Hysteresis identification using extended preisach neural network

M Farrokh, FS Dizaji, MS Dizaji - Neural Processing Letters, 2022 - Springer
Hysteresis phenomena have been observed in different branches of physics and
engineering sciences. Therefore several models have been proposed for hysteresis …

Universal hysteresis identification using extended Preisach neural network

M Farrokh, MS Dizaji, FS Dizaji… - arXiv preprint arXiv …, 2019 - arxiv.org
Hysteresis phenomena have been observed in different branches of physics and
engineering sciences. Therefore, several models have been proposed for hysteresis …

Diagonal recurrent neural network-based hysteresis modeling

G Chen, G Chen, Y Lou - IEEE Transactions on Neural …, 2021 - ieeexplore.ieee.org
The Preisach model and the neural networks are two of the most popular strategies to model
hysteresis. In this article, we first mathematically prove that the rate-independent Preisach …

Hysteresis nonlinearity identification using new Preisach model‐based artificial neural network approach

MR Zakerzadeh, M Firouzi, H Sayyaadi… - Journal of Applied …, 2011 - Wiley Online Library
Preisach model is a well‐known hysteresis identification method in which the hysteresis is
modeled by linear combination of hysteresis operators. Although Preisach model describes …

Adaptive simulation of hysteresis using neuro-Madelung model

M Farrokh, MS Dizaji - Journal of Intelligent Material …, 2016 - journals.sagepub.com
Hysteretic phenomena have been observed in different branches of engineering sciences.
Although each of them has its own characteristics, Madelung's rules are common among …

Hysteresis simulation using least-squares support vector machine

M Farrokh - Journal of Engineering Mechanics, 2018 - ascelibrary.org
Hysteresis is a highly nonlinear phenomenon, which is observed in different branches of
sciences. The behavior of the hysteretic systems is usually controlled by some …

Modeling of quasistatic magnetic hysteresis with feed-forward neural networks

D Makaveev, L Dupré, M De Wulf… - Journal of Applied …, 2001 - pubs.aip.org
A modeling technique for rate-independent (quasistatic) scalar magnetic hysteresis is
presented, using neural networks. Based on the theory of dynamic systems and the wiping …

Adaptive modeling of highly nonlinear hysteresis using preisach neural networks

M Farrokh, A Joghataie - Journal of Engineering Mechanics, 2014 - ascelibrary.org
In this paper, a new type of multilayer feedforward neural network has been proposed based
on inspiration from the Preisach model, which has been called the Preisach neural network …

Improved EHM-based NN hysteresis model

L Ma, Y Tan, Y Chu - Sensors and Actuators A: Physical, 2008 - Elsevier
An improved EHM-based hysteresis model is proposed in this paper. In this scheme, neural
networks are employed to implement the mapping between the input and output of …

A neural networks based model of inverse hysteresis

L Ma, Y Tan, Y Shen - Physica B: Condensed Matter, 2011 - Elsevier
A novel and simple approach based on transformation using neural networks is proposed in
this paper to model the inverse behavior of hysteresis. In this approach, a continuous …