Classification of power quality disturbances using wavelet and probabilistic neural network / Mohd Nur Aizat Mohd Ali

Power quality is a term used to describe electric power that motivates an electrical load and the load's ability to function properly with that electric power. The effects of the lack of power quality could suffer major loss especially in the business and industries. Appropriate mitigation proc...

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Main Author: Mohd Ali, Mohd Nur Aizat
Format: Thesis
Language:English
Published: 2007
Online Access:https://ir.uitm.edu.my/id/eprint/84730/1/84730.pdf
https://ir.uitm.edu.my/id/eprint/84730/
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spelling my.uitm.ir.847302024-02-14T04:25:29Z https://ir.uitm.edu.my/id/eprint/84730/ Classification of power quality disturbances using wavelet and probabilistic neural network / Mohd Nur Aizat Mohd Ali Mohd Ali, Mohd Nur Aizat Power quality is a term used to describe electric power that motivates an electrical load and the load's ability to function properly with that electric power. The effects of the lack of power quality could suffer major loss especially in the business and industries. Appropriate mitigation procedures need to be taken in order to improve the power quality. This project presents the classification of power quality disturbances in electrical power systems. Power quality is monitored and the disturbances waveforms are recorded in order to identify causes and sources of disturbances. The techniques for recognizing and identifying power quality disturbance waveforms are primarily based on visual inspection of the waveform. The application of Wavelet Transform analysis incorporated with Probabilistic Neural Network (PNN) is used to classify the disturbances events. The Wavelet Transform is applied first to the data of power quality disturbances. Then the disturbances data are analyzed using Multi-resolution decomposition. The Wavelet Transform is used to decompose the disturbances signal into smooth and detailed version which consists of the disturbance waveforms. Magnitude from the detail data is considered to do the training samples and then applied to Probabilistic Neural Network (PNN) to recognize and classify the events. The combination methods have successfully recognized he data disturbances and produce the result with accuracy of 95.6%. Although the classification is not perfectly achieved, it is proved that both combination of Wavelet Transform and Probabilistic Neural Network can be used as assistance for classified and improvement of power quality disturbances. 2007 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/84730/1/84730.pdf Classification of power quality disturbances using wavelet and probabilistic neural network / Mohd Nur Aizat Mohd Ali. (2007) Degree thesis, thesis, Universiti Teknologi MARA (UiTM).
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
description Power quality is a term used to describe electric power that motivates an electrical load and the load's ability to function properly with that electric power. The effects of the lack of power quality could suffer major loss especially in the business and industries. Appropriate mitigation procedures need to be taken in order to improve the power quality. This project presents the classification of power quality disturbances in electrical power systems. Power quality is monitored and the disturbances waveforms are recorded in order to identify causes and sources of disturbances. The techniques for recognizing and identifying power quality disturbance waveforms are primarily based on visual inspection of the waveform. The application of Wavelet Transform analysis incorporated with Probabilistic Neural Network (PNN) is used to classify the disturbances events. The Wavelet Transform is applied first to the data of power quality disturbances. Then the disturbances data are analyzed using Multi-resolution decomposition. The Wavelet Transform is used to decompose the disturbances signal into smooth and detailed version which consists of the disturbance waveforms. Magnitude from the detail data is considered to do the training samples and then applied to Probabilistic Neural Network (PNN) to recognize and classify the events. The combination methods have successfully recognized he data disturbances and produce the result with accuracy of 95.6%. Although the classification is not perfectly achieved, it is proved that both combination of Wavelet Transform and Probabilistic Neural Network can be used as assistance for classified and improvement of power quality disturbances.
format Thesis
author Mohd Ali, Mohd Nur Aizat
spellingShingle Mohd Ali, Mohd Nur Aizat
Classification of power quality disturbances using wavelet and probabilistic neural network / Mohd Nur Aizat Mohd Ali
author_facet Mohd Ali, Mohd Nur Aizat
author_sort Mohd Ali, Mohd Nur Aizat
title Classification of power quality disturbances using wavelet and probabilistic neural network / Mohd Nur Aizat Mohd Ali
title_short Classification of power quality disturbances using wavelet and probabilistic neural network / Mohd Nur Aizat Mohd Ali
title_full Classification of power quality disturbances using wavelet and probabilistic neural network / Mohd Nur Aizat Mohd Ali
title_fullStr Classification of power quality disturbances using wavelet and probabilistic neural network / Mohd Nur Aizat Mohd Ali
title_full_unstemmed Classification of power quality disturbances using wavelet and probabilistic neural network / Mohd Nur Aizat Mohd Ali
title_sort classification of power quality disturbances using wavelet and probabilistic neural network / mohd nur aizat mohd ali
publishDate 2007
url https://ir.uitm.edu.my/id/eprint/84730/1/84730.pdf
https://ir.uitm.edu.my/id/eprint/84730/
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score 13.197875