The dynamic hysteresis loops of a range of soft magnetic toroidal wound cores made from 3% SiFe 0.27 mm thick M4, 0.1 and 0.08 mm thin gauge strip have been measured over a wide frequency range (50-1000 Hz). A dynamic hysteresis loop prediction model using neural network and genetic algorithm from measurements has been developed. Input parameters include the geometrical dimensions of wound cores, peak magnetic induction, strip thickness and magnetizing frequency. The developed neural network for the estimation of hysteresis loops has been also compared with the dynamic Preisach model and Energetic model. The results show that the neural network model trained by genetic algorithm has an acceptable prediction capability for hysteresis loops o...
The excitation conditions of electrical steel are generally sinusoidal but, with the advent of power...
A thorough investigation of the 2-D hysteresis processes under arbitrary excitations was carried out...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
Dynamic hysteresis loops of a range of nano-crystalline cores have been obtained over a wide frequen...
Geometrical and building parameters have a strong influence on magnetic performance of toroidal woun...
Although magnetic wound cores have simple geometries, their magnetic properties vary in a complex ma...
A neural network model to predict the dynamic hysteresis loops and the energy-loss curves (i.e., the...
A computationally efficient and robust neural network-based model to reproduce the hysteresis phenom...
A mathematical model for core losses was improved for frequency and geometrical effects using experi...
Validations from experimental testing of the capability of Neural Networks (NNs) in modelling dynami...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
This paper presents a method based on genetic algorithms and neural networks suitable for finding th...
The modelling of the dynamic behavior of hysteretic materials and devices must take into account mag...
The excitation conditions of electrical steel are generally sinusoidal but, with the advent of power...
A thorough investigation of the 2-D hysteresis processes under arbitrary excitations was carried out...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
Dynamic hysteresis loops of a range of nano-crystalline cores have been obtained over a wide frequen...
Geometrical and building parameters have a strong influence on magnetic performance of toroidal woun...
Although magnetic wound cores have simple geometries, their magnetic properties vary in a complex ma...
A neural network model to predict the dynamic hysteresis loops and the energy-loss curves (i.e., the...
A computationally efficient and robust neural network-based model to reproduce the hysteresis phenom...
A mathematical model for core losses was improved for frequency and geometrical effects using experi...
Validations from experimental testing of the capability of Neural Networks (NNs) in modelling dynami...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
This paper presents a method based on genetic algorithms and neural networks suitable for finding th...
The modelling of the dynamic behavior of hysteretic materials and devices must take into account mag...
The excitation conditions of electrical steel are generally sinusoidal but, with the advent of power...
A thorough investigation of the 2-D hysteresis processes under arbitrary excitations was carried out...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...