Influence of Cross-Saturation on the Various Models of Induction Machine
نویسنده
چکیده
The analysis of saturated machines is generally performed with the stator and rotor currents, or mixed combinations of currents and flux linkages as state variables were also taken into account. A synthesis of possible models of induction machines is presented. Possible models contain explicit terms that describe cross-saturation except for the winding flux model. This paper treats the impact of crosssaturation on the various models of an induction machines. All found models are classified into four families: models with no, weak, mean and high sensitivity to the phenomenon.
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تاریخ انتشار 2015