Deep-Learning Empowered Inverse Design for Freeform Reconfigurable
Metasurfaces
- URL: http://arxiv.org/abs/2211.08296v1
- Date: Fri, 11 Nov 2022 15:01:32 GMT
- Title: Deep-Learning Empowered Inverse Design for Freeform Reconfigurable
Metasurfaces
- Authors: Changhao Liu, Fan Yang, Maokun Li, Shenheng Xu
- Abstract summary: We present a deep-learning empowered inverse design method for freeform reconfigurable metasurfaces.
A convolutional neural network model is trained to predict the responses of free-shaped meta-atoms.
An inverse-designed wideband reconfigurable metasurface prototype is fabricated and measured for beam scanning applications.
- Score: 3.728073286482581
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The past decade has witnessed the advances of artificial intelligence with
various applications in engineering. Recently, artificial neural network
empowered inverse design for metasurfaces has been developed that can design
on-demand meta-atoms with diverse shapes and high performance, where the design
process based on artificial intelligence is fast and automatic. However, once
the inverse-designed static meta-atom is fabricated, the function of the
metasurface is fixed. Reconfigurable metasurfaces can realize dynamic
functions, while applying artificial intelligence to design reconfigurable
meta-atoms inversely has not been reported yet. Here, we present a
deep-learning empowered inverse design method for freeform reconfigurable
metasurfaces, which can generate on-demand reconfigurable coding meta-atoms at
self-defined frequency bands. To reduce the scale of dataset, a decoupling
method of the reconfigurable meta-atom based on microwave network theory is
proposed at first, which can convert the inverse design process for
reconfigurable coding meta-atoms to the inverse design for static structures. A
convolutional neural network model is trained to predict the responses of
free-shaped meta-atoms, and the genetic algorithm is applied to generate the
optimal structure patterns rapidly. As a demonstration of concept, several
inverse-designed examples are generated with different self-defined spectrum
responses in microwave band, and an inverse-designed wideband reconfigurable
metasurface prototype is fabricated and measured for beam scanning applications
with broad bandwidth. Our work paves the way for the fast and automatic design
process of high-performance reconfigurable metasurfaces.
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