Title :
A machine learning-based faulty line identification for smart distribution network
Author :
Livani, Hanif ; Evrenosoglu, Cansin Yaman ; Centeno, Virgilio A.
Author_Institution :
Electr. & Comput. Eng. Dept., Virginia Tech, Blacksburg, VA, USA
Abstract :
This paper presents a machine learning-based faulty-line identification method in smart distribution networks. The proposed method utilizes postfault root-mean-square (rms) values of voltages measured at the main substation and at selected nodes as well as fault information obtained by fault current identifiers (FCIs) and intelligent electronic re-closers (IE-CRs). The information from FCIs and IE-RCs are first used to identify the faulty region in the network. The normalized rms values of voltages are then utilized as the input to the support vector machine (SVM) classifiers to identify the faulty-line according to the pre-determined fault type. The IEEE 123-node distribution test system is simulated in ATP software. MATLAB is used to process the simulated transients and to apply the proposed method. The performance of the method is tested for different fault inception angles (FIA) and different fault resistances with satisfactory results.
Keywords :
fault currents; fault diagnosis; learning (artificial intelligence); pattern classification; power distribution faults; power engineering computing; substations; support vector machines; ATP software; FCIs; FIA; IE-CRs; IEEE 123-node distribution test system; Matlab; SVM classifiers; fault current identifiers; fault inception angles; fault information; fault resistances; intelligent electronic reclosers; machine learning-based faulty line identification method; normalized RMS values; postfault root-mean-square; smart distribution network; substation; support vector machine; Accuracy; Fault location; Kernel; Substations; Support vector machines; Voltage measurement; Distribution network; SVM; faulty line; smart grid;
Conference_Titel :
North American Power Symposium (NAPS), 2013
Conference_Location :
Manhattan, KS
DOI :
10.1109/NAPS.2013.6666829