On the effects of the average grain size in GO Fe-Si alloys: Magnetic measurements and simulations via the single hysteron model

In this paper the effects of the crystal grain dimensions upon the global magnetic behavior in Goss-textured magnetic materials is investigated. Three samples of Grain Oriented (GO) Fe-Si steels with different average grain size have been analyzed by means of both vector hysteresis measurements and simulations via the Single Hysteron Model.

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