[1991] Proceedings of the 3rd International Conference on Properties and Applications of Dielectric Materials
DOI: 10.1109/icpadm.1991.172349
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Recognition of discharge sources using statistical tools

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Cited by 27 publications
(32 citation statements)
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“…Both formats of feature vector were presented to the SOM for classification. The cluster landscapes formed using the smaller set of features were able to separate the various defects from each other with a comparable accuracy to those formed with the features more traditionally used in representing partial discharge [16].…”
Section: A Retraining Classifiersmentioning
confidence: 81%
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“…Both formats of feature vector were presented to the SOM for classification. The cluster landscapes formed using the smaller set of features were able to separate the various defects from each other with a comparable accuracy to those formed with the features more traditionally used in representing partial discharge [16].…”
Section: A Retraining Classifiersmentioning
confidence: 81%
“…The Data Formatting Agent then passes this to the Feature Extraction Agent, which calculates 101 features of the data. These include basic, deduced, and statistical features which have been shown to relate to the type of the causing defect [16].…”
Section: A the Diagnostic Agentsmentioning
confidence: 99%
“…Once fixed the j-th wavelet, the three performance parameters (pec, pcc, pce) defined above were calculated for each of the 45 training waveforms in T , resulting in a set of M = 45 × 3 = 135 variables that describe the ability of the single wavelet to reproduce a partial discharge signal. Such a set of parameters can be named as Performance Fingerprint (PF ), so recalling a term which is well known in PD recognition and classification [23,24]. In the next paragraph PF will be used as a discrimination tool among the wavelets.…”
Section: Computation Of Performance Parametersmentioning
confidence: 99%
“…Examples of this technique are the distance classifiers, e.g., the minimum distance classifier [13]. (2) In statistical approach, each pattern is characterized by some measured features and represented as a point in multi-dimensional space [14]. The objective of this second technique is to choose those features that allow pattern fingerprints belonging to various categories to occupy separate regions in a multi-dimensional feature space.…”
Section: Introductionmentioning
confidence: 99%
“…Over the years, partial discharge (PD) recognition has been a topic of interest for a number of reasons, in particular the need to distinguish between different PD fault sources within the insulation systems of power apparatus and discriminate them from extraneous interference events considered as noise [1][2][3][4][5]. PDs are the electrical discharges that occur within or outside the insulation of a high-voltage (HV) system under electric stress [6,7].…”
Section: Introductionmentioning
confidence: 99%