A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA Data
A cost-effective and efficient wind energy production trend leads to larger wind turbine generators and drive for more advanced forecast models to increase their accuracy. This paper proposes a combined forecasting model that consists of empirical mode decomposition, fuzzy group method of data handl...
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doaj-ceb966cc0c534cbab1a935164761fc152021-06-30T23:56:04ZengMDPI AGEnergies1996-10732021-06-01143459345910.3390/en14123459A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA DataAzim Heydari0Meysam Majidi Nezhad1Mehdi Neshat2Davide Astiaso Garcia3Farshid Keynia4Livio De Santoli5Lina Bertling Tjernberg6Department of Astronautical, Electrical and Energy Engineering (DIAEE), Sapienza University, 00184 Rome, ItalyDepartment of Astronautical, Electrical and Energy Engineering (DIAEE), Sapienza University, 00184 Rome, ItalyOptimization and Logistics Group, School of Computer Science, University of Adelaide, Adelaide 5005, AustraliaDepartment of Planning, Design, and Technology of Architecture, Sapienza University of Rome, 00197 Rome, ItalyDepartment of Energy Management and Optimization, Institute of Science and High Technology and Environmental Sciences, Graduate University of Advanced Technology, Kerman 7631133131, IranDepartment of Astronautical, Electrical and Energy Engineering (DIAEE), Sapienza University, 00184 Rome, ItalySchool of Electrical Engineering and Computer Science, KTH Royal Institute of Technology Stockholm, 10044 Stockholm, SwedenA cost-effective and efficient wind energy production trend leads to larger wind turbine generators and drive for more advanced forecast models to increase their accuracy. This paper proposes a combined forecasting model that consists of empirical mode decomposition, fuzzy group method of data handling neural network, and grey wolf optimization algorithm. A combined K-means and identifying density-based local outliers is applied to detect and clean the outliers of the raw supervisory control and data acquisition data in the proposed forecasting model. Moreover, the empirical mode decomposition is employed to decompose signals and pre-processing data. The fuzzy GMDH neural network is a forecaster engine to estimate the future amount of wind turbines energy production, where the grey wolf optimization is used to optimize the fuzzy GMDH neural network parameters in order to achieve a lower forecasting error. Moreover, the model has been applied using actual data from a pilot onshore wind farm in Sweden. The obtained results indicate that the proposed model has a higher accuracy than others in the literature and provides single and combined forecasting models in different time-steps ahead and seasons.https://www.mdpi.com/1996-1073/14/12/3459power systemwind power productionSCADA datafuzzy GMDH neural networkgrey wolf optimization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Azim Heydari Meysam Majidi Nezhad Mehdi Neshat Davide Astiaso Garcia Farshid Keynia Livio De Santoli Lina Bertling Tjernberg |
spellingShingle |
Azim Heydari Meysam Majidi Nezhad Mehdi Neshat Davide Astiaso Garcia Farshid Keynia Livio De Santoli Lina Bertling Tjernberg A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA Data Energies power system wind power production SCADA data fuzzy GMDH neural network grey wolf optimization |
author_facet |
Azim Heydari Meysam Majidi Nezhad Mehdi Neshat Davide Astiaso Garcia Farshid Keynia Livio De Santoli Lina Bertling Tjernberg |
author_sort |
Azim Heydari |
title |
A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA Data |
title_short |
A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA Data |
title_full |
A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA Data |
title_fullStr |
A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA Data |
title_full_unstemmed |
A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA Data |
title_sort |
combined fuzzy gmdh neural network and grey wolf optimization application for wind turbine power production forecasting considering scada data |
publisher |
MDPI AG |
series |
Energies |
issn |
1996-1073 |
publishDate |
2021-06-01 |
description |
A cost-effective and efficient wind energy production trend leads to larger wind turbine generators and drive for more advanced forecast models to increase their accuracy. This paper proposes a combined forecasting model that consists of empirical mode decomposition, fuzzy group method of data handling neural network, and grey wolf optimization algorithm. A combined K-means and identifying density-based local outliers is applied to detect and clean the outliers of the raw supervisory control and data acquisition data in the proposed forecasting model. Moreover, the empirical mode decomposition is employed to decompose signals and pre-processing data. The fuzzy GMDH neural network is a forecaster engine to estimate the future amount of wind turbines energy production, where the grey wolf optimization is used to optimize the fuzzy GMDH neural network parameters in order to achieve a lower forecasting error. Moreover, the model has been applied using actual data from a pilot onshore wind farm in Sweden. The obtained results indicate that the proposed model has a higher accuracy than others in the literature and provides single and combined forecasting models in different time-steps ahead and seasons. |
topic |
power system wind power production SCADA data fuzzy GMDH neural network grey wolf optimization |
url |
https://www.mdpi.com/1996-1073/14/12/3459 |
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