Abstract

This paper proposes a new methodology to solve the problem of fault diagnosis in electrical machines. The fault diagnosis method presented in this paper is, first, able to provide information about the location of a short-circuit fault in a stator winding. Secondly, the method enables the estimation of fault severity by specifying the number of short-circuited turns during a fault. A cluster of Focused Time-Lagged neural networks are combined with the Particle Swarm Optimization algorithm for proposed fault diagnosis method. This method is applied to the stator windings of a Permanent Magnet Synchronous Machine. Each neural network, in the cluster, is trained to correlate the zero-current component to the number of short-circuited turns in the stator windings. The zero-current component, different from the zero-sequence current, are obtained by summing the instantaneous values of current on all phases of the stator winding during the diagnosis procedure. The neural networks are trained offline with the Extended Kalman Filter method using fault data from both computer simulations and an actual Permanent Magnet Synchronous Machine. The use of the Extended Kalman Filter method, for training, ensures that the neural network cluster used can be re-trained online to make the fault diagnosis system adapt to changing operational conditions. Results from both computer simulation and actual machine data are presented to show the performance of the neural network cluster and the Particle Swarm Optimization algorithm.

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