Title of article :
Detection and Classification of Stator Short-Circuit Faults in Three-Phase Induction Motor
Author/Authors :
abdullateef, ai university of ilorin - department of electrical and electronics engineering, Ilorin, Nigeria , fagbolagun, os university of ilorin - department of electrical and electronics engineering, Ilorin, Nigeria , sanusi, mf university of ilorin - department of electrical and electronics engineering, Ilorin, Nigeria , akorede, mf university of ilorin - department of electrical and electronics engineering, Ilorin, Nigeria , afolayan, ma university of ilorin - department of electrical and electronics engineering, Ilorin, Nigeria
From page :
417
To page :
424
Abstract :
Induction motors are the backbone of the industries because they are easy to operate, rugged, economical and reliable. However, they are subjected to stator’s faults which damage the windings and consequently lead to machine failure and loss of revenue. Early detection and classification of these faults are important for the effective operation of induction motors. Stators faults detection and classification based on wavelet Transform was carried out in this study. The feature extraction of the acquired data was achieved using lifting decomposition and reconstruction scheme while Euclidean distance of the Wavelet energy was used to classify the faults. The Wavelet energies increased for all three conditions monitored, normal condition, inter-turn fault and phase-to-phase fault, as the frequency band of the signal decreases from D_1 to A_3. The deviations in the Euclidean Distance of the current of the Wavelet energy obtained for the phase-to-phase faults are 99.1909, 99.8239 and 87.9750 for phases A and B, A and C, B and C respectively. While that of the inter-turn faults in phases A, B and C are 77.5572, 61.6389 and 62.5581 respectively. Based on the Euclidean distances of the faults, D_f and normal current signals, three classification points were set: K_1 = 0.60 x 102, K_2 = 0.80 x 10^2 and K_3 = 1.00 x 10^2. For K_2 ≥ D_f ≥ K_1 inter-turn faults is identified and for K_3 ≥ D_f ≥ K_2 phase to phase fault identified. This will improve the induction motors stator’s fault diagnosis.
Keywords :
induction motor , stator fault classification , data acquisition system , Discrete Wavelet Transform
Journal title :
Journal of Applied Sciences and Environmental Management
Journal title :
Journal of Applied Sciences and Environmental Management
Record number :
2728866
Link To Document :
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