Deep neural networks for the prediction of the optical properties and the free-form inverse design of metamaterials
Artikel i vetenskaplig tidskrift, 2022

Many phenomena in physics, including light, water waves, and sound, are described by wave equations. Given their coefficients, wave equations can be solved to high accuracy, but the presence of the wavelength scale often leads to large computer simulations for anything beyond the simplest geometries. The inverse problem, determining the coefficients from a field on a boundary, is even more demanding, since traditional optimization requires a large number of forward problems to be solved sequentially. Here we show that the free-form inverse problem of wave equations can be solved with machine learning. First we show that deep neural networks can be used to predict the optical properties of nanostructured materials such as metasurfaces. Then we demonstrate the free-form inverse design of such nanostructures and show that constraints imposed by experimental feasibility can be taken into account. Our neural networks promise automated design in several technologies based on the wave equation.

Författare

Timo Gahlmann

Chalmers, Fysik, Kondenserad materie- och materialteori

Philippe Tassin

Chalmers, Fysik, Kondenserad materie- och materialteori

Physical Review B

2469-9950 (ISSN) 2469-9969 (eISSN)

Vol. 106 8 085408

Ämneskategorier

Beräkningsmatematik

Annan fysik

Matematisk analys

DOI

10.1103/PhysRevB.106.085408

Mer information

Senast uppdaterat

2023-06-15