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Article Dans Une Revue Journal of Magnetism and Magnetic Materials Année : 2008

Quasistatic hysteresis modeling with feed-forward neural networks: Influence of the last but one extreme values

Riccardo Scorretti
Fabien Sixdenier
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Romain Marion
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Laurent Morel

Résumé

A technique based on feed-forward neural network (FFNN) for modeling rate-independent scalar magnetic hysteresis is presented in this paper. The neural network discussed here is inspired by several papers presented in the literature. The training set is obtained by a Jiles–Atherton model, just to verify the feasibility of the method and to prevent measurements difficulties. We choose a FFNN model and in order to improve its accuracy and its ability to generalize, we make a little modification that can avoid some problems. Finally, a modification of the last model by adding the last but one extreme value as input of the FFNN is discussed.

Dates et versions

hal-00312899 , version 1 (26-08-2008)

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Citer

Riccardo Scorretti, Fabien Sixdenier, Romain Marion, Laurent Morel. Quasistatic hysteresis modeling with feed-forward neural networks: Influence of the last but one extreme values. Journal of Magnetism and Magnetic Materials, 2008, 320 (20), pp.Pages e992-e996. ⟨10.1016/j.jmmm.2008.04.076⟩. ⟨hal-00312899⟩
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