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Journal ArticleDOI

An expert system based on S-transform and neural network for automatic classification of power quality disturbances

TLDR
The S-transform (ST) technique is integrated with neural network (NN) model with multi-layer perceptron to construct the classifier that can effectively classify different PQ disturbances.
Abstract
In this paper, an S-transform-based neural network structure is presented for automatic classification of power quality disturbances. The S-transform (ST) technique is integrated with neural network (NN) model with multi-layer perceptron to construct the classifier. Firstly, the performance of ST is shown for detecting and localizing the disturbances by visual inspection. Then, ST technique is used to extract the significant features of distorted signal. In addition, an optimum combination of the most useful features is identified for increasing the accuracy of classification. Features extracted by using the S-transform are applied as input to NN for automatic classification of the power quality (PQ) disturbances that solves a relatively complex problem. Six single disturbances and two complex disturbances as well pure sine (normal) selected as reference are considered for the classification. Sensitivity of proposed expert system under different noise conditions is investigated. The analysis and results show that the classifier can effectively classify different PQ disturbances.

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Citations
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Journal ArticleDOI

A critical review of detection and classification of power quality events

TL;DR: A comprehensive review of signal processing and intelligent techniques for automatic classification of the power quality (PQ) events and an effect of noise on detection and classification of disturbances is presented in this paper.
Journal ArticleDOI

Detection and Classification of Single and Combined Power Quality Disturbances Using Neural Networks

TL;DR: A new dual neural-network-based methodology to detect and classify single and combined PQ disturbances is proposed, consisting of an adaptive linear network for harmonic and interharmonic estimation that allows computing the root-mean-square voltage and total harmonic distortion indices.
Journal ArticleDOI

Recognition of Power-Quality Disturbances Using S-Transform-Based ANN Classifier and Rule-Based Decision Tree

TL;DR: In this article, an algorithm based on Stockwell's transform and artificial neural network-based classifier and a rule-based decision tree is proposed for the recognition of single stage and multiple power quality (PQ) disturbances.
Journal ArticleDOI

Techniques and methodologies for power quality analysis and disturbances classification in power systems: a review

TL;DR: A review of techniques and methodologies developed for power quality analysis and power disturbance classification is presented in this article, in order to show their major characteristics, such as harmonics, sags, swells etc.
Journal ArticleDOI

A comprehensive overview on signal processing and artificial intelligence techniques applications in classification of power quality disturbances

TL;DR: A comprehensive literature review on the applications of digital signal processing, artificial intelligence and optimization techniques in the classification of PQ disturbances and a comparison of various classification systems is presented in tabular form.
References
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