Critical investigations on performance of ANN and wavelet fault classifiers

With increasing demands and competitive business environment, the structure of power system has become very complex. Moreover, power system is a dynamic framework due to faults and rapid load variations. Hence, the detection algorithms for faults are potential areas of research. To discuss this issu...

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Main Authors: Purva Sharma, Akash Saxena
Format: Article
Language:English
Published: Taylor & Francis Group 2017-01-01
Series:Cogent Engineering
Subjects:
Online Access:http://dx.doi.org/10.1080/23311916.2017.1286730
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spelling doaj-64f8306fb9104cb38252eb92858b648d2021-03-02T14:23:44ZengTaylor & Francis GroupCogent Engineering2331-19162017-01-014110.1080/23311916.2017.12867301286730Critical investigations on performance of ANN and wavelet fault classifiersPurva Sharma0Akash Saxena1Swami Keshvanand Institute of TechnologySwami Keshvanand Institute of TechnologyWith increasing demands and competitive business environment, the structure of power system has become very complex. Moreover, power system is a dynamic framework due to faults and rapid load variations. Hence, the detection algorithms for faults are potential areas of research. To discuss this issue and to provide the solution methodology for detection of faults and further classification of those in a smart grid is a primary motivation of this manuscript. This paper presents application of supervised learning algorithms based on different neural network topologies for detection and classification of the faults in transmission lines in power system. Different wavelet transforms on different Multi Resolution Analysis levels are applied for detection of the potential features from the voltage waveforms of the Phasor Measurement Units (PMUs). These wavelet transforms are then applied to several neural networks classification engines to classify faults. Binary classification technique is used for definitions of faults. Different faults namely single line to ground, line to line, double line to ground and three phase symmetrical faults are designated as a binary digit. These definitions are employed to train the classification engine. Different plots of confusion and errors are plotted to establish a fair comparison between supervised learning algorithms.http://dx.doi.org/10.1080/23311916.2017.1286730wavelet transformsmra levelsupervised learning methodphasor measurement units (pmus)
collection DOAJ
language English
format Article
sources DOAJ
author Purva Sharma
Akash Saxena
spellingShingle Purva Sharma
Akash Saxena
Critical investigations on performance of ANN and wavelet fault classifiers
Cogent Engineering
wavelet transforms
mra level
supervised learning method
phasor measurement units (pmus)
author_facet Purva Sharma
Akash Saxena
author_sort Purva Sharma
title Critical investigations on performance of ANN and wavelet fault classifiers
title_short Critical investigations on performance of ANN and wavelet fault classifiers
title_full Critical investigations on performance of ANN and wavelet fault classifiers
title_fullStr Critical investigations on performance of ANN and wavelet fault classifiers
title_full_unstemmed Critical investigations on performance of ANN and wavelet fault classifiers
title_sort critical investigations on performance of ann and wavelet fault classifiers
publisher Taylor & Francis Group
series Cogent Engineering
issn 2331-1916
publishDate 2017-01-01
description With increasing demands and competitive business environment, the structure of power system has become very complex. Moreover, power system is a dynamic framework due to faults and rapid load variations. Hence, the detection algorithms for faults are potential areas of research. To discuss this issue and to provide the solution methodology for detection of faults and further classification of those in a smart grid is a primary motivation of this manuscript. This paper presents application of supervised learning algorithms based on different neural network topologies for detection and classification of the faults in transmission lines in power system. Different wavelet transforms on different Multi Resolution Analysis levels are applied for detection of the potential features from the voltage waveforms of the Phasor Measurement Units (PMUs). These wavelet transforms are then applied to several neural networks classification engines to classify faults. Binary classification technique is used for definitions of faults. Different faults namely single line to ground, line to line, double line to ground and three phase symmetrical faults are designated as a binary digit. These definitions are employed to train the classification engine. Different plots of confusion and errors are plotted to establish a fair comparison between supervised learning algorithms.
topic wavelet transforms
mra level
supervised learning method
phasor measurement units (pmus)
url http://dx.doi.org/10.1080/23311916.2017.1286730
work_keys_str_mv AT purvasharma criticalinvestigationsonperformanceofannandwaveletfaultclassifiers
AT akashsaxena criticalinvestigationsonperformanceofannandwaveletfaultclassifiers
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