Solving 1D non-linear magneto quasi-static Maxwell's equations using neural networks

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Baldan, M.; Baldan, G.; Nacke, B.: Solving 1D non-linear magneto quasi-static Maxwell's equations using neural networks. In: IET Science, Measurement & Technology 15 (2021), Nr. 2, S. 204-217. DOI: https://doi.org/10.1049/smt2.12022

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Abstract: 
Electromagnetics (EM) can be described, together with the constitutive laws, by four PDEs, called Maxwell's equations. “Quasi-static” approximations emerge from neglecting particular couplings of electric and magnetic field related quantities. In case of slowly time varying fields, if inductive and resistive effects have to be considered, whereas capacitive effects can be neglected, the magneto quasi-static (MQS) approximation applies. The solution of the MQS Maxwell's equations, traditionally obtained with finite differences and elements methods, is crucial in modelling EM devices. In this paper, the applicability of an unsupervised deep learning model is studied in order to solve MQS Maxwell's equations, in both frequency and time domain. In this framework, a straightforward way to model hysteretic and anhysteretic non-linearity is shown. The introduced technique is used for the field analysis in the place of the classical finite elements in two applications: on the one hand, the B–H curve inverse determination of AISI 4140, on the other, the simulation of an induction heating process. Finally, since many of the commercial FEM packages do not allow modelling hysteresis, it is shown how the present approach could be further adopted for the inverse magnetic properties identification of new magnetic flux concentrators for induction applications.
License of this version: CC BY 4.0 Unported
Document Type: Article
Publishing status: publishedVersion
Issue Date: 2021
Appears in Collections:Fakultät für Elektrotechnik und Informatik

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pos. country downloads
total perc.
1 image of flag of Germany Germany 17 35.42%
2 image of flag of United States United States 13 27.08%
3 image of flag of France France 5 10.42%
4 image of flag of Italy Italy 2 4.17%
5 image of flag of Indonesia Indonesia 2 4.17%
6 image of flag of Korea, Republic of Korea, Republic of 1 2.08%
7 image of flag of Japan Japan 1 2.08%
8 image of flag of India India 1 2.08%
9 image of flag of China China 1 2.08%
10 image of flag of United Arab Emirates United Arab Emirates 1 2.08%
    other countries 4 8.33%

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