Comparative Analysis of Neural Networks Techniques to Forecast Global Horizontal Irradiance
Due to the continuous increasing importance of renewable energy sources as an alternative to fossil fuels, to contrast air pollution and global warming, the prediction of Global Horizontal Irradiation (GHI), one of the main parameters determining solar energy production of photovoltaic systems, repr...
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doaj-22050883418a4545883523405ed710622021-09-13T23:00:26ZengIEEEIEEE Access2169-35362021-01-01912282912284610.1109/ACCESS.2021.31101679528372Comparative Analysis of Neural Networks Techniques to Forecast Global Horizontal IrradianceAlessandro Aliberti0https://orcid.org/0000-0001-8828-608XDaniele Fucini1Lorenzo Bottaccioli2https://orcid.org/0000-0001-7445-3975Enrico Macii3https://orcid.org/0000-0001-9046-5618Andrea Acquaviva4https://orcid.org/0000-0002-7323-759XEdoardo Patti5https://orcid.org/0000-0002-6043-6477Department of Control and Computer Engineering, Politecnico di Torino, Turin, ItalyDepartment of Control and Computer Engineering, Politecnico di Torino, Turin, ItalyDepartment of Control and Computer Engineering, Politecnico di Torino, Turin, ItalyInteruniversity Department of Regional and Urban Studies and Planning, Politecnico di Torino, Turin, ItalyDepartment of Electrical, Electronic, and Information Engineering ‘‘Guglielmo Marconi,’’, Università di Bologna, Bologna, ItalyDepartment of Control and Computer Engineering, Politecnico di Torino, Turin, ItalyDue to the continuous increasing importance of renewable energy sources as an alternative to fossil fuels, to contrast air pollution and global warming, the prediction of Global Horizontal Irradiation (GHI), one of the main parameters determining solar energy production of photovoltaic systems, represents an attractive topic nowadays. Solar irradiance is determined by deterministic factors (i.e. the position of the sun) and stochastic factors (i.e. the presence of clouds). Since the stochastic element is difficult to model, this problem can benefit from machine learning techniques, like artificial neural networks. This work proposes a methodology to forecast GHI in short- (i.e. from 15 min to 60 min) and mid-term (i.e. from 60 to 120 min) time horizons. For this purpose, we designed, optimised and compared four neural network architectures for time-series forecasting, respectively based on: i) Non-Linear Autoregressive, ii) Feed-Forward, iii) Long Short-Term Memory and iv) Echo State Network. The original data-set, consisting of GHI values sampled every 15min, has been pre-processed by applying different filtering techniques. Our results analysis compares the performance of the proposed neural networks identifying the best in terms of error rate and forecast horizon. This analysis highlights that the clear-sky index results the preferred filtering technique by giving greatly improvements in data-set pre-processing, and Echo State Network gives best accuracy results.https://ieeexplore.ieee.org/document/9528372/Solar radiation forecastartificial neural networksLSTMECHOphotovoltaic systemenergy forecast |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Alessandro Aliberti Daniele Fucini Lorenzo Bottaccioli Enrico Macii Andrea Acquaviva Edoardo Patti |
spellingShingle |
Alessandro Aliberti Daniele Fucini Lorenzo Bottaccioli Enrico Macii Andrea Acquaviva Edoardo Patti Comparative Analysis of Neural Networks Techniques to Forecast Global Horizontal Irradiance IEEE Access Solar radiation forecast artificial neural networks LSTM ECHO photovoltaic system energy forecast |
author_facet |
Alessandro Aliberti Daniele Fucini Lorenzo Bottaccioli Enrico Macii Andrea Acquaviva Edoardo Patti |
author_sort |
Alessandro Aliberti |
title |
Comparative Analysis of Neural Networks Techniques to Forecast Global Horizontal Irradiance |
title_short |
Comparative Analysis of Neural Networks Techniques to Forecast Global Horizontal Irradiance |
title_full |
Comparative Analysis of Neural Networks Techniques to Forecast Global Horizontal Irradiance |
title_fullStr |
Comparative Analysis of Neural Networks Techniques to Forecast Global Horizontal Irradiance |
title_full_unstemmed |
Comparative Analysis of Neural Networks Techniques to Forecast Global Horizontal Irradiance |
title_sort |
comparative analysis of neural networks techniques to forecast global horizontal irradiance |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2021-01-01 |
description |
Due to the continuous increasing importance of renewable energy sources as an alternative to fossil fuels, to contrast air pollution and global warming, the prediction of Global Horizontal Irradiation (GHI), one of the main parameters determining solar energy production of photovoltaic systems, represents an attractive topic nowadays. Solar irradiance is determined by deterministic factors (i.e. the position of the sun) and stochastic factors (i.e. the presence of clouds). Since the stochastic element is difficult to model, this problem can benefit from machine learning techniques, like artificial neural networks. This work proposes a methodology to forecast GHI in short- (i.e. from 15 min to 60 min) and mid-term (i.e. from 60 to 120 min) time horizons. For this purpose, we designed, optimised and compared four neural network architectures for time-series forecasting, respectively based on: i) Non-Linear Autoregressive, ii) Feed-Forward, iii) Long Short-Term Memory and iv) Echo State Network. The original data-set, consisting of GHI values sampled every 15min, has been pre-processed by applying different filtering techniques. Our results analysis compares the performance of the proposed neural networks identifying the best in terms of error rate and forecast horizon. This analysis highlights that the clear-sky index results the preferred filtering technique by giving greatly improvements in data-set pre-processing, and Echo State Network gives best accuracy results. |
topic |
Solar radiation forecast artificial neural networks LSTM ECHO photovoltaic system energy forecast |
url |
https://ieeexplore.ieee.org/document/9528372/ |
work_keys_str_mv |
AT alessandroaliberti comparativeanalysisofneuralnetworkstechniquestoforecastglobalhorizontalirradiance AT danielefucini comparativeanalysisofneuralnetworkstechniquestoforecastglobalhorizontalirradiance AT lorenzobottaccioli comparativeanalysisofneuralnetworkstechniquestoforecastglobalhorizontalirradiance AT enricomacii comparativeanalysisofneuralnetworkstechniquestoforecastglobalhorizontalirradiance AT andreaacquaviva comparativeanalysisofneuralnetworkstechniquestoforecastglobalhorizontalirradiance AT edoardopatti comparativeanalysisofneuralnetworkstechniquestoforecastglobalhorizontalirradiance |
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1717380197101076480 |