Title :
Neural-network-based model for dynamic hysteresis in the magnetostriction of electrical steel under sinusoidal magnetisation
Author :
Hilgert, T. ; Vandevelde, L. ; Melkebeek, J.
Author_Institution :
Ghent Univ., Ghent
Abstract :
A model is presented to calculate the dynamic hysteresis behaviour of the magnetostriction in electrical steel under 1-D sinusoidal magnetisation. The input of the model is one period of the 1-D induction wave. On this induction wave, a fast Fourier transform (FFT) is performed, of which the frequency components are fed to the input of a neural network (NN).This neural network calculates the frequency components (amplitude and phase) of the magnetostriction, on which an inverse fast Fourier transform (IFFT) is performed, thus obtaining the magnetostriction wave complementary to the input induction wave. The filtering technique was used to model the magnetostriction of a grain oriented electrical steel. The amplitude of the induction in the sample ranged between 0.6T and 1.8T and the frequency ranged between quasi-static and 200Hz.
Keywords :
fast Fourier transforms; iron alloys; magnetic hysteresis; magnetostriction; neural nets; silicon alloys; dynamic hysteresis; electrical steel; fast Fourier transform; frequency 200 Hz; induction wave; magnetic flux density 0.6 T to 1.8 T; magnetostriction; neural-network-based model; one-dimensional magnetisation; sinusoidal magnetisation; Fast Fourier transforms; Filtering; Frequency; Hysteresis; Magnetic separation; Magnetization; Magnetostriction; Neural networks; Power harmonic filters; Steel;
Conference_Titel :
Magnetics Conference, 2006. INTERMAG 2006. IEEE International
Conference_Location :
San Diego, CA
Print_ISBN :
1-4244-1479-2
DOI :
10.1109/INTMAG.2006.376383