Yıl: 2016 Cilt: 24 Sayı: 3 Sayfa Aralığı: 1901 - 1915 Metin Dili: İngilizce İndeks Tarihi: 29-07-2022

Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach

Öz:
: The majority of power system faults occur in transmission lines. The classification of these faults in power systems is an important issue. In this paper, the real parameters of a 28 km, 154 kV transmission line between Simav and Demirci in Turkey s electricity transmission network is simulated in MATLAB/Simulink. Wavelet packet transform (WPT) is applied to instantaneous voltage signals. Instantaneous active power components are obtained by multiplying instantaneous currents obtained from a voltage source side with these WPT-based voltage signal components. A new feature vector extraction scheme is employed by calculating the energies of instantaneous active power components. Constructed feature vectors are treated with a classifier for short-circuit faults that occurred in high-voltage energy transmission lines; this is known as the common vector approach (CVA). This is the first implementation of CVA in the classification of short-circuit faults that occurred in high-voltage energy transmission lines. Furthermore, the same feature vector is applied to a support vector machine and artificial neural network for a comparison with the CVA method regarding classification performance and testing duration issues. Additionally, a graphical user interface is designed in MATLAB/GUI. Various noise levels, source frequencies, fault distances, fault inception angles, and fault exposure durations can be investigated with this interface. Classification of short-circuit faults in high-voltage transmission line is achieved by using an offline monitoring methodology. It is concluded that a combination of the proposed feature extraction scheme with the CVA classifier gives substantially high performance for the classification of short circuit faults in transmission line.
Anahtar Kelime:

Konular: Mühendislik, Elektrik ve Elektronik
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA YUMURTACI M, GÖKMEN G, KOCAMAN Ç, Ergin S, KILIÇ O (2016). Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. , 1901 - 1915.
Chicago YUMURTACI Mehmet,GÖKMEN GÖKHAN,KOCAMAN Çağrı,Ergin Semih,KILIÇ Osman Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. (2016): 1901 - 1915.
MLA YUMURTACI Mehmet,GÖKMEN GÖKHAN,KOCAMAN Çağrı,Ergin Semih,KILIÇ Osman Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. , 2016, ss.1901 - 1915.
AMA YUMURTACI M,GÖKMEN G,KOCAMAN Ç,Ergin S,KILIÇ O Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. . 2016; 1901 - 1915.
Vancouver YUMURTACI M,GÖKMEN G,KOCAMAN Ç,Ergin S,KILIÇ O Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. . 2016; 1901 - 1915.
IEEE YUMURTACI M,GÖKMEN G,KOCAMAN Ç,Ergin S,KILIÇ O "Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach." , ss.1901 - 1915, 2016.
ISNAD YUMURTACI, Mehmet vd. "Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach". (2016), 1901-1915.
APA YUMURTACI M, GÖKMEN G, KOCAMAN Ç, Ergin S, KILIÇ O (2016). Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. Turkish Journal of Electrical Engineering and Computer Sciences, 24(3), 1901 - 1915.
Chicago YUMURTACI Mehmet,GÖKMEN GÖKHAN,KOCAMAN Çağrı,Ergin Semih,KILIÇ Osman Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. Turkish Journal of Electrical Engineering and Computer Sciences 24, no.3 (2016): 1901 - 1915.
MLA YUMURTACI Mehmet,GÖKMEN GÖKHAN,KOCAMAN Çağrı,Ergin Semih,KILIÇ Osman Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. Turkish Journal of Electrical Engineering and Computer Sciences, vol.24, no.3, 2016, ss.1901 - 1915.
AMA YUMURTACI M,GÖKMEN G,KOCAMAN Ç,Ergin S,KILIÇ O Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. Turkish Journal of Electrical Engineering and Computer Sciences. 2016; 24(3): 1901 - 1915.
Vancouver YUMURTACI M,GÖKMEN G,KOCAMAN Ç,Ergin S,KILIÇ O Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach. Turkish Journal of Electrical Engineering and Computer Sciences. 2016; 24(3): 1901 - 1915.
IEEE YUMURTACI M,GÖKMEN G,KOCAMAN Ç,Ergin S,KILIÇ O "Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach." Turkish Journal of Electrical Engineering and Computer Sciences, 24, ss.1901 - 1915, 2016.
ISNAD YUMURTACI, Mehmet vd. "Classification of short-circuit faults in high-voltage energy transmission line using energy of instantaneous active power components-based common vector approach". Turkish Journal of Electrical Engineering and Computer Sciences 24/3 (2016), 1901-1915.