Wind energy has shown significant growth in terms of installed power in the last decade. However, one of the most critical problems for a wind farm is represented by Operation and Maintenance (O&M) costs, which can represent 20-30% of the total costs related to power generation. Various monitoring methodologies targeted to the identification of faults, such as vibration analysis or analysis of oils, are often used. However, they have the main disadvantage of involving additional costs as they usually entail the installation of other sensors to provide real-time control of the system. In this paper, we propose a methodology based on machine learning techniques using data from SCADA systems (Supervisory Control and Data Acquisition). Since these systems are generally already implemented on most wind turbines, they provide a large amount of data without requiring extra sensors. In particular, we developed models using Artificial Neural Networks (ANN) to characterize the behavior of some of the main components of the wind turbine, such as gearbox and generator, and predict operating anomalies. The proposed method is tested on real wind turbines in Italy to verify its effectiveness and applicability, and it was demonstrated to be able to provide significant help for the maintenance of a wind farm.

Santolamazza, A., Dadi, D., Introna, V. (2021). A data-mining approach for wind turbine fault detection based on scada data analysis using artificial neural networks. ENERGIES, 14(7), 1845 [10.3390/en14071845].

A data-mining approach for wind turbine fault detection based on scada data analysis using artificial neural networks

Santolamazza A.;Introna V.
2021-01-01

Abstract

Wind energy has shown significant growth in terms of installed power in the last decade. However, one of the most critical problems for a wind farm is represented by Operation and Maintenance (O&M) costs, which can represent 20-30% of the total costs related to power generation. Various monitoring methodologies targeted to the identification of faults, such as vibration analysis or analysis of oils, are often used. However, they have the main disadvantage of involving additional costs as they usually entail the installation of other sensors to provide real-time control of the system. In this paper, we propose a methodology based on machine learning techniques using data from SCADA systems (Supervisory Control and Data Acquisition). Since these systems are generally already implemented on most wind turbines, they provide a large amount of data without requiring extra sensors. In particular, we developed models using Artificial Neural Networks (ANN) to characterize the behavior of some of the main components of the wind turbine, such as gearbox and generator, and predict operating anomalies. The proposed method is tested on real wind turbines in Italy to verify its effectiveness and applicability, and it was demonstrated to be able to provide significant help for the maintenance of a wind farm.
2021
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ING-IND/17 - IMPIANTI INDUSTRIALI MECCANICI
English
condition monitoring
fault detection
wind turbine
artificial neural networks
predictive maintenance
gearbox
generator
https://www.mdpi.com/1996-1073/14/7/1845
Santolamazza, A., Dadi, D., Introna, V. (2021). A data-mining approach for wind turbine fault detection based on scada data analysis using artificial neural networks. ENERGIES, 14(7), 1845 [10.3390/en14071845].
Santolamazza, A; Dadi, D; Introna, V
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/278097
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