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Metasurface design with a complex residual neural network

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Abstract

In recent years, researchers have made great progress in solving complex electromagnetic field computing problems by using deep learning methods. However, the approaches found in literature were devoted to solving the real-number problem of electromagnetic field calculations. For the complex number problem, there was no good solution. Here, we proposed an advanced computation method for metasurfaces based on a complex residual neural network (CRNN). We predicted the scattering ${({S})_{21}}$ parameters of a cylindrical structure in the range of 1.2 to 1.7 µm wavelengths. By providing a set of cylindrical structure parameters, we could quickly predict the ${{S}_{21}}$ parameters with CRNN and design a metalens, which proved the ability of the proposed method. In addition, our method can also be extended to the calculation of electromagnetic fields where the speed of the calculation of the complex number of metasurfaces should be accelerated.

© 2023 Optica Publishing Group

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Supplementary Material (2)

NameDescription
Dataset 1       design code;train and test dataset;
Supplement 1       Comparison of computation time

Data availability

Data underlying the results presented in this paper are available in Dataset 1, Ref. [29].

29. K. Liu, “Metasurface design with a complex residual neural network,” figshare, 2022https://doi.org/10.6084/m9.figshare.21331494.

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