| Literature DB >> 34016963 |
Ruichao Zhu1, Tianshuo Qiu1, Jiafu Wang2, Sai Sui3, Chenglong Hao4, Tonghao Liu1, Yongfeng Li1, Mingde Feng1, Anxue Zhang5, Cheng-Wei Qiu6,7, Shaobo Qu8.
Abstract
Metasurfaces have provided unprecedented freedom for manipulating electromagnetic waves. In metasurface design, massive meta-atoms have to be optimized to produce the desired phase profiles, which is time-consuming and sometimes prohibitive. In this paper, we propose a fast accurate inverse method of designing functional metasurfaces based on transfer learning, which can generate metasurface patterns monolithically from input phase profiles for specific functions. A transfer learning network based on GoogLeNet-Inception-V3 can predict the phases of 28×8 meta-atoms with an accuracy of around 90%. This method is validated via functional metasurface design using the trained network. Metasurface patterns are generated monolithically for achieving two typical functionals, 2D focusing and abnormal reflection. Both simulation and experiment verify the high design accuracy. This method provides an inverse design paradigm for fast functional metasurface design, and can be readily used to establish a meta-atom library with full phase span.Entities:
Year: 2021 PMID: 34016963 DOI: 10.1038/s41467-021-23087-y
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919