Method of monitoring and detection of failures in PV system based on machine learning

Authors

DOI:

https://doi.org/10.17533/udea.redin.20200694

Keywords:

artificial intelligence, renewable energy sources, monitoring

Abstract

Machine learning methods have been used to solve complicated practical problems in different areas and are becoming increasingly popular today. The purpose of this article is to evaluate the prediction of the energy production of three different photovoltaic systems and the supervision of measurement sensors, through Machine learning and data mining in response to the behavior of the climatic variables of the place under study. On the other hand, it also includes the implementation of the resulting models in the SCADA system through indicators, which will allow the operator to actively manage the electricity grid. It also offers a strategy in simulation and prediction in real-time of photovoltaic systems and measurement sensors in the concept of smart grids.

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Author Biographies

Darío Javier Benavides, University of Málaga

Msc, University of Málaga.

Paul Arévalo-Cordero, University of Cuenca

MsC. University of Jaén, Linares Scientific-Technological Campus and University of Cuenca, Balzay Technological Campus.

Luis G. González, University of Cuenca

PhD. University of Cuenca, Balzay Technological Campus.

Luis Hernández-Callejo, University of Valladolid

PhD., Professor, Campus de la Universidad de Soria, University of Valladolid.

Francisco Jurado, University of Jaén

PhD. University of Jaén. Linares Scientific-Technological Campus.

José A. Aguado, University of Málaga

PhD. University of Málaga.

References

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Published

2021-08-17

How to Cite

Benavides, D. J., Arévalo-Cordero, P., González, L. G., Hernández-Callejo, L., Jurado, F., & Aguado, J. A. (2021). Method of monitoring and detection of failures in PV system based on machine learning. Revista Facultad De Ingeniería Universidad De Antioquia, (102), 26–43. https://doi.org/10.17533/udea.redin.20200694

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