Show simple item record

dc.contributor.authorAli, Waqar
dc.contributor.authorEl-Thalji, Idriss
dc.contributor.authorGiljarhus, Knut Erik Teigen
dc.contributor.authorDelimitis, Andreas
dc.date.accessioned2025-01-07T13:06:57Z
dc.date.available2025-01-07T13:06:57Z
dc.date.created2024-12-19T10:32:05Z
dc.date.issued2024
dc.identifier.citationAli, W., El-Thalji, I., Giljarhus, K. E. T., & Delimitis, A. (2024). Classification Analytics for Wind Turbine Blade Faults: Integrated Signal Analysis and Machine Learning Approach. Energies, 17(23), 5856.en_US
dc.identifier.issn1996-1073
dc.identifier.urihttps://hdl.handle.net/11250/3171381
dc.description.abstractWind turbine blades are critical components of wind energy systems, and their structural health is essential for reliable operation and maintenance. Several studies have used time-domain and frequency-domain features alongside machine learning techniques to predict faults in wind turbine blades, such as erosion and cracks. However, a key gap remains in integrating these methods into a unified framework for fault prediction, which could offer a more comprehensive solution for diagnosing faults. This paper presents an approach to classify faults in wind turbine blades by leveraging well-known signals and analysis with machine learning techniques. The methodology involves a detailed feature engineering process that extracts and analyzes features from the time and frequency domains. Open-source vibration data collected from an experimental setup (where a small wind turbine with an artificially eroded and cracked blade was tested) were utilized. The time- and frequency-domain features were extracted and analyzed using various machine learning algorithms. It was found that erosion and crack faults have unique time- and frequency-domain features. The crack fault introduces an amplitude modulation in the vibration time wave, which produces sidebands around the fundamental frequency in the frequency domain. However, erosion fault introduces asymmetricity and flatness to the vibration time wave, which produces harmonics in the frequency-domain plot. The results also highlighted that utilizing both time- and frequency-fault features enhances the performance of the machine learning algorithms. This study further illustrates that even though some machine learning algorithms provide similar high classification accuracy, they might differ in quantifying error Types I, II, and, III, which is extremely important for maintenance engineers, as it might lead to undetected fault events and false alarm events.en_US
dc.language.isoengen_US
dc.publisherMDPIen_US
dc.rightsNavngivelse 4.0 Internasjonal*
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/deed.no*
dc.subjectenergien_US
dc.subjectvindturbineren_US
dc.subjectmaskinlæringen_US
dc.titleClassification Analytics for Wind Turbine Blade Faults: Integrated Signal Analysis and Machine Learning Approachen_US
dc.typePeer revieweden_US
dc.typeJournal articleen_US
dc.description.versionpublishedVersionen_US
dc.rights.holder© 2024 by the authorsen_US
dc.subject.nsiVDP::Teknologi: 500en_US
dc.source.volume17en_US
dc.source.journalEnergiesen_US
dc.source.issue23en_US
dc.identifier.doi10.3390/en17235856
dc.identifier.cristin2332440
dc.source.articlenumber5856en_US
cristin.ispublishedtrue
cristin.fulltextoriginal
cristin.qualitycode1


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record

Navngivelse 4.0 Internasjonal
Except where otherwise noted, this item's license is described as Navngivelse 4.0 Internasjonal