
Wind turbines anomaly detection based on power curves and ensemble learning
Author(s) -
Moreno Sinvaldo R.,
Coelho Leandro dos Santos,
Ayala Helon V.H.,
Mariani Viviana Cocco
Publication year - 2020
Publication title -
iet renewable power generation
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.005
H-Index - 76
eISSN - 1752-1424
pISSN - 1752-1416
DOI - 10.1049/iet-rpg.2020.0224
Subject(s) - turbine , wind power , anomaly detection , computer science , renewable energy , context (archaeology) , ensemble learning , classifier (uml) , artificial intelligence , machine learning , reliability engineering , engineering , electrical engineering , aerospace engineering , paleontology , biology
Wind farms are increasingly important nowadays since in some countries can surpass conventional power sources. However, in countries where the exploration of this renewable source started recently, the lack of knowledge related to maintenance routines and efficient operation has led to fast performance degradation. In this context, wind turbine condition monitoring can detect anomalies in its performance as an unexpected failure, avoiding financial loss. In this study, machine learning approaches are applied as an online tool to detect abnormal wind turbine operation modes, evaluating the wind turbine operation in all regions of the power curve. The methodology has been validated with an original and real dataset collected from a large‐scale onshore wind turbine in Northeast Brazil. The results exhibit an expressive reduction of energy loss and indicate the ability of the proposed approach to assessing the abnormal modes even when a small number of recorded data are available. The standard classifiers reached on average 98.64% accuracy in the holdout data set. Additionally, an ensemble of classifiers is proposed which helped to improve in 12% the accuracy of the best classifier alone, increasing the confidence of alarms raised by the predictive maintenance tool.