k-NN based fault detection and classification methods for power transmission systems

被引:67
作者
Aida Asadi Majd
Haidar Samet
Teymoor Ghanbari
机构
[1] Shiraz University,School of Electrical and Computer Engineering
关键词
Short circuit faults; Fault detection; Fault classification; K nearest neighbor algorithm;
D O I
10.1186/s41601-017-0063-z
中图分类号
学科分类号
摘要
This paper deals with two new methods, based on k-NN algorithm, for fault detection and classification in distance protection. In these methods, by finding the distance between each sample and its fifth nearest neighbor in a pre-default window, the fault occurrence time and the faulty phases are determined. The maximum value of the distances in case of detection and classification procedures is compared with pre-defined threshold values. The main advantages of these methods are: simplicity, low calculation burden, acceptable accuracy, and speed. The performance of the proposed scheme is tested on a typical system in MATLAB Simulink. Various possible fault types in different fault resistances, fault inception angles, fault locations, short circuit levels, X/R ratios, source load angles are simulated. In addition, the performance of similar six well-known classification techniques is compared with the proposed classification method using plenty of simulation data.
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