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Inverse design of metasurface optical filters using deep neural network with high degrees of freedom
Author(s) -
Han Xiao,
Fan Ziyang,
Liu Zeyang,
Li Chao,
Guo L. Jay
Publication year - 2021
Publication title -
infomat
Language(s) - English
Resource type - Journals
ISSN - 2567-3165
DOI - 10.1002/inf2.12116
Subject(s) - traverse , artificial neural network , computer science , degrees of freedom (physics and chemistry) , inverse , process (computing) , inverse problem , algorithm , optics , artificial intelligence , mathematics , physics , mathematical analysis , geometry , quantum mechanics , geodesy , geography , operating system
In order to obtain a metasurface structure capable of filtering light of a specific wavelength range in the visible band, the traditional methods usually traverse the space consisting of possible designs, searching for a potentially satisfactory structure by performing iterative calculations to solve Maxwell's equations. In this article, we propose a systematic method based on neural networks that can complete an inverse design process to solve the problem. Compared with the traditional methods, our method is much faster while competent to encompass a high degree of freedom to generate device structures, which can ensure that the spectra of generated structures resemble the desired ones.

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