Neural Network Ensemble Based Approach for 2D-Interval Prediction of Solar Photovoltaic Power
Solar energy generated from PhotoVoltaic (PV) systems is one of the most promising types of renewable energy. However, it is highly variable as it depends on the solar irradiance and other meteorological factors. This variability creates difficulties for the large-scale integration of PV power in th...
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doaj-5011af4e807546edbfe68e6fb0f42a182020-11-24T23:10:32ZengMDPI AGEnergies1996-10732016-10-0191082910.3390/en9100829en9100829Neural Network Ensemble Based Approach for 2D-Interval Prediction of Solar Photovoltaic PowerMashud Rana0Irena Koprinska1Centre for Translational Data Science, University of Sydney, Sydney, NSW 2006, AustraliaSchool of Information Technologies, University of Sydney, Sydney, NSW 2006, AustraliaSolar energy generated from PhotoVoltaic (PV) systems is one of the most promising types of renewable energy. However, it is highly variable as it depends on the solar irradiance and other meteorological factors. This variability creates difficulties for the large-scale integration of PV power in the electricity grid and requires accurate forecasting of the electricity generated by PV systems. In this paper we consider 2D-interval forecasts, where the goal is to predict summary statistics for the distribution of the PV power values in a future time interval. 2D-interval forecasts have been recently introduced, and they are more suitable than point forecasts for applications where the predicted variable has a high variability. We propose a method called NNE2D that combines variable selection based on mutual information and an ensemble of neural networks, to compute 2D-interval forecasts, where the two interval boundaries are expressed in terms of percentiles. NNE2D was evaluated for univariate prediction of Australian solar PV power data for two years. The results show that it is a promising method, outperforming persistence baselines and other methods used for comparison in terms of accuracy and coverage probability.http://www.mdpi.com/1996-1073/9/10/829solar power predictioninterval forecasts2D-interval forecastsensembles of neural networksmutual informationsupport vector regression |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mashud Rana Irena Koprinska |
spellingShingle |
Mashud Rana Irena Koprinska Neural Network Ensemble Based Approach for 2D-Interval Prediction of Solar Photovoltaic Power Energies solar power prediction interval forecasts 2D-interval forecasts ensembles of neural networks mutual information support vector regression |
author_facet |
Mashud Rana Irena Koprinska |
author_sort |
Mashud Rana |
title |
Neural Network Ensemble Based Approach for 2D-Interval Prediction of Solar Photovoltaic Power |
title_short |
Neural Network Ensemble Based Approach for 2D-Interval Prediction of Solar Photovoltaic Power |
title_full |
Neural Network Ensemble Based Approach for 2D-Interval Prediction of Solar Photovoltaic Power |
title_fullStr |
Neural Network Ensemble Based Approach for 2D-Interval Prediction of Solar Photovoltaic Power |
title_full_unstemmed |
Neural Network Ensemble Based Approach for 2D-Interval Prediction of Solar Photovoltaic Power |
title_sort |
neural network ensemble based approach for 2d-interval prediction of solar photovoltaic power |
publisher |
MDPI AG |
series |
Energies |
issn |
1996-1073 |
publishDate |
2016-10-01 |
description |
Solar energy generated from PhotoVoltaic (PV) systems is one of the most promising types of renewable energy. However, it is highly variable as it depends on the solar irradiance and other meteorological factors. This variability creates difficulties for the large-scale integration of PV power in the electricity grid and requires accurate forecasting of the electricity generated by PV systems. In this paper we consider 2D-interval forecasts, where the goal is to predict summary statistics for the distribution of the PV power values in a future time interval. 2D-interval forecasts have been recently introduced, and they are more suitable than point forecasts for applications where the predicted variable has a high variability. We propose a method called NNE2D that combines variable selection based on mutual information and an ensemble of neural networks, to compute 2D-interval forecasts, where the two interval boundaries are expressed in terms of percentiles. NNE2D was evaluated for univariate prediction of Australian solar PV power data for two years. The results show that it is a promising method, outperforming persistence baselines and other methods used for comparison in terms of accuracy and coverage probability. |
topic |
solar power prediction interval forecasts 2D-interval forecasts ensembles of neural networks mutual information support vector regression |
url |
http://www.mdpi.com/1996-1073/9/10/829 |
work_keys_str_mv |
AT mashudrana neuralnetworkensemblebasedapproachfor2dintervalpredictionofsolarphotovoltaicpower AT irenakoprinska neuralnetworkensemblebasedapproachfor2dintervalpredictionofsolarphotovoltaicpower |
_version_ |
1725606701260865536 |