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Identification of a hysteresis model parameters with genetic algorithms

✍ Scribed by Krzysztof Chwastek; Jan Szczyglowski


Publisher
Elsevier Science
Year
2006
Tongue
English
Weight
167 KB
Volume
71
Category
Article
ISSN
0378-4754

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✦ Synopsis


The paper is concerned about the application of genetic algorithms to the estimation of magnetic hysteresis model parameters, based on the description of magnetization process proposed by Jiles and Atherton. The genetic algorithm approach has been applied to estimation of model parameters for two magnetic materials -a conventional non-oriented steel and a modern amorphous material. The errors between the modelled and experimental data points on M -H plane have been determined. The results have been compared with the results obtained with the previously proposed approach, based on direct search method. It has been proved that the genetic algorithm approach results in lower percentage errors.


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