2015
DOI: 10.4236/jpee.2015.34030
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Application of Slantlet Transform Based Support Vector Machine for Power Quality Detection and Classification

Abstract: Concern towards power quality (PQ) has increased immensely due to the growing usage of high technology devices which are very sensitive towards voltage and current variations and the de-regulation of the electricity market. The impact of these voltage and current variations can lead to devices malfunction and production stoppages which lead to huge financial loss for the production company. The deregulation of electricity markets has made the industry become more competitive and distributed. Thus, a higher dem… Show more

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Cited by 2 publications
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“…The signal indices of transient are also able to give the correct features which will help the classification system to perform well. [17,18]. In this study, RBF support vector machine (RBF SVM) were utilised to classify all these eight types of PQ disturbances.…”
Section: Mst Spectrum and Signal Indicesmentioning
confidence: 99%
“…The signal indices of transient are also able to give the correct features which will help the classification system to perform well. [17,18]. In this study, RBF support vector machine (RBF SVM) were utilised to classify all these eight types of PQ disturbances.…”
Section: Mst Spectrum and Signal Indicesmentioning
confidence: 99%