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Proceedings ArticleDOI

Dendrogram based Clustering and Separation of Individual and Simultaneously Active Incipient Discharges in Transformer Insulation

TL;DR: An unsupervised learning approach is proposed for clustering of individual partial discharge signals and then using that information for separating the multi-source signals.
Abstract: Partial discharges in transformer insulation are of major concern to utilities which cause the catastrophic failure of insulation. One of the major challenges is the identification of discharges from multiple sources when it occurs concurrently. Hence it is imperative to devise methods for identifying and separating those signals for corrective measures. In this study, an unsupervised learning approach is proposed for clustering of individual partial discharge signals and then using that information for separating the multi-source signals. Our clustering approach works by constructing a dendrogram by measuring the cosine similarity between the feature vectors and then computing a threshold, to group the individual source signals into different clusters. The feature vectors include the relative energies from the wavelet packet decomposed tree and the Higuchi fractal dimension of the wavelet coefficients at the terminal nodes. The generated clusters are trained using a classifier model to separate the individual and multi-source signals. The proposed approach is a simple and robust technique for individual cluster groupings and individual to multiclass separations and could be used for multiclass cluster groupings.
Citations
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Book ChapterDOI
01 Jan 2022
TL;DR: In this analysis, several unsupervised learning techniques were used with the kernel techniques of Principle Component Analysis (PCA) and K-Means and several Hierarchical Clustering techniques with different linkages such as ward, complete, and average were applied and highest accuracy of 70.91% was obtained from Hierarchy Clustered with average linkage.
Abstract: Breast Cancer is one of the topmost well-known diseases with a high death rate among women. It is a non-communicable disease that is seen in numerous women in all over the world. With the early analysis of this disease, the endurance will arise from 56% to over 86%. In this analysis, several unsupervised learning techniques were used with the kernel techniques of Principle Component Analysis (PCA). K-Means and several Hierarchical Clustering techniques with different linkages such as ward, complete, and average were applied and highest accuracy of 70.91% was obtained from Hierarchical Clustering with average linkage. The better performances were in Recall and F1-score from K-Means compared to Ward and Complete linkage clustering techniques. The Specificity, Precision, Recall, and F1-score have shown satisfactory performances in Average linkage with the values of 60%, 70.58%, 80%, and 75% correspondingly.

2 citations

References
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Journal ArticleDOI
Peter D. Welch1
TL;DR: In this article, the use of the fast Fourier transform in power spectrum analysis is described, and the method involves sectioning the record and averaging modified periodograms of the sections.
Abstract: The use of the fast Fourier transform in power spectrum analysis is described. Principal advantages of this method are a reduction in the number of computations and in required core storage, and convenient application in nonstationarity tests. The method involves sectioning the record and averaging modified periodograms of the sections.

9,705 citations


"Dendrogram based Clustering and Sep..." refers methods in this paper

  • ...3 b gives its corresponding power spectral density computed using Welch’s method [11]....

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Journal ArticleDOI
TL;DR: In this article, a fuzzy classifier is used for the analysis of the acquired PD-pulse shape signals, and the result of the fuzzy classification is a cluster of signals homogeneous in terms of stochastic features of PD pulses.
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.

335 citations


"Dendrogram based Clustering and Sep..." refers background in this paper

  • ...This makes identification challenging and may result in erroneous decisions about the presence of active sites [1]....

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Journal ArticleDOI
TL;DR: An updated review of the HFD method applied in basic and clinical neurophysiological research, concluding that only a combination of HFD with other nonlinear methods ensures reliable and accurate analysis of a wide range of neurophysiology signals.

151 citations

Journal ArticleDOI
TL;DR: Multi-level basis selection (MLBS) is proposed to preserve the most informative bases of a wavelet packet decomposition tree through removing less informative bases by applying three exclusion criteria: frequency range, noise frequency, and energy threshold.

121 citations


"Dendrogram based Clustering and Sep..." refers methods in this paper

  • ...The features used in our approach are the relative energies in each of the sub-bands after wavelet packet decomposition of the signals [12], [13] and the higuchi fractal dimension parameter of the wavelet coefficients at the terminal nodes [13]–[15]....

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Journal ArticleDOI
TL;DR: A novel fuzzy support vector machine (FSVM) and a variety of artificial neural networks (ANNs) are applied in this paper and the classification results reveal that FSVM significantly outperforms a number of ANN algorithms.
Abstract: Partial discharge (PD) source classification aims to identify the types of defects causing discharges in high voltage (HV) equipment. This paper presents a comprehensive study of applying pattern recognition techniques to automatic PD source classification. Three challenging issues are investigated in this paper. The first issue is the feature extraction for obtaining representative attributes from the original PD measurement data. Several approaches including stochastic neighbour embedding (SNE), principal component analysis (PCA), kernel principal component analysis (KPCA), discrete wavelet transform (DWT), and conventional statistic operators are adopted for feature extraction. The second issue is the pattern recognition algorithms for identifying various types of PD sources. A novel fuzzy support vector machine (FSVM) and a variety of artificial neural networks (ANNs) are applied in the paper. The third issue is the identification of multiple PD sources, which may occur in HV equipment simultaneously. Two approaches are proposed to address this issue. To evaluate the performance of various algorithms in this paper, extensive laboratory experiments on a number of artificial PD models are conducted. The classification results reveal that FSVM significantly outperforms a number of ANN algorithms. The practical PD sources classification for HV equipment is a considerable complicated problem. Therefore, this paper also discusses some issues of meaningful application of the above proposed pattern recognition techniques for practical PD sources classification of HV equipment.

119 citations