Injecting Physics Knowledge in Neural Networks for a Wide Range of Photonic Devices: QNM-Net
Paper in proceeding, 2025

We will present our work on QNM-Net, a physics-informed neural network for electromagnetic scattering. Our network in corporates physics knowledge through the quasi-normal-mode framework, which means it can model a vast range of (nano) photonic devices. By incorporating physics knowledge, we can achieve a tenfold reduction of training data needed.

Author

Viktor Aadland 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

International Conference on Metamaterials, Photonic Crystals and Plasmonics

24291390 (eISSN)

369-370

15th International Conference on Metamaterials, Photonic Crystals and Plasmonics, META 2025
Malaga, Spain,

Creating New Photonic Metasurfaces with Artificial Intelligence

Swedish Research Council (VR) (2020-05284), 2020-12-01 -- 2024-11-30.

Subject Categories (SSIF 2025)

Atom and Molecular Physics and Optics

Condensed Matter Physics

Other Physics Topics

Areas of Advance

Nanoscience and Nanotechnology

Infrastructure

Chalmers e-Commons (incl. C3SE, 2020-)

More information

Latest update

9/5/2025 1