Inverse Design of Metamaterials and Photonic Crystals Using Machine Learning
Paper in proceeding, 2024

We present an overview of our work on inverse design of metamaterials and photonic crystals. In the past few years, we have developed neural networks that can provide new designs for nanophotonic structures with predefined optical response. In particular, we have developed a CGAN network that can provide lithographic masks for a meta-atom with desired transmission and reflection properties. We illustrate our machine-learning-based inverse design with examples of metasurfaces with refractive properties, metasurfaces with meta-atoms with interdependent properties, nonlinear photonic-crystal waveguides, and photonic-crystal membranes for optomechanical resonators.

Author

Viktor Lilja

Chalmers, Physics, Condensed Matter and Materials Theory

Albin Jonasson Svärdsby

Chalmers, Physics, Condensed Matter and Materials Theory

Timo Gahlmann

Chalmers, Physics, Condensed Matter and Materials Theory

Philippe Tassin

Chalmers, Physics, Condensed Matter and Materials Theory

2024 18th International Congress on Artificial Materials for Novel Wave Phenomena, Metamaterials 2024


9798350373493 (ISBN)

18th International Congress on Artificial Materials for Novel Wave Phenomena, Metamaterials 2024
Chania, Greece,

Subject Categories

Telecommunications

Other Physics Topics

Condensed Matter Physics

DOI

10.1109/Metamaterials62190.2024.10703328

More information

Latest update

11/13/2024