Document Type
Article
Publication Date
8-17-2020
Publication Source
Optics Express
Abstract
Optical materials engineered to dynamically and selectively manipulate electromag- netic waves are essential to the future of modern optical systems. In this paper, we simulate various metasurface configurations consisting of periodic 1D bars or 2D pillars made of the ternary phase change material Ge2Sb2Te5 (GST). Dynamic switching behavior in reflectance is exploited due to a drastic refractive index change between the crystalline and amorphous states of GST. Selectivity in the reflection and transmission spectra is manipulated by tailoring the geometrical parameters of the metasurface. Due to the immense number of possible metasurface configurations, we train deep neural networks capable of exploring all possible designs within the working parameter space. The data requirements, predictive accuracy, and robustness of these neural networks are benchmarked against a ground truth by varying quality and quantity of training data. After ensuring trustworthy neural network advisory, we identify and validate optimal GST metasurface configurations best suited as dynamic switchable mirrors depending on selected light and manufacturing constraints.
Inclusive pages
24629-24656
ISBN/ISSN
1094-4087
Document Version
Published Version
Publisher
Optica Publishing Group
Volume
28
Issue
17
Peer Reviewed
yes
eCommons Citation
Thompson, J. R.; Burrow, J. A.; Shah, P. J.; Slagle, J.; Harper, E. S.; Rynbach, A. Van; Agha, I.; and Mills, M. S., "Artificial Neural Network Discovery of a Switchable Metasurface Reflector" (2020). Electro-Optics and Photonics Faculty Publications. 138.
https://ecommons.udayton.edu/eop_fac_pub/138
Comments
This open-access article is provided for download in compliance with the publisher’s policy on self-archiving. To view the version of record, use the DOI: https://doi.org/10.1364/OE.400360