Energy, economic and environmental performance simulation of a hybrid renewable microgeneration system with neural network predictive control
The use of artificial neural networks (ANNs) in various applications has grown significantly over the years. This paper compares an ANN based approach with a conventional on-off control applied to the operation of a ground source heat pump/photovoltaic thermal system serving a single house located i...
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doaj-88107841e15b4a0fb4ccf3b0cce2d2502021-06-02T08:08:34ZengElsevierAlexandria Engineering Journal1110-01682018-03-01571455473Energy, economic and environmental performance simulation of a hybrid renewable microgeneration system with neural network predictive controlEvgueniy Entchev0Libing Yang1Mohamed Ghorab2Antonio Rosato3Sergio Sibilio4Natural Resources Canada, CanmetENERGY, 1 Haanel Drive, Ottawa, ON K1A 1M1, CanadaNatural Resources Canada, CanmetENERGY, 1 Haanel Drive, Ottawa, ON K1A 1M1, CanadaNatural Resources Canada, CanmetENERGY, 1 Haanel Drive, Ottawa, ON K1A 1M1, CanadaSecond University of Naples, Department of Architecture and Industrial Design “Luigi Vanvitelli”, via San Lorenzo, 81031 Aversa, CE, Italy; Corresponding author. Fax: +39 081 5010845.Second University of Naples, Department of Architecture and Industrial Design “Luigi Vanvitelli”, via San Lorenzo, 81031 Aversa, CE, ItalyThe use of artificial neural networks (ANNs) in various applications has grown significantly over the years. This paper compares an ANN based approach with a conventional on-off control applied to the operation of a ground source heat pump/photovoltaic thermal system serving a single house located in Ottawa (Canada) for heating and cooling purposes. The hybrid renewable microgeneration system was investigated using the dynamic simulation software TRNSYS. A controller for predicting the future room temperature was developed in the MATLAB environment and six ANN control logics were analyzed.The comparison was performed in terms of ability to maintain the desired indoor comfort levels, primary energy consumption, operating costs and carbon dioxide equivalent emissions during a week of the heating period and a week of the cooling period. The results showed that the ANN approach is potentially able to alleviate the intensity of thermal discomfort associated with overheating/overcooling phenomena, but it could cause an increase in unmet comfort hours. The analysis also highlighted that the ANNs based strategies could reduce the primary energy consumption (up to around 36%), the operating costs (up to around 81%) as well as the carbon dioxide equivalent emissions (up to around 36%). Keywords: Hybrid microgeneration system, Ground source heat pump, Photovoltaic thermal, Artificial neural network, Predictive control, Energy savinghttp://www.sciencedirect.com/science/article/pii/S1110016816302472 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Evgueniy Entchev Libing Yang Mohamed Ghorab Antonio Rosato Sergio Sibilio |
spellingShingle |
Evgueniy Entchev Libing Yang Mohamed Ghorab Antonio Rosato Sergio Sibilio Energy, economic and environmental performance simulation of a hybrid renewable microgeneration system with neural network predictive control Alexandria Engineering Journal |
author_facet |
Evgueniy Entchev Libing Yang Mohamed Ghorab Antonio Rosato Sergio Sibilio |
author_sort |
Evgueniy Entchev |
title |
Energy, economic and environmental performance simulation of a hybrid renewable microgeneration system with neural network predictive control |
title_short |
Energy, economic and environmental performance simulation of a hybrid renewable microgeneration system with neural network predictive control |
title_full |
Energy, economic and environmental performance simulation of a hybrid renewable microgeneration system with neural network predictive control |
title_fullStr |
Energy, economic and environmental performance simulation of a hybrid renewable microgeneration system with neural network predictive control |
title_full_unstemmed |
Energy, economic and environmental performance simulation of a hybrid renewable microgeneration system with neural network predictive control |
title_sort |
energy, economic and environmental performance simulation of a hybrid renewable microgeneration system with neural network predictive control |
publisher |
Elsevier |
series |
Alexandria Engineering Journal |
issn |
1110-0168 |
publishDate |
2018-03-01 |
description |
The use of artificial neural networks (ANNs) in various applications has grown significantly over the years. This paper compares an ANN based approach with a conventional on-off control applied to the operation of a ground source heat pump/photovoltaic thermal system serving a single house located in Ottawa (Canada) for heating and cooling purposes. The hybrid renewable microgeneration system was investigated using the dynamic simulation software TRNSYS. A controller for predicting the future room temperature was developed in the MATLAB environment and six ANN control logics were analyzed.The comparison was performed in terms of ability to maintain the desired indoor comfort levels, primary energy consumption, operating costs and carbon dioxide equivalent emissions during a week of the heating period and a week of the cooling period. The results showed that the ANN approach is potentially able to alleviate the intensity of thermal discomfort associated with overheating/overcooling phenomena, but it could cause an increase in unmet comfort hours. The analysis also highlighted that the ANNs based strategies could reduce the primary energy consumption (up to around 36%), the operating costs (up to around 81%) as well as the carbon dioxide equivalent emissions (up to around 36%). Keywords: Hybrid microgeneration system, Ground source heat pump, Photovoltaic thermal, Artificial neural network, Predictive control, Energy saving |
url |
http://www.sciencedirect.com/science/article/pii/S1110016816302472 |
work_keys_str_mv |
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