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Reduced order model approaches for predicting the magnetic polarizability tensor for multiple parameters of interest

Elgy, James; Ledger, Paul D.

Authors

James Elgy



Abstract

The design of magnets for magnetic resonance imaging (MRI) scanners requires the numerical simulation of a coupled magneto-mechanical system where the effects that different material parameters and in-service loading conditions have on both imaging and MRI performance are key to aid with the design and the manufacturing process. To correctly capture the complex physics, and to obtain accurate solutions, finite element simulations with dense meshes and high order elements are needed. Reduced order model approaches, based on the established proper orthogonal decomposition (POD) approach, are attractive as they can rapidly predict the numerical simulations needed under changing parameters or conditions. However, the projected (PODP) approach has an invasive computational implementation, whilst the interpolated (PODI) approach presents challenges when the dimension of the space of parameters to be investigated becomes large. As an alternative, we investigate a POD technique based on using a neural network regression, which is not as invasive as PODP, but has superior approximation properties compared to PODI. We apply this to the coupled magneto-mechanical system to understand three pressing industrial problems: firstly, the accurate and rapid computation of the resonant frequencies associated with this coupled magneto-mechanical system, secondly, the effects of magnet motion on the Ohmic power and kinetic energy curves, and, thirdly, the prediction of the uncertainty in Ohmic power and kinetic energy curves as a function of exciting frequency for uncertain material parameters.

Citation

Elgy, J., & Ledger, P. D. (2023). Reduced order model approaches for predicting the magnetic polarizability tensor for multiple parameters of interest. Engineering with Computers, 39(6), 4061-4076. https://doi.org/10.1007/s00366-023-01868-x

Journal Article Type Article
Acceptance Date Jun 25, 2023
Online Publication Date Jul 15, 2023
Publication Date Dec 1, 2023
Deposit Date Jul 15, 2023
Journal Engineering with Computers
Print ISSN 0177-0667
Electronic ISSN 1435-5663
Publisher Springer Verlag
Peer Reviewed Peer Reviewed
Volume 39
Issue 6
Pages 4061-4076
DOI https://doi.org/10.1007/s00366-023-01868-x
Keywords Finite element method; Magnetic polarizability tensor; Metal detection; Object characterisation; Reduced order model; Neural networks
Publisher URL https://link.springer.com/article/10.1007/s00366-023-01870-3