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Comparison of supervised classification algorithms combined with feature extraction and selection: Application to a turbo-generator rotor fault detection | IEEE Conference Publication | IEEE Xplore

Comparison of supervised classification algorithms combined with feature extraction and selection: Application to a turbo-generator rotor fault detection


Abstract:

The goal of this paper consists in applying pattern recognition methods to turbo-generators. Previous works have shown that a monitor, thanks to pattern recognition, is p...Show More

Abstract:

The goal of this paper consists in applying pattern recognition methods to turbo-generators. Previous works have shown that a monitor, thanks to pattern recognition, is practical on asynchronous machines. This procedure has rarely taken advantage of these methods for turbogenerator. The statistical model has been obtained from harmonics extracted from flux probes and from stator current and voltage. For this purpose, the main way is to build a learning matrix to predict the functional state of a new measurement. Finally, three classifiers have been compared: k Nearest Neighbors, Linear Discriminant Analysis and Support Vector Machines. The best classification result is obtained by Linear Discriminant Analysis combined with Factorial Discriminant Analysis achieving a score of 84.6%.
Date of Conference: 27-30 August 2013
Date Added to IEEE Xplore: 24 October 2013
Electronic ISBN:978-1-4799-0025-1
Conference Location: Valencia, Spain

I. Nomenclature

Stator voltage phase and Stator current phase and Standard deviation of with or (also ) Deformation of the normalized characteristic With or Number of prototypes Number of test data Number of features , the learning matrix , a prototype (also xi) , the test matrix a test data feature , a column of (xi) The class of xi Class Set of all classes card , mean of the class Random variable corresponding to the samples Random variable corresponding to the classes The membership degree of to the class nearest prototypes of The covariance matrix of the prototypes The within and between classes covariance matrix of the prototypes The within and between classes covariance matrix of the class

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