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dc.contributor.authorMohammadi, Younespt_BR
dc.contributor.authorPolajžer, Boštjanpt_BR
dc.contributor.authorLeborgne, Roberto Chouhypt_BR
dc.contributor.authorKhodadad, Davoodpt_BR
dc.date.accessioned2024-04-12T06:21:31Zpt_BR
dc.date.issued2024pt_BR
dc.identifier.issn0952-1976pt_BR
dc.identifier.urihttp://hdl.handle.net/10183/274735pt_BR
dc.description.abstractThe paper investigates the application of machine learning (ML) for voltage sag source localization (VSSL) in electrical power systems. To overcome feature-selection challenges for traditional ML methods and provide more meaningful sequential features for deep learning methods, the paper proposes three time-sample-based feature forms, and evaluates an existing feature form. The effectiveness of these feature forms is assessed using k-means clustering with k = 2 referred to as downstream and upstream classes, according to the direction of voltage sag origins. Through extensive voltage sag simulations, including noises in a regional electrical power network, k-means identifies a sequence involving the multiplication of positive-sequence current magnitude with the sine of its angle as the most prominent feature form. The study develops further traditional ML methods such as decision trees (DT), support vector machine (SVM), random forest (RF), k-nearest neighbor (KNN), an ensemble learning (EL), and a designed one-dimensional convolutional neural network (1D-CNN). The results found that the combination of 1D-CNN or SVM with the most prominent feature achieved the highest accuracies of 99.37% and 99.13%, respectively, with acceptable/fast prediction times, enhancing VSSL. The exceptional performance of the CNN was also approved by field measurements in a real power network. However, selecting the best ML methods for deployment requires a trade-off between accuracy and real-time implementation requirements. The research findings benefit network operators, large factory owners, and renewable energy park producers. They enable preventive maintenance, reduce equipment downtime/damage in industry and electrical power systems, mitigate financial losses, and facilitate the assignment of power-quality penalties to responsible parties.en
dc.format.mimetypeapplication/pdfpt_BR
dc.language.isoengpt_BR
dc.relation.ispartofEngineering applications of artificial intelligence. Amsterdam : Elsevier, 2019. Vol. 133, part D (July 2024), art. 108331, p. 1-29pt_BR
dc.rightsOpen Accessen
dc.subjectAfundamento de tensãopt_BR
dc.subjectVoltage sag (dip)en
dc.subjectSource localizationen
dc.subjectSistema elétrico de potência : Controlept_BR
dc.subjectSupervised and unsupervised learningen
dc.subjectAprendizado de máquinapt_BR
dc.subjectConvolutional neural networken
dc.subjectTime-sample-based featuresen
dc.titleMost influential feature form for supervised learning in voltage sag source localizationpt_BR
dc.typeArtigo de periódicopt_BR
dc.identifier.nrb001200379pt_BR
dc.type.originEstrangeiropt_BR


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