance and ability
of the developed models in predicting maximum lateral displacement of retaining walls.
Sensitivity and parametric analyses are conducted to verify the results. It is shown that soil
density is the most in
uential parameter in the maximum lateral displacement of retaining
wall.
Journal title
Scientia Iranica(Transactions A: Civil Engineering)
Serial Year
2016
Journal title
Scientia Iranica(Transactions A: Civil Engineering)
Record number
2386734
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