Title :
Prediction of dynamic hysteresis under highly distorted exciting fields by neural networks and actual frequency transplantation
Author :
Salvini, Alessandro ; Coltelli, Christian
Author_Institution :
Dipartimento di Ingegneria Elettronica, Rome Univ., Italy
fDate :
9/1/2001 12:00:00 AM
Abstract :
Neural Network (NN) and actual frequency transplantation (AFT) are combined for prediction of dynamic hysteresis when the exciting field, H(t), is highly polluted by harmonics. The NN forecasts the Fourier Series for flux density for well-known H(t) waveforms (i.e., triangular, square wave fields etc.). The task of AFT is to approach the arbitrary distortion of H(t) by exploiting loop predictions by NN under pure sinusoidal excitations and then by transplanting loop branches related to frequencies detected in short time-windows of the H(t) period. These actual frequencies will be evaluated by an appropriate time-frequency analysis of H(t). Model validations will be presented in comparison with experimental data
Keywords :
Fourier series; harmonic distortion; magnetic hysteresis; neural nets; time-frequency analysis; Fourier series; actual frequency transplantation; dynamic hysteresis; exciting field; flux density; harmonic distortion; neural network; prediction model; sinusoidal excitation; time-frequency analysis; Fourier series; Harmonic distortion; Helium; Magnetic analysis; Magnetic fields; Magnetic hysteresis; Neural networks; Pollution; Solid modeling; Time frequency analysis;
Journal_Title :
Magnetics, IEEE Transactions on