Enhanced Low-Resolution Contrast Operator Using Neural Networks for E-Polarized EM Scattering Problems

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Samenvatting

Coarse discretization introduces significant errors in the solution of scattering problems, in part due to discretization errors in the contrast operator. We present a procedure for the automatic construction of a modified contrast operator for electromagnetic scattering problems by using trainable neural networks to represent a modified contrast operator. We achieve a higher accuracy on a coarse discretization while still keeping computation time down compared to a fine discretization. By using synthetic data from a full-wave Maxwell solver to train the network for one-dimensional slab scatterers and two-dimensional polygonal scatterers, we are able to use the techniques found in deep learning to improve accuracy in coarse-grid forward scattering problems.
Originele taal-2Engels
Pagina's (van-tot)33-45
Aantal pagina's13
TijdschriftProgress in Electromagnetics Research M
Volume136
DOI's
StatusGepubliceerd - 17 nov. 2025

Trefwoorden

  • EM
  • Computational
  • AI
  • Neural networks
  • Numerical
  • Contrast
  • Domain integral
  • Spatial spectral
  • Maxwell solver

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