Photonics (Jul 2023)

Optimized Design of Plasma Metamaterial Absorber Based on Machine Learning

  • Leilei Gu,
  • Hongzhan Liu,
  • Zhongchao Wei,
  • Ruihuan Wu,
  • Jianping Guo

DOI
https://doi.org/10.3390/photonics10080874
Journal volume & issue
Vol. 10, no. 8
p. 874

Abstract

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Metamaterial absorbers have become a popular research direction due to their broad application prospects, such as in radar, infrared imaging, and solar cell fields. Usually, nanostructured metamaterials are associated with a large number of geometric parameters, and traditional simulation designs are time consuming. In this paper, we propose a framework for designing plasma metamaterial absorbers in both a forward prediction and inverse design composed of a primary prediction network (PPN) and an auxiliary prediction network (APN). The framework can build the relationship between the geometric parameters of metamaterials and their optical response (reflection spectra, absorption spectra) from a large number of training samples, thus solving the problem of time-consuming and case-by-case numerical simulations in traditional metamaterial design. This framework can not only improve forward prediction more accurately and efficiently but also inverse design metamaterial absorbers from a given required optical response. It was verified that it is also applicable to absorbers of different structures and materials. Our results show that it can be used in metamaterial absorbers, chiral metamaterials, metamaterial filters, and other fields.

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