Communications Engineering (Aug 2023)

Large area optimization of meta-lens via data-free machine learning

  • Maksym Zhelyeznyakov,
  • Johannes Fröch,
  • Anna Wirth-Singh,
  • Jaebum Noh,
  • Junsuk Rho,
  • Steve Brunton,
  • Arka Majumdar

DOI
https://doi.org/10.1038/s44172-023-00107-x
Journal volume & issue
Vol. 2, no. 1
pp. 1 – 8

Abstract

Read online

Abstract Sub-wavelength diffractive optics, commonly known as meta-optics, present a complex numerical simulation challenge, due to their multi-scale nature. The behavior of constituent sub-wavelength scatterers, or meta-atoms, needs to be modeled by full-wave electromagnetic simulations, whereas the whole meta-optical system can be modeled using ray/ Fourier optics. Most simulation techniques for large-scale meta-optics rely on the local phase approximation (LPA), where the coupling between dissimilar meta-atoms is neglected. Here we introduce a physics-informed neural network, coupled with the overlapping boundary method, which can efficiently model the meta-optics while still incorporating all of the coupling between meta-atoms. We demonstrate the efficacy of our technique by designing 1mm aperture cylindrical meta-lenses exhibiting higher efficiency than the ones designed under LPA. We experimentally validated the maximum intensity improvement (up to 53%) of the inverse-designed meta-lens. Our reported method can design large aperture ( ~ 104 − 105 λ) meta-optics in a reasonable time (approximately 15 minutes on a graphics processing unit) without relying on the LPA.