dc.contributorCanha, Luciane Neves
dc.contributorhttp://buscatextual.cnpq.br/buscatextual/visualizacv.do?id=K4798975Y0
dc.contributorGomes, Natanael Rodrigues
dc.contributorhttp://buscatextual.cnpq.br/buscatextual/visualizacv.do?id=K4797690H7
dc.contributorFerreira, André Augusto
dc.contributorhttp://buscatextual.cnpq.br/buscatextual/visualizacv.do?id=K4768311U6
dc.contributorFarret, Felix Alberto
dc.contributorhttp://buscatextual.cnpq.br/buscatextual/visualizacv.do?id=K4790205D6
dc.creatorPozzebon, Giovani Guarienti
dc.date.accessioned2017-05-25
dc.date.accessioned2019-05-24T19:18:55Z
dc.date.available2017-05-25
dc.date.available2019-05-24T19:18:55Z
dc.date.created2017-05-25
dc.date.issued2009-02-10
dc.identifierPOZZEBON, Giovani Guarienti. Wavelet transform and artificial neural networks in power quality signal analysis. 2009. 112 f. Dissertação (Mestrado em Engenharia Elétrica) - Universidade Federal de Santa Maria, Santa Maria, 2009.
dc.identifierhttp://repositorio.ufsm.br/handle/1/8463
dc.identifier.urihttp://repositorioslatinoamericanos.uchile.cl/handle/2250/2833329
dc.description.abstractThis work presents a different method for power quality signal classification using the principal components analysis (PCA) associated to the wavelet transform (WT). The standard deviation of the detail coefficients and the average of the approximation coefficients from WT are combined to extract discriminated characteristics from the disturbances. The PCA was used to condense the information of those characteristics, than a smaller group of characteristics uncorrelated were generated. These were processed by a probabilistic neural network (PNN) to accomplish the classifications. In the application of the algorithm, in the first case, seven classes of signals which represent different types of disturbances were classified, they are as follows: voltage sag and interruption, flicker, oscillatory transients, harmonic distortions, notching and normal sine waveform. In the second case were increased four more situations that usually happen in distributed generation systems connected to distribution grids through converters, they are as follows: connection of the distributed generation, connection of local load, normal operation and islanding occurrence. In this case, the voltage on the point of common coupling between GD and grid were measured by simulations and were analyzed by the proposed algorithm. In both cases, the signals were decomposed in nine resolution levels by the wavelet transformed, being represented by detail and approximation coefficients. The application of the WT generated a lot of variations in the coefficients. Therefore, the application of the standard deviation in different resolution levels can quantify the magnitude of the variations. In order to take into account those features originated from low frequency components contained in the signals, was proposed to calculate the average of the approximation coefficients. The standard deviations of the detail coefficients and the average of the approximation coefficients composed the feature vector containing 10 variables for each signal. Before accomplishing the classification these vectors were processed by the principal component analysis algorithm in order to reduce the dimension of the feature vectors that contained correlated variables. Consequently, the processing time of the neural network were reduced to. The principal components, which are uncorrelated, were ordered so that the first few components account for the most variation that all the original variables acted previously. The first three components were chosen. Like this, a new group of variables was generated through the principal components. Thus, the number of variables on the feature vector was reduced to 3 variables. These 3 variables were inserted in a neural network for the classification of the disturbances. The output of the neural network indicates the type of disturbance.
dc.publisherUniversidade Federal de Santa Maria
dc.publisherBR
dc.publisherEngenharia Elétrica
dc.publisherUFSM
dc.publisherPrograma de Pós-Graduação em Engenharia Elétrica
dc.rightsAcesso Aberto
dc.subjectAnálise de componentes principais
dc.subjectGeração distribuída
dc.subjectQualidade da energia elétrica
dc.subjectRedes neurais e transformada wavelet
dc.subjectDistributed generation
dc.subjectNeural networks
dc.subjectPower quality
dc.subjectPrincipal component analysis
dc.subjectWavelet transform
dc.titleTranformada wavelet e redes neurais artificiais na análise de sinais relacionados à qualidade da energia elétrica
dc.typeTesis


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