Title :
Neural networks aided on-line diagnostics of induction motor rotor faults
Author :
Filippetti, Fiorenzo ; Franceschini, Giovanni ; Tassoni, C.
Author_Institution :
Istituto di Elettrotecnica, Bologna Univ.
Abstract :
An improvement of induction machine rotor fault diagnosis based on a neural network approach is presented. A neural network can substitute, in a more effective way, the faulted machine models used to formalize the knowledge base of the diagnostic system when inputs and outputs are suitably chosen. Training the neural network by data achieved through experimental tests on healthy machines and through simulation in case of faulted machines, the diagnostic system can discern between “healthy” and “faulty” machines. This procedure substitutes the statement of a trigger threshold, required by the diagnostic procedure based on the machine models
Keywords :
automatic test equipment; automatic testing; fault diagnosis; induction motors; learning (artificial intelligence); machine testing; neural nets; power engineering computing; rotors; diagnostic system; induction motor; knowledge base; machine models; neural network approach; rotor fault diagnosis; simulation; training; trigger threshold; Data acquisition; Diagnostic expert systems; Electrical fault detection; Fault diagnosis; Frequency; Induction motors; Industry Applications Society; Instruments; Neural networks; Rotors;
Journal_Title :
Industry Applications, IEEE Transactions on