A novel probabilistic neural network system for power quality classification based on different wavelet transform

This paper proposed a power quality disturbances classification system based on wavelet transforms and novel probabilistic neural network (PNN). Wavelet transform is utilized to extract feature vectors for various power quality disturbances based on multi-resolution analysis. The decomposition signal is divided into 5 equal length bins in each level. Root mean square (RMS) value of the wavelet coefficients that fall within that bin is regarded as a dimension of feature vectors. These feature vectors are applied to a probabilistic neural network for training and testing. Evolutionary algorithm is used to in this paper as a multivariate optimization scheme for finding multiple sigma values in estimation of probabilistic density function. One of the major virtue of PNN stems from its modular architecture design, then it can be easily extended adapt to a changing environment by appropriate chromosomes and generations. We examined that different decomposition levels of wavelet transform are concerned with the classifier accuracy, and the performance of classification is minor distinction with different wavelet families under the condition of same decomposition level.

[1]  D. Fogel Evolutionary algorithms in theory and practice , 1997, Complex..

[2]  Hong-Tzer Yang,et al.  A de-noising scheme for enhancing wavelet-based power quality monitoring system , 2001 .

[3]  T. Cacoullos Estimation of a multivariate density , 1966 .

[4]  S. Mallat A wavelet tour of signal processing , 1998 .

[5]  A. Y. Chikhani,et al.  Power quality detection and classification using wavelet-multiresolution signal decomposition , 1999 .

[6]  Barbara Hubbard,et al.  The World According to Wavelets , 1996 .

[7]  C. Burrus,et al.  Introduction to Wavelets and Wavelet Transforms: A Primer , 1997 .

[8]  Z. Gaing Wavelet-based neural network for power disturbance recognition and classification , 2004 .

[9]  Donald F. Specht,et al.  Probabilistic neural networks , 1990, Neural Networks.

[10]  Edward J. Powers,et al.  Power quality disturbance waveform recognition using wavelet-based neural classifier. I. Theoretical foundation , 2000 .

[11]  David E. Goldberg,et al.  Genetic Algorithms in Search Optimization and Machine Learning , 1988 .

[12]  Stéphane Mallat,et al.  A Theory for Multiresolution Signal Decomposition: The Wavelet Representation , 1989, IEEE Trans. Pattern Anal. Mach. Intell..

[13]  Paul S. Wright,et al.  Short-time Fourier transforms and Wigner-Ville distributions applied to the calibration of power frequency harmonic analyzers , 1999, IEEE Trans. Instrum. Meas..

[14]  Edward J. Powers,et al.  Power quality disturbance waveform recognition using wavelet-based neural classifier. II. Application , 2000 .

[15]  D. D. Sabin,et al.  Quality enhances reliability [power supplies] , 1996 .