Partial discharges and noise classification under HVDC using unsupervised and semi-supervised learning

Journal Article (2020)
Author(s)

N. Morette (Sorbonne Université)

Luis Carlos Heredia (TU Delft - ESP LAB)

Thierry Ditchi (Sorbonne Université)

Dr A.Rodrigo Mor (TU Delft - DC systems, Energy conversion & Storage)

Y. Oussar (Sorbonne Université)

Research Group
DC systems, Energy conversion & Storage
Copyright
© 2020 N. Morette, L.C. Castro Heredia, Thierry Ditchi, A. R. Mor, Y. Oussar
DOI related publication
https://doi.org/10.1016/j.ijepes.2020.106129
More Info
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Publication Year
2020
Language
English
Copyright
© 2020 N. Morette, L.C. Castro Heredia, Thierry Ditchi, A. R. Mor, Y. Oussar
Research Group
DC systems, Energy conversion & Storage
Volume number
121
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Abstract

This paper tackles the problem of the classification of partial discharge (PD) and noise signals by applying unsupervised and semi-supervised learning methods. The first step in the proposed methodology is to prepare a set of classification features from the statistical moments of the distribution of the Wavelet detail coefficients extracted from a dataset of signals acquired from a test cell under 40 kVDC. In a second step, an unsupervised learning framework that implements the k–means algorithm is applied to reduce the dimensionality of this initial feature set. The Silhouette index is used to evaluate the number of natural clusters in the dataset while the Dunn index is used to determine which subset of features produces the best clustering quality. Since the unsupervised learning does not provide any method for result validation, then the third step in the methodology of this paper consists of applying a semi-supervised learning framework that implements Transductive Support-Vector Machines. The labeling of the test set that is required in this framework for the result validation is carried out by visual checking of the signal waveforms assisted by GUI tools such as the software PDflex. The results using this methodology showed a high classification accuracy and proved that both learning frameworks can be combined to optimize the selection of classification features.