Deep-learning based broadband reflection reduction metasurface

  • Xie H
  • Yue X
  • Wen K
  • et al.
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Abstract

Reflection reduction metasurface (RRM) has been drawing much attention due to its potential application in stealth technology. However, the traditional RRM is designed mainly based on trial-and-error approaches, which is time-consuming and leads to inefficiency. Here, we report the design of a broadband RRM based on deep-learning methodology. On one hand, we construct a forward prediction network that can forecast the polarization conversion ratio (PCR) of the metasurface in a millisecond, demonstrating a higher efficiency than traditional simulation tools. On the other hand, we construct an inverse network to immediately derive the structure parameters once a target PCR spectrum is given. Thus, an intelligent design methodology of broadband polarization converters has been established. When the polarization conversion units are arranged in chessboard layout with 0/1 form, a broadband RRM is achieved. The experimental results show that the relative bandwidth reaches 116% (reflection

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Xie, H., Yue, X., Wen, K., Liang, D., Han, T., & Deng, L. (2023). Deep-learning based broadband reflection reduction metasurface. Optics Express, 31(9), 14593. https://doi.org/10.1364/oe.486096

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