Applying wavelet transformation and artificial neural networks to develop forecasting-based reservoir operating rule curves |
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Authors: | Seyed Mohammad Ashrafi Ehsan Mostaghimzadeh Arash Adib |
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Affiliation: | 1. Department of Civil Engineering, Faculty of Engineering, Shahid Chamran University of Ahvaz , Ahvaz, Iran ashrafi@scu.ac.ir semo.ashrafi@gmail.comhttps://orcid.org/0000-0001-7884-9029;3. Department of Civil Engineering, Faculty of Engineering, Shahid Chamran University of Ahvaz , Ahvaz, Iran |
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Abstract: | ABSTRACT In order to provide more accurate reservoir-operating policies, this study attempts to implement effective monthly forecasting models. Seven inflow forecasting schemes, applying discrete wavelet transformation and artificial neural networks are proposed and provided to forecast the monthly inflow of Dez Reservoir. Based on some different performance indicators the best scheme is achieved comparing to the observed data. The best forecasting model is coupled with a simulation-optimization framework, in which the performance of five different reservoir rule curves can be compared. Three applied rules are based on conventional Standard operation policy, Regression rules, and Hedging rule, and two others are forecasting-based regression and hedging rules. The results indicate that forecasting-based operating rule curves are superior to the conventional rules if the forecasting scheme provides results accurately. Moreover, it can be concluded that the time series decomposition of the observed data enhances the accuracy of the forecasting results efficiently. |
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Keywords: | forecasting model reservoir operation wavelet transformation artificial neural network simulation-optimization approach |
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