Magnetostatics and micromagnetics with physics informed neural networks
Alexander Kovacs,
Lukas Exl,
Alexander Kornell
et al.
Abstract:Partial differential equations and variational problems can be solved with physics informed neural networks (PINNs). The unknown field is approximated with neural networks. Minimizing the residuals of the static Maxwell equation at collocation points or the magnetostatic energy, the weights of the neural network are adjusted so that the neural network solution approximates the magnetic vector potential. This way, the magnetic flux density for a given magnetization distribution can be estimated. With the magnet… Show more
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