This paper presents a method based on genetic algorithms and neural networks suitable for finding the five parameters of the Jiles-Atherton (JA) model for generalization to dynamic hysteresis loops. The aim is to obtain an equivalent static model for dynamic loops by updating its parameters varying the frequency of the imposed magnetic field H(t). Validations of the present approach compared to other numerical approaches, based on adding frequency-dependent losses to the static model, and versus experimental tests will be shown
An improvement of the Jiles-Atherton model by introducing a dynamic dependence of all five parameter...
An improvement of the Jiles-Atherton model by introducing a dynamic dependence of all five parameter...
International audienceIn this work we have presented an approach for calculating the hysteresis loop...
This paper presents a method based on genetic algorithms and neural networks suitable for finding th...
This paper presents a method based on genetic algorithms and neural networks suitable for finding th...
This paper presents a method based on genetic algorithms and neural networks suitable for finding th...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
A method able to generalize the static Preisach hysteresis model for dynamic loops under sinusoidal ...
A method able to generalize the static Preisach hysteresis model for dynamic loops under sinusoidal ...
A method able to generalize the static Preisach hysteresis model for dynamic loops under sinusoidal ...
This work proposes a model with dynamic parameters based on the classic Jiles-Atherton model for mag...
This work proposes a model with dynamic parameters based on the classic Jiles-Atherton model for mag...
An improvement of the Jiles-Atherton model by introducing a dynamic dependence of all five parameter...
An improvement of the Jiles-Atherton model by introducing a dynamic dependence of all five parameter...
An improvement of the Jiles-Atherton model by introducing a dynamic dependence of all five parameter...
International audienceIn this work we have presented an approach for calculating the hysteresis loop...
This paper presents a method based on genetic algorithms and neural networks suitable for finding th...
This paper presents a method based on genetic algorithms and neural networks suitable for finding th...
This paper presents a method based on genetic algorithms and neural networks suitable for finding th...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
A method able to generalize the static Preisach hysteresis model for dynamic loops under sinusoidal ...
A method able to generalize the static Preisach hysteresis model for dynamic loops under sinusoidal ...
A method able to generalize the static Preisach hysteresis model for dynamic loops under sinusoidal ...
This work proposes a model with dynamic parameters based on the classic Jiles-Atherton model for mag...
This work proposes a model with dynamic parameters based on the classic Jiles-Atherton model for mag...
An improvement of the Jiles-Atherton model by introducing a dynamic dependence of all five parameter...
An improvement of the Jiles-Atherton model by introducing a dynamic dependence of all five parameter...
An improvement of the Jiles-Atherton model by introducing a dynamic dependence of all five parameter...
International audienceIn this work we have presented an approach for calculating the hysteresis loop...