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Physics-Informed Neural Networks for Solving 2-D Magnetostatic Fields | IEEE Journals & Magazine | IEEE Xplore

Physics-Informed Neural Networks for Solving 2-D Magnetostatic Fields


Abstract:

Physics-informed neural network (PINN) has shown great potential in inverse and parametric designing problems in electrical engineering. Moreover, most existing works on ...Show More

Abstract:

Physics-informed neural network (PINN) has shown great potential in inverse and parametric designing problems in electrical engineering. Moreover, most existing works on PINN are dedicated to computational fluids, and very little attention has been paid to static and low-frequency electromagnetic near fields with multiple media in electrical engineering applications. In this work, a PINN for solving 2-D magnetostatic fields in electromagnetic devices and systems is proposed. The magnetic field intensity and the magnetic vector potential are solved by training a neural network (NN) which encodes partial differential equations (PDEs) and boundary conditions (BCs) as residuals. The computation of the spatial derivatives of media constitutive parameters, which negatively impacts the training of PINN, is eliminated. A mesh-assisted non-uniform sampling method for the selection of collocation points is proposed to further improve the performance of PINN. The proposed PINN is verified by comparing its results with those of the finite-element method (FEM) in two 2-D magnetostatic case studies. It is expected that this work will promote further applications of PINN in the modeling, numerical analysis, and parametric design of electromagnetic devices and systems.
Published in: IEEE Transactions on Magnetics ( Volume: 59, Issue: 11, November 2023)
Article Sequence Number: 7002005
Date of Publication: 01 June 2023

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