Optimal Operation of Dam Reservoir Using Gray Wolf Optimizer Algorithm (Case Study: Urmia Shaharchay Dam in Iran)

Reservoir storage prediction is so crucial for water resources planning and managing water resources, drought risk management and flood predicting throughout the world. In this study, Gray Wolf Optimizer algorithm (GWO) was applied to predict Shaharchay dam reservoir storage of located in the Urmia...

Full description

Bibliographic Details
Main Authors: Yahya Choopan, Somayeh Emami
Format: Article
Language:English
Published: Pouyan Press 2019-07-01
Series:Journal of Soft Computing in Civil Engineering
Subjects:
Online Access:http://www.jsoftcivil.com/article_100854_f1fbebf6a7e7bda07d5947504cb45ec9.pdf
id doaj-312930c8e381492b957c9ce520fd1aed
record_format Article
spelling doaj-312930c8e381492b957c9ce520fd1aed2021-03-01T07:01:36ZengPouyan PressJournal of Soft Computing in Civil Engineering2588-28722588-28722019-07-0133476110.22115/scce.2020.189429.1112100854Optimal Operation of Dam Reservoir Using Gray Wolf Optimizer Algorithm (Case Study: Urmia Shaharchay Dam in Iran)Yahya Choopan0Somayeh Emami1Ph.D. Candidate of Irrigation and Drainage, Department of Water Engineering, Gorgan University of Agriculture Sciences and Natural Resources, Gorgan, IranPh.D. Candidate of Hydraulic Structures, Department of Water Engineering, University of Tabriz, Tabriz, IranReservoir storage prediction is so crucial for water resources planning and managing water resources, drought risk management and flood predicting throughout the world. In this study, Gray Wolf Optimizer algorithm (GWO) was applied to predict Shaharchay dam reservoir storage of located in the Urmia Lake basin, northwest of Iran. The results of the GWO algorithm have been compared with the continuous genetic algorithm (CGA). The predicted values from the GWO algorithm matched the measured values very well. According to the results, the error is not significant (2.11%) in the implementation of the GWO and the correlation coefficient between the predicted and measured values is 0.92. In addition, the statistical criteria of RMSE, MAE and NSE for GWO algorithm were estimated to be 0.03, 0.41 and 0.74, respectively, indicated a satisfactory performance. Excessive value of correlation coefficient expresses that the GWO algorithm pretty suit the variables and may finally be used for predicting of reservoir storage for operational overall performance. Comparison of results showed that the GWO algorithm with average best objective function value of 121, 112 and 83.10 with a number of further evaluations of the objective function to achieve higher capacity is the optimum answer.http://www.jsoftcivil.com/article_100854_f1fbebf6a7e7bda07d5947504cb45ec9.pdfpredictionreservoir storagegwo algorithmcga algorithmshaharchay dam
collection DOAJ
language English
format Article
sources DOAJ
author Yahya Choopan
Somayeh Emami
spellingShingle Yahya Choopan
Somayeh Emami
Optimal Operation of Dam Reservoir Using Gray Wolf Optimizer Algorithm (Case Study: Urmia Shaharchay Dam in Iran)
Journal of Soft Computing in Civil Engineering
prediction
reservoir storage
gwo algorithm
cga algorithm
shaharchay dam
author_facet Yahya Choopan
Somayeh Emami
author_sort Yahya Choopan
title Optimal Operation of Dam Reservoir Using Gray Wolf Optimizer Algorithm (Case Study: Urmia Shaharchay Dam in Iran)
title_short Optimal Operation of Dam Reservoir Using Gray Wolf Optimizer Algorithm (Case Study: Urmia Shaharchay Dam in Iran)
title_full Optimal Operation of Dam Reservoir Using Gray Wolf Optimizer Algorithm (Case Study: Urmia Shaharchay Dam in Iran)
title_fullStr Optimal Operation of Dam Reservoir Using Gray Wolf Optimizer Algorithm (Case Study: Urmia Shaharchay Dam in Iran)
title_full_unstemmed Optimal Operation of Dam Reservoir Using Gray Wolf Optimizer Algorithm (Case Study: Urmia Shaharchay Dam in Iran)
title_sort optimal operation of dam reservoir using gray wolf optimizer algorithm (case study: urmia shaharchay dam in iran)
publisher Pouyan Press
series Journal of Soft Computing in Civil Engineering
issn 2588-2872
2588-2872
publishDate 2019-07-01
description Reservoir storage prediction is so crucial for water resources planning and managing water resources, drought risk management and flood predicting throughout the world. In this study, Gray Wolf Optimizer algorithm (GWO) was applied to predict Shaharchay dam reservoir storage of located in the Urmia Lake basin, northwest of Iran. The results of the GWO algorithm have been compared with the continuous genetic algorithm (CGA). The predicted values from the GWO algorithm matched the measured values very well. According to the results, the error is not significant (2.11%) in the implementation of the GWO and the correlation coefficient between the predicted and measured values is 0.92. In addition, the statistical criteria of RMSE, MAE and NSE for GWO algorithm were estimated to be 0.03, 0.41 and 0.74, respectively, indicated a satisfactory performance. Excessive value of correlation coefficient expresses that the GWO algorithm pretty suit the variables and may finally be used for predicting of reservoir storage for operational overall performance. Comparison of results showed that the GWO algorithm with average best objective function value of 121, 112 and 83.10 with a number of further evaluations of the objective function to achieve higher capacity is the optimum answer.
topic prediction
reservoir storage
gwo algorithm
cga algorithm
shaharchay dam
url http://www.jsoftcivil.com/article_100854_f1fbebf6a7e7bda07d5947504cb45ec9.pdf
work_keys_str_mv AT yahyachoopan optimaloperationofdamreservoirusinggraywolfoptimizeralgorithmcasestudyurmiashaharchaydaminiran
AT somayehemami optimaloperationofdamreservoirusinggraywolfoptimizeralgorithmcasestudyurmiashaharchaydaminiran
_version_ 1724246782652710912