Title :
Digital detection and fuzzy classification of partial discharge signals
Author :
Contin, A. ; Cavallini, A. ; Montanari, G.C. ; Pasini, G. ; Puletti, F.
Author_Institution :
Trieste Univ., Italy
fDate :
6/1/2002 12:00:00 AM
Abstract :
This paper deals with digital acquisition, classification and analysis of the stochastic features of random pulse signals generated by partial discharge (PD) phenomena. Focus is made on a new measuring system for the digital acquisition of PD-pulse signals, which operates at a sampling rate high enough to avoid the frequency aliasing, but that provides an amount of PD pulses which enables PD stochastic analysis. A separation and classification method, based on a fuzzy classifier, is developed for the analysis of the acquired PD-pulse shape signals. The result of the fuzzy classification is a cluster of signals homogeneous in terms of stochastic features of PD pulses. The classification efficiency is evaluated resorting to the PD-pulse height and phase distributions analysis. The instrumentation, and the associated classification methodology, are applied to measure and analyze PD data recorded for mica-insulated stator bars and coils, where typical defects, occurring during normal operations, were simulated. It is shown that the proposed procedure enables PD-source identification to solve the identification problems which arise, in particular, when different sources of PD are simultaneously active. In addition fuzzy classification provides an efficient noise-rejection tool
Keywords :
Weibull distribution; computerised instrumentation; convolution; data acquisition; digital storage oscilloscopes; feature extraction; fuzzy set theory; gradient methods; maximum likelihood detection; maximum likelihood estimation; normal distribution; partial discharge measurement; signal classification; signal sampling; PD measuring system; PD-pulse height; Weibull function; convolution; corona suppressing system; digital acquisition; digital detection; fast sampling rate; feature extractor function; fuzzy classification; gradient-based techniques; maximum likelihood classifiers; normal distributions; oscilloscope; partial discharge signals; random pulse signals; stator bars; stochastic features; triggerable partitioned on-line memory-buffer; Frequency measurement; Partial discharge measurement; Partial discharges; Pulse generation; Pulse measurements; Sampling methods; Signal analysis; Signal generators; Stochastic processes; Stochastic systems;
Journal_Title :
Dielectrics and Electrical Insulation, IEEE Transactions on
DOI :
10.1109/TDEI.2002.1007695