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  • Dicle Üniversitesi Mühendislik Fakültesi Dergisi
  • Volume:13 Issue:2
  • Using Machine Learning Algorithms For Classifying Transmission Line Faults

Using Machine Learning Algorithms For Classifying Transmission Line Faults

Authors : Tuba TANYILDIZI AĞIR
Pages : 227-234
Doi:10.24012/dumf.1096691
View : 27 | Download : 15
Publication Date : 2022-06-28
Article Type : Research Paper
Abstract :The faults in transmission lines should be identified for attaining high quality energy in electrical power systems. Savings can be made in both time and energy if the transmission line faults are classified accurately. The present study examined phase-ground, phase-phase-ground, phase-phase, phase-phase-phase and no fault cases. Support Vector Machine (SVM), K-Nearest Neighbours Algorithm (KNN), Decision Tree (DT), Ensemble, Linear discriminant analysis (LDA) classifiers were used for classifying the transmission line faults. These algorithms were compared with regard to parameters such as accuracy, error rate, prediction speed and training time. The accuracy and minimum error of SVM and KNN classifiers were 99.7 % and 0.0011 respectively. DT classifier is faster than the other classifiers with a predicted speed of 29000 obs/sec. Whereas LDA had the shortest training time of 0.76992 sec. The results have indicated that SVM, KNN classifiers have similar performances. In addition, the classifiers SVM, KNN acquired minimum error with the highest accuracy compared with the other classifiers. While DT has the highest estimation speed, LDA has the shortest training time.
Keywords : support vector machine, k nearest neighbors algorithm, decision tree, transmission line faults, ensemble, linear discriminant analysis

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