Dynamic hysteresis loops of a range of nano-crystalline cores have been obtained over a wide frequency range (1-50 kHz). A dynamic hysteresis model front measurements using an artificial neural network trained by the delta-bar-delta learning algorithm has been developed. The input parameters include the geometrical dimensions of cores, peak magnetic induction and magnetizing frequency. The results show the neural network model has an acceptable estimation capability for dynamic hysteresis loops of toroidal nano-crystalline cores
The present investigation aims at the definition of an efficient and robust neural network-based mod...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
Although magnetic wound cores have simple geometries, their magnetic properties vary in a complex ma...
The dynamic hysteresis loops of a range of soft magnetic toroidal wound cores made from 3% SiFe 0.27...
A neural network model to predict the dynamic hysteresis loops and the energy-loss curves (i.e., the...
This work documents the research towards the development of a neural approach to represent ferromagn...
Validations from experimental testing of the capability of Neural Networks (NNs) in modelling dynami...
A computationally efficient and robust neural network-based model to reproduce the hysteresis phenom...
The modelling of the dynamic behavior of hysteretic materials and devices must take into account mag...
"A Neural Network (NN) approach for modelling dynamic hysteresis is presented. The modelling of the ...
For the evaluation of the dynamic hysteresis loops, a Neural Network (NN) combined with the Fourier ...
The excitation conditions of electrical steel are generally sinusoidal but, with the advent of power...
Abstract. Dynamic magnetic hysteresis modelling is of crucial importance in determining the electrom...
Power converters often features inductive devices in their architectures. Accurate simulation of the...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
The present investigation aims at the definition of an efficient and robust neural network-based mod...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
Although magnetic wound cores have simple geometries, their magnetic properties vary in a complex ma...
The dynamic hysteresis loops of a range of soft magnetic toroidal wound cores made from 3% SiFe 0.27...
A neural network model to predict the dynamic hysteresis loops and the energy-loss curves (i.e., the...
This work documents the research towards the development of a neural approach to represent ferromagn...
Validations from experimental testing of the capability of Neural Networks (NNs) in modelling dynami...
A computationally efficient and robust neural network-based model to reproduce the hysteresis phenom...
The modelling of the dynamic behavior of hysteretic materials and devices must take into account mag...
"A Neural Network (NN) approach for modelling dynamic hysteresis is presented. The modelling of the ...
For the evaluation of the dynamic hysteresis loops, a Neural Network (NN) combined with the Fourier ...
The excitation conditions of electrical steel are generally sinusoidal but, with the advent of power...
Abstract. Dynamic magnetic hysteresis modelling is of crucial importance in determining the electrom...
Power converters often features inductive devices in their architectures. Accurate simulation of the...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
The present investigation aims at the definition of an efficient and robust neural network-based mod...
A numerical approach for the evaluation of hysteresis loops in the harmonic regime is presented. Gen...
Although magnetic wound cores have simple geometries, their magnetic properties vary in a complex ma...