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Deep-learning based broadband reflection reduction metasurface

Haiyan Xie, Xiuli Yue, Kaihuai Wen, Difei Liang, Tiancheng Han, Longjiang Deng

2023Optics Express20 citationsDOIOpen Access PDF

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<-10 dB) and 107.4% (reflection<-15 dB), which demonstrates a great advantage in bandwidth compared with the previous designs.

Topics & Concepts

BroadbandComputer scienceOpticsBandwidth (computing)Polarization (electrochemistry)TelecommunicationsPhysicsChemistryPhysical chemistryMetamaterials and Metasurfaces ApplicationsAdvanced Antenna and Metasurface TechnologiesAntenna Design and Analysis
Deep-learning based broadband reflection reduction metasurface | Litcius