Aa. Adly et Sk. Abdelhafiz, USING NEURAL NETWORKS IN THE IDENTIFICATION OF PREISACH-TYPE HYSTERESIS MODELS, IEEE transactions on magnetics, 34(3), 1998, pp. 629-635
The identification process of the classical Preisach-type hysteresis m
odel reduces to the determination of the weight function of elementary
hysteresis operators upon which the model is built, It is well known
that the classical Preisach model can exactly represent hysteretic non
linearities which exhibit wiping-out and congruency properties. In tha
t case, the model identification can be analytically and systematicall
y accomplished by using first-order reversal curves. If the congruency
property is not exactly valid, the Preisach model can only be used as
an approximation. It is possible to improve the model accuracy in thi
s situation by incorporating more appropriate experimental data during
the identification stage. However, performing this process using the
traditional systematic techniques becomes almost impossible, In this p
aper, the machinery of neural networks is proposed as a tool to accomp
lish this identification task. The suggested identification approach h
as been numerically implemented and carried out for a magnetic tape sa
mple that does not possess the congruency property, A comparison betwe
en measured data and model predictions suggests that the proposed iden
tification approach yields more accurate results.