A computationally efficient hysteresis model, based on a standalone deep neural network, with the capability of reproducing the evolution of the magnetization under arbitrary excitations, is here presented and applied in the simulation of a commercial grain-oriented electrical steel sheet. The main novelty of the proposed approach is to embed the past history dependence, typical of hysteretic materials, in the neural net, and to illustrate an optimized training procedure. Firstly, an experimental investigation was carried out on a sample of commercial GO steel by means of an Epstein equipment, in agreement with the international standard. Then, the traditional Preisach model, identified only using three measured symmetric hysteresis loops, ...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
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 ...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient and robust neural network-based model to reproduce the hysteresis phenom...
A computationally efficient and robust neural network-based model to reproduce the hysteresis phenom...
The present investigation aims at the definition of an efficient and robust neural network-based mod...
This work documents the research towards the development of a neural approach to represent ferromagn...
This work documents the research towards the development of a neural approach to represent ferromagn...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
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 ...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient hysteresis model, based on a standalone deep neural network, with the ca...
A computationally efficient and robust neural network-based model to reproduce the hysteresis phenom...
A computationally efficient and robust neural network-based model to reproduce the hysteresis phenom...
The present investigation aims at the definition of an efficient and robust neural network-based mod...
This work documents the research towards the development of a neural approach to represent ferromagn...
This work documents the research towards the development of a neural approach to represent ferromagn...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
This paper deals with a neural network approach to model magnetic hysteresis at macro-magnetic scale...
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 ...