Simulation Study on the Effect of Reduced Inputs of Artificial Neural Networks on the Predictive Performance of the Solar Energy System

In recent years, there has been a strong growth in solar power generation industries. The need for highly efficient and optimised solar thermal energy systems, stand-alone or grid connected photovoltaic systems, has substantially increased. This requires the development of efficient and reliable per...

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Main Authors: Wahiba Yaïci, Michela Longo, Evgueniy Entchev, Federica Foiadelli
Format: Article
Language:English
Published: MDPI AG 2017-08-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/9/8/1382
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spelling doaj-2b320767072a4e7d8882380d95dc6ae72020-11-24T21:28:03ZengMDPI AGSustainability2071-10502017-08-0198138210.3390/su9081382su9081382Simulation Study on the Effect of Reduced Inputs of Artificial Neural Networks on the Predictive Performance of the Solar Energy SystemWahiba Yaïci0Michela Longo1Evgueniy Entchev2Federica Foiadelli3CanmetENERGY Research Centre, Natural Resources Canada, 1 Haanel Drive, Ottawa, ON K1A 1M1, CanadaDepartment of Energy, Politecnico di Milano, Via La Masa, 34-20156 Milan (MI), ItalyCanmetENERGY Research Centre, Natural Resources Canada, 1 Haanel Drive, Ottawa, ON K1A 1M1, CanadaDepartment of Energy, Politecnico di Milano, Via La Masa, 34-20156 Milan (MI), ItalyIn recent years, there has been a strong growth in solar power generation industries. The need for highly efficient and optimised solar thermal energy systems, stand-alone or grid connected photovoltaic systems, has substantially increased. This requires the development of efficient and reliable performance prediction capabilities of solar heat and power production over the day. This contribution investigates the effect of the number of input variables on both the accuracy and the reliability of the artificial neural network (ANN) method for predicting the performance parameters of a solar energy system. This paper describes the ANN models and the optimisation process in detail for predicting performance. Comparison with experimental data from a solar energy system tested in Ottawa, Canada during two years under different weather conditions demonstrates the good prediction accuracy attainable with each of the models using reduced input variables. However, it is likely true that the degree of model accuracy would gradually decrease with reduced inputs. Overall, the results of this study demonstrate that the ANN technique is an effective approach for predicting the performance of highly non-linear energy systems. The suitability of the modelling approach using ANNs as a practical engineering tool in renewable energy system performance analysis and prediction is clearly demonstrated.https://www.mdpi.com/2071-1050/9/8/1382artificial neural networkssolar energy systemperformancemodellingprediction
collection DOAJ
language English
format Article
sources DOAJ
author Wahiba Yaïci
Michela Longo
Evgueniy Entchev
Federica Foiadelli
spellingShingle Wahiba Yaïci
Michela Longo
Evgueniy Entchev
Federica Foiadelli
Simulation Study on the Effect of Reduced Inputs of Artificial Neural Networks on the Predictive Performance of the Solar Energy System
Sustainability
artificial neural networks
solar energy system
performance
modelling
prediction
author_facet Wahiba Yaïci
Michela Longo
Evgueniy Entchev
Federica Foiadelli
author_sort Wahiba Yaïci
title Simulation Study on the Effect of Reduced Inputs of Artificial Neural Networks on the Predictive Performance of the Solar Energy System
title_short Simulation Study on the Effect of Reduced Inputs of Artificial Neural Networks on the Predictive Performance of the Solar Energy System
title_full Simulation Study on the Effect of Reduced Inputs of Artificial Neural Networks on the Predictive Performance of the Solar Energy System
title_fullStr Simulation Study on the Effect of Reduced Inputs of Artificial Neural Networks on the Predictive Performance of the Solar Energy System
title_full_unstemmed Simulation Study on the Effect of Reduced Inputs of Artificial Neural Networks on the Predictive Performance of the Solar Energy System
title_sort simulation study on the effect of reduced inputs of artificial neural networks on the predictive performance of the solar energy system
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2017-08-01
description In recent years, there has been a strong growth in solar power generation industries. The need for highly efficient and optimised solar thermal energy systems, stand-alone or grid connected photovoltaic systems, has substantially increased. This requires the development of efficient and reliable performance prediction capabilities of solar heat and power production over the day. This contribution investigates the effect of the number of input variables on both the accuracy and the reliability of the artificial neural network (ANN) method for predicting the performance parameters of a solar energy system. This paper describes the ANN models and the optimisation process in detail for predicting performance. Comparison with experimental data from a solar energy system tested in Ottawa, Canada during two years under different weather conditions demonstrates the good prediction accuracy attainable with each of the models using reduced input variables. However, it is likely true that the degree of model accuracy would gradually decrease with reduced inputs. Overall, the results of this study demonstrate that the ANN technique is an effective approach for predicting the performance of highly non-linear energy systems. The suitability of the modelling approach using ANNs as a practical engineering tool in renewable energy system performance analysis and prediction is clearly demonstrated.
topic artificial neural networks
solar energy system
performance
modelling
prediction
url https://www.mdpi.com/2071-1050/9/8/1382
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