This paper presents a neural network that is able to give, together with the rotor fault diagnosis, the combined rotor-load inertia momentum of an induction machine. The inputs of the network are the spectral components of machine input currents, speed and torque. A specific neural network architecture containing new fast spline-based neurons with improved generalisation capabilities has been used. The training set is obtained by a faulted machine dynamical model as simulator.
Neural network architectures for fault diagnosis and parameter recognition in induction machines / Filippetti, F; Uncini, Aurelio; Piazza, C; Campolucci, P; Tassoni, C; Franceschini, G.. - 1:(1996), pp. 289-293. [10.1109/MELCON.1996.551542]
Neural network architectures for fault diagnosis and parameter recognition in induction machines
UNCINI, Aurelio;
1996
Abstract
This paper presents a neural network that is able to give, together with the rotor fault diagnosis, the combined rotor-load inertia momentum of an induction machine. The inputs of the network are the spectral components of machine input currents, speed and torque. A specific neural network architecture containing new fast spline-based neurons with improved generalisation capabilities has been used. The training set is obtained by a faulted machine dynamical model as simulator.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.