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  4. A learning based approach for designing extended unit cell metagratings
 
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A learning based approach for designing extended unit cell metagratings

Source
Nanophotonics
Date Issued
2022-01-02
Author(s)
Panda, Soumyashree S.
Hegde, Ravi S.  
DOI
10.1515/nanoph-2021-0540
Volume
11
Issue
2
Abstract
The possibility of arbitrary spatial control of incident wavefronts with the subwavelength resolution has driven research into dielectric optical metasurfaces in the last decade. The unit-cell based metasurface design approach that relies on a library of single element responses is known to result in reduced efficiency attributed to the inadequate accounting of the coupling effects between meta-atoms. Metasurfaces with extended unit-cells containing multiple resonators can improve design outcomes but their design requires extensive numerical computing and optimizations. We report a deep learning based design methodology for the inverse design of extended unit-cell metagratings. In contrast to previous reports, our approach learns the metagrating spectral response across its reflected and transmitted orders. Through systematic exploration, we discover network architectures and training dataset sampling strategies that allow such learning without requiring extensive ground-truth generation. The one-time investment of model creation can then be used to significantly accelerate numerical optimization of multiple functionalities as demonstrated by considering the inverse design of various spectral and polarization dependent splitters and filters. The proposed methodology is not limited to these proof-of-concept demonstrations and can be broadly applied to meta-atom-based nanophotonic system design and in realising the next generation of metasurface functionalities with improved performance.
Publication link
https://www.degruyter.com/document/doi/10.1515/nanoph-2021-0540/pdf
URI
http://repository.iitgn.ac.in/handle/IITG2025/25149
Subjects
color filters and splitter | deep learning | evolutionary optimization | inverse design | metagratings | metasurface design
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