Affiliation:
1. Department of Electrical and Electronics Engineering, National Institute of Technology Karnataka, Surathkal, Mangalore, India
2. Central Power Research Institute, Bangalore, Karnataka, India
Abstract
Signal processing helps monitor the condition of power equipment. Partial
discharge (PD) signals used in condition-based maintenance give crucial
information in the diagnosis of degradation of insulation. The acoustic
emission technique (AET) is one of the most widely used techniques in PD
signal analysis due to its inherent advantages. Analyzing acoustic emission
partial discharge (AEPD) signals in the wavelet-domain provides critical
insights into the location and type of the sources of PD. Selection of the
most suitable mother wavelet in applying discrete wavelet transform (DWT) on
AEPD signals is important as it will directly impact the outcome. For this
selection, 36 wavelets belonging to the Daubechies, Symlets, Coiflets, and
Bi-orthogonal families are investigated. For this purpose, five
experimentally collected AEPD test signals are used. The selection is based
on the ?accuracy of wavelet decomposition results? in this work, probably
for the first time. One mother wavelet from each family is individually
shortlisted for all three performances, namely (a) reconstruction, (b)
denoising, and (c) compression, by computing and comparing their commonly
used metrics. Further, based on percentage energy criteria, the most
suitable mother wavelets are identified as coif3, coif4, and coif5,
respectively, for the three performances.
Publisher
National Library of Serbia