Intelligent Signal Processing Using Wavelet And Neural Network

This thesis presents a novel approach for the detection, classification and data mining of non-stationary signals in power networks by combining the S-Transform and neural networks. The S-Transform provides frequency dependent resolution that simultaneuously localizes the real and imaginary spectra....

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Main Author: Lee, Ian Wen Chun
Format: Thesis
Published: 2003
Subjects:
Online Access:http://shdl.mmu.edu.my/502/
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author Lee, Ian Wen Chun
author_facet Lee, Ian Wen Chun
author_sort Lee, Ian Wen Chun
building MMU Institutional Repository
collection Online Access
description This thesis presents a novel approach for the detection, classification and data mining of non-stationary signals in power networks by combining the S-Transform and neural networks. The S-Transform provides frequency dependent resolution that simultaneuously localizes the real and imaginary spectra. The S-Transform is similar to the Wavelet Transform but with a phase correction. This property is used to obtain useful features of the non-stationary signals that make the pattern recognition much simpler in comparison to the wavelet multiresolution analysis. Two neural network configurations are trained with features from the S-Transform for recognizing the waveform class. The classification accuracy for a variety of power network disturbance signals for both types of neural networks is shown and is found to be a significant improvement over multiresolution wavelet analysis with multiple neural networks. After the patterns are classified a knowledge discovery approach is used to extract further information of the non-stationary time series of the power signal data. This was done by integrating an expert system and Fuzzy MLP to generate important rules that reflect the relationship between the feature vectors and the signals. The efficacy of the rules was tested on a fuzzy inference system with good results. The proposed procedure is able to quantify relevant parameters of the signals with very high accuracy. The entire procedure completes the data mining of non-stationary time series data of power network signals. A quantitative comparison is done between the proposed method and learning wavelet based methods. Neural networks are used to test the classification accuracy of the proposed method and the leading wavelet based methods. The classification results of the proposed method are better than the wavelet based
first_indexed 2025-11-14T17:58:05Z
format Thesis
id mmu-502
institution Multimedia University
institution_category Local University
last_indexed 2025-11-14T17:58:05Z
publishDate 2003
recordtype eprints
repository_type Digital Repository
spelling mmu-5022010-06-18T09:12:24Z http://shdl.mmu.edu.my/502/ Intelligent Signal Processing Using Wavelet And Neural Network Lee, Ian Wen Chun LB2361 Curriculum This thesis presents a novel approach for the detection, classification and data mining of non-stationary signals in power networks by combining the S-Transform and neural networks. The S-Transform provides frequency dependent resolution that simultaneuously localizes the real and imaginary spectra. The S-Transform is similar to the Wavelet Transform but with a phase correction. This property is used to obtain useful features of the non-stationary signals that make the pattern recognition much simpler in comparison to the wavelet multiresolution analysis. Two neural network configurations are trained with features from the S-Transform for recognizing the waveform class. The classification accuracy for a variety of power network disturbance signals for both types of neural networks is shown and is found to be a significant improvement over multiresolution wavelet analysis with multiple neural networks. After the patterns are classified a knowledge discovery approach is used to extract further information of the non-stationary time series of the power signal data. This was done by integrating an expert system and Fuzzy MLP to generate important rules that reflect the relationship between the feature vectors and the signals. The efficacy of the rules was tested on a fuzzy inference system with good results. The proposed procedure is able to quantify relevant parameters of the signals with very high accuracy. The entire procedure completes the data mining of non-stationary time series data of power network signals. A quantitative comparison is done between the proposed method and learning wavelet based methods. Neural networks are used to test the classification accuracy of the proposed method and the leading wavelet based methods. The classification results of the proposed method are better than the wavelet based 2003-04 Thesis NonPeerReviewed Lee, Ian Wen Chun (2003) Intelligent Signal Processing Using Wavelet And Neural Network. Masters thesis, Multimedia University. http://myto.perpun.net.my/metoalogin/logina.php
spellingShingle LB2361 Curriculum
Lee, Ian Wen Chun
Intelligent Signal Processing Using Wavelet And Neural Network
title Intelligent Signal Processing Using Wavelet And Neural Network
title_full Intelligent Signal Processing Using Wavelet And Neural Network
title_fullStr Intelligent Signal Processing Using Wavelet And Neural Network
title_full_unstemmed Intelligent Signal Processing Using Wavelet And Neural Network
title_short Intelligent Signal Processing Using Wavelet And Neural Network
title_sort intelligent signal processing using wavelet and neural network
topic LB2361 Curriculum
url http://shdl.mmu.edu.my/502/
http://shdl.mmu.edu.my/502/