System performances analysis of reservoir optimization–simulation model in application of artificial bee colony algorithm

In reservoir system operation, optimization is very much essential and the compatibility of different optimization techniques is essential to be checked by some performance checking indices. In this study, various types of performance-measuring index are used and compared to provide a complete knowl...

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Main Authors: Hossain, M.S., El-Shafie, A., Mahzabin, M.S., Zawawi, M.H.
Format: Article
Language:English
Published: 2018
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spelling my.uniten.dspace-111182018-12-07T03:45:29Z System performances analysis of reservoir optimization–simulation model in application of artificial bee colony algorithm Hossain, M.S. El-Shafie, A. Mahzabin, M.S. Zawawi, M.H. In reservoir system operation, optimization is very much essential and the compatibility of different optimization techniques is essential to be checked by some performance checking indices. In this study, various types of performance-measuring index are used and compared to provide a complete knowledge on adopting different approaches. Here, the considered performance-measuring indicators will check the operation policy in terms of three different scenarios—how the method is efficient in achieving best results (reliability); how vulnerable the method is for different critical situation (vulnerability); and how capable it is to handle a failure of the model (resiliency). Therefore, the study proposed the artificial bee colony (ABC) optimization technique to develop an optimal water release policy for the well-known Aswan High Dam, Egypt. Particle swarm optimization, genetic algorithm and neural network-based stochastic dynamic programming are also used in a view of comparing model performances. A release curve is developed for every month as a guidance to the decision maker. Simulation has been done for each method using historical actual inflow data, and reliability, resiliency and vulnerability are measured. All model indicators proved that the release policy provided by ABC optimization outperforms in terms of achieving minimum water deficit, less waste of water and handling critical situations. © 2016, The Natural Computing Applications Forum. 2018-12-07T00:22:43Z 2018-12-07T00:22:43Z 2018 Article 10.1007/s00521-016-2798-2 en
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language English
description In reservoir system operation, optimization is very much essential and the compatibility of different optimization techniques is essential to be checked by some performance checking indices. In this study, various types of performance-measuring index are used and compared to provide a complete knowledge on adopting different approaches. Here, the considered performance-measuring indicators will check the operation policy in terms of three different scenarios—how the method is efficient in achieving best results (reliability); how vulnerable the method is for different critical situation (vulnerability); and how capable it is to handle a failure of the model (resiliency). Therefore, the study proposed the artificial bee colony (ABC) optimization technique to develop an optimal water release policy for the well-known Aswan High Dam, Egypt. Particle swarm optimization, genetic algorithm and neural network-based stochastic dynamic programming are also used in a view of comparing model performances. A release curve is developed for every month as a guidance to the decision maker. Simulation has been done for each method using historical actual inflow data, and reliability, resiliency and vulnerability are measured. All model indicators proved that the release policy provided by ABC optimization outperforms in terms of achieving minimum water deficit, less waste of water and handling critical situations. © 2016, The Natural Computing Applications Forum.
format Article
author Hossain, M.S.
El-Shafie, A.
Mahzabin, M.S.
Zawawi, M.H.
spellingShingle Hossain, M.S.
El-Shafie, A.
Mahzabin, M.S.
Zawawi, M.H.
System performances analysis of reservoir optimization–simulation model in application of artificial bee colony algorithm
author_facet Hossain, M.S.
El-Shafie, A.
Mahzabin, M.S.
Zawawi, M.H.
author_sort Hossain, M.S.
title System performances analysis of reservoir optimization–simulation model in application of artificial bee colony algorithm
title_short System performances analysis of reservoir optimization–simulation model in application of artificial bee colony algorithm
title_full System performances analysis of reservoir optimization–simulation model in application of artificial bee colony algorithm
title_fullStr System performances analysis of reservoir optimization–simulation model in application of artificial bee colony algorithm
title_full_unstemmed System performances analysis of reservoir optimization–simulation model in application of artificial bee colony algorithm
title_sort system performances analysis of reservoir optimization–simulation model in application of artificial bee colony algorithm
publishDate 2018
_version_ 1644495118707720192
score 13.160551