Predicting Seepage of Earth Dams using Artificial Intelligence Techniques

The use of clay blanket in reservoirs is one of the main methods of seepage reducing. In this study, with clay blanket modeling in a proposed reservoir by finite element method, 350 dataset was obtained using SEEP/W. Validation of SEEP/W was carried out by comparing seepage results obtained from a l...

Full description

Bibliographic Details
Main Authors: Meysam Nouri, Farzin Salmasi
Format: Article
Language:fas
Published: Shahid Chamran University of Ahvaz 2019-03-01
Series:علوم و مهندسی آبیاری
Subjects:
Online Access:http://jise.scu.ac.ir/article_14075_987899268377f91d4b97f43d29794725.pdf
_version_ 1818256643549298688
author Meysam Nouri
Farzin Salmasi
author_facet Meysam Nouri
Farzin Salmasi
author_sort Meysam Nouri
collection DOAJ
description The use of clay blanket in reservoirs is one of the main methods of seepage reducing. In this study, with clay blanket modeling in a proposed reservoir by finite element method, 350 dataset was obtained using SEEP/W. Validation of SEEP/W was carried out by comparing seepage results obtained from a laboratory tests. For evaluation of suitable model for predicting seepage values (results of modeling), used from five artificial intelligence techniques comprising: multilayer perceptron neural network (MLP), radial base function (RBF), gene expression programming (GEP), support vector regression (SVR) and a novel hybrid model of the firefly algorithm (FFA) with the multilayer perceptron (MLP-FFA). All the techniques were trained with 70% of available dataset and tested using the remaining 30% dataset. Different combinations of input data that include the ratio of the permeability coefficient of foundation to the permeability coefficient of clay blanket (K_f/K_b ), the ratio of the length of blanket to upstream head (L_1/H), the ratio of thickness of foundation to thickness of blanket (h_f/t), the ratio of length of blanket to thickness of core (L_1/L_2 ) and the ratio of horizontal to vertical permeability coefficient of foundation (K_(f_x )/K_(f_y ) ) were used for evaluation of mentioned methods. The results were evaluated using four performance criteria metrics: root mean square error (RMSE), mean absolute error (MAE), Nash-Sutcliffe efficiency (NS), Willmott’s Index of agreement (WI) and Taylor diagram. The results of study showed that the MLP-FFA method provides better estimation results than the other models and therefore, could be applied an optimized for predictive model of earth fill dam seepage.
first_indexed 2024-12-12T17:31:01Z
format Article
id doaj.art-f5cd91054fed4f47b0b9448736b39a04
institution Directory Open Access Journal
issn 2588-5952
2588-5960
language fas
last_indexed 2024-12-12T17:31:01Z
publishDate 2019-03-01
publisher Shahid Chamran University of Ahvaz
record_format Article
series علوم و مهندسی آبیاری
spelling doaj.art-f5cd91054fed4f47b0b9448736b39a042022-12-22T00:17:22ZfasShahid Chamran University of Ahvazعلوم و مهندسی آبیاری2588-59522588-59602019-03-01421839710.22055/jise.2017.21384.153714075Predicting Seepage of Earth Dams using Artificial Intelligence TechniquesMeysam Nouri0Farzin Salmasi1tabriz universityM.Sc. of Water Structures, University of Tabriz, Tabriz-IranAssociate Professor, Water Engineering Department, University of Tabriz, Tabriz-Iran.The use of clay blanket in reservoirs is one of the main methods of seepage reducing. In this study, with clay blanket modeling in a proposed reservoir by finite element method, 350 dataset was obtained using SEEP/W. Validation of SEEP/W was carried out by comparing seepage results obtained from a laboratory tests. For evaluation of suitable model for predicting seepage values (results of modeling), used from five artificial intelligence techniques comprising: multilayer perceptron neural network (MLP), radial base function (RBF), gene expression programming (GEP), support vector regression (SVR) and a novel hybrid model of the firefly algorithm (FFA) with the multilayer perceptron (MLP-FFA). All the techniques were trained with 70% of available dataset and tested using the remaining 30% dataset. Different combinations of input data that include the ratio of the permeability coefficient of foundation to the permeability coefficient of clay blanket (K_f/K_b ), the ratio of the length of blanket to upstream head (L_1/H), the ratio of thickness of foundation to thickness of blanket (h_f/t), the ratio of length of blanket to thickness of core (L_1/L_2 ) and the ratio of horizontal to vertical permeability coefficient of foundation (K_(f_x )/K_(f_y ) ) were used for evaluation of mentioned methods. The results were evaluated using four performance criteria metrics: root mean square error (RMSE), mean absolute error (MAE), Nash-Sutcliffe efficiency (NS), Willmott’s Index of agreement (WI) and Taylor diagram. The results of study showed that the MLP-FFA method provides better estimation results than the other models and therefore, could be applied an optimized for predictive model of earth fill dam seepage.http://jise.scu.ac.ir/article_14075_987899268377f91d4b97f43d29794725.pdfartificial intelligencefirefly algorithmhybrid models predict seepageearth dam
spellingShingle Meysam Nouri
Farzin Salmasi
Predicting Seepage of Earth Dams using Artificial Intelligence Techniques
علوم و مهندسی آبیاری
artificial intelligence
firefly algorithm
hybrid models predict seepage
earth dam
title Predicting Seepage of Earth Dams using Artificial Intelligence Techniques
title_full Predicting Seepage of Earth Dams using Artificial Intelligence Techniques
title_fullStr Predicting Seepage of Earth Dams using Artificial Intelligence Techniques
title_full_unstemmed Predicting Seepage of Earth Dams using Artificial Intelligence Techniques
title_short Predicting Seepage of Earth Dams using Artificial Intelligence Techniques
title_sort predicting seepage of earth dams using artificial intelligence techniques
topic artificial intelligence
firefly algorithm
hybrid models predict seepage
earth dam
url http://jise.scu.ac.ir/article_14075_987899268377f91d4b97f43d29794725.pdf
work_keys_str_mv AT meysamnouri predictingseepageofearthdamsusingartificialintelligencetechniques
AT farzinsalmasi predictingseepageofearthdamsusingartificialintelligencetechniques