Hysteresis Nonlinearity Identification Using New Preisach Model-Based Artificial Neural Network Approach

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 the main features of system with hysteresis behavior, due to its rigorous numerical nature, it is not convenient to use...

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Main Authors: Mohammad Reza Zakerzadeh, Mohsen Firouzi, Hassan Sayyaadi, Saeed Bagheri Shouraki
Format: Article
Language:English
Published: Wiley 2011-01-01
Series:Journal of Applied Mathematics
Online Access:http://dx.doi.org/10.1155/2011/458768
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author Mohammad Reza Zakerzadeh
Mohsen Firouzi
Hassan Sayyaadi
Saeed Bagheri Shouraki
author_facet Mohammad Reza Zakerzadeh
Mohsen Firouzi
Hassan Sayyaadi
Saeed Bagheri Shouraki
author_sort Mohammad Reza Zakerzadeh
collection DOAJ
description 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 the main features of system with hysteresis behavior, due to its rigorous numerical nature, it is not convenient to use in real-time control applications. Here a novel neural network approach based on the Preisach model is addressed, provides accurate hysteresis nonlinearity modeling in comparison with the classical Preisach model and can be used for many applications such as hysteresis nonlinearity control and identification in SMA and Piezo actuators and performance evaluation in some physical systems such as magnetic materials. To evaluate the proposed approach, an experimental apparatus consisting one-dimensional flexible aluminum beam actuated with an SMA wire is used. It is shown that the proposed ANN-based Preisach model can identify hysteresis nonlinearity more accurately than the classical one. It also has powerful ability to precisely predict the higher-order hysteresis minor loops behavior even though only the first-order reversal data are in use. It is also shown that to get the same precise results in the classical Preisach model, many more data should be used, and this directly increases the experimental cost.
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institution Kabale University
issn 1110-757X
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language English
publishDate 2011-01-01
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series Journal of Applied Mathematics
spelling doaj-art-7f6bd8510c3c4caf9318a628d858a9b32025-02-03T06:14:07ZengWileyJournal of Applied Mathematics1110-757X1687-00422011-01-01201110.1155/2011/458768458768Hysteresis Nonlinearity Identification Using New Preisach Model-Based Artificial Neural Network ApproachMohammad Reza Zakerzadeh0Mohsen Firouzi1Hassan Sayyaadi2Saeed Bagheri Shouraki3School of Mechanical Engineering, Sharif University of Technology, P.O. Box 11155-9567, Tehran, IranElectrical Engineering Department, Artificial Creature Lab, Sharif University of Technology, P.O. Box 11155-9567, Tehran, IranSchool of Mechanical Engineering, Sharif University of Technology, P.O. Box 11155-9567, Tehran, IranElectrical Engineering Department, Artificial Creature Lab, Sharif University of Technology, P.O. Box 11155-9567, Tehran, IranPreisach model is a well-known hysteresis identification method in which the hysteresis is modeled by linear combination of hysteresis operators. Although Preisach model describes the main features of system with hysteresis behavior, due to its rigorous numerical nature, it is not convenient to use in real-time control applications. Here a novel neural network approach based on the Preisach model is addressed, provides accurate hysteresis nonlinearity modeling in comparison with the classical Preisach model and can be used for many applications such as hysteresis nonlinearity control and identification in SMA and Piezo actuators and performance evaluation in some physical systems such as magnetic materials. To evaluate the proposed approach, an experimental apparatus consisting one-dimensional flexible aluminum beam actuated with an SMA wire is used. It is shown that the proposed ANN-based Preisach model can identify hysteresis nonlinearity more accurately than the classical one. It also has powerful ability to precisely predict the higher-order hysteresis minor loops behavior even though only the first-order reversal data are in use. It is also shown that to get the same precise results in the classical Preisach model, many more data should be used, and this directly increases the experimental cost.http://dx.doi.org/10.1155/2011/458768
spellingShingle Mohammad Reza Zakerzadeh
Mohsen Firouzi
Hassan Sayyaadi
Saeed Bagheri Shouraki
Hysteresis Nonlinearity Identification Using New Preisach Model-Based Artificial Neural Network Approach
Journal of Applied Mathematics
title Hysteresis Nonlinearity Identification Using New Preisach Model-Based Artificial Neural Network Approach
title_full Hysteresis Nonlinearity Identification Using New Preisach Model-Based Artificial Neural Network Approach
title_fullStr Hysteresis Nonlinearity Identification Using New Preisach Model-Based Artificial Neural Network Approach
title_full_unstemmed Hysteresis Nonlinearity Identification Using New Preisach Model-Based Artificial Neural Network Approach
title_short Hysteresis Nonlinearity Identification Using New Preisach Model-Based Artificial Neural Network Approach
title_sort hysteresis nonlinearity identification using new preisach model based artificial neural network approach
url http://dx.doi.org/10.1155/2011/458768
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AT mohsenfirouzi hysteresisnonlinearityidentificationusingnewpreisachmodelbasedartificialneuralnetworkapproach
AT hassansayyaadi hysteresisnonlinearityidentificationusingnewpreisachmodelbasedartificialneuralnetworkapproach
AT saeedbagherishouraki hysteresisnonlinearityidentificationusingnewpreisachmodelbasedartificialneuralnetworkapproach