4.7 Article

On-demand design of spectrally sensitive multiband absorbers using an artificial neural network

期刊

PHOTONICS RESEARCH
卷 9, 期 4, 页码 B153-B158

出版社

CHINESE LASER PRESS
DOI: 10.1364/PRJ.415789

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资金

  1. National Research Foundation of Korea [NRF2018M3D1A1058998, NRF-2019R1A2C3003129, CAMM2019M3A6B3030637, NRF-2019R1A5A8080290, NRF2020K1A3A1A21024374]
  2. Ministry of Education [NRF2017H1A2A1043322, NRF-2019H1A2A1076295]

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This study utilized deep learning to design spectrally sensitive multiband absorbers in the visible range, proposing a five-layered metal-insulator-metal grating structure designed with an ANN and validating the optical properties of the design. The research demonstrates that the trained ANN can learn physical knowledge and suggests a method to reduce the size of the ANN.
We report an approach assisted by deep learning to design spectrally sensitive multiband absorbers that work in the visible range. We propose a five-layered metal-insulator-metal grating structure composed of aluminum and silicon dioxide, and we design its structural parameters by using an artificial neural network (ANN). For a spectrally sensitive design, spectral information of resonant wavelengths is additionally provided as input as well as the reflection spectrum. The ANN facilitates highly robust design of a grating structure that has an average mean squared error (MSE) of 0.023. The optical properties of the designed structures are validated using electromagnetic simulations and experiments. Analysis of design results for gradually changing target wavelengths of input shows that the trained ANN can learn physical knowledge from data. We also propose a method to reduce the size of the ANN by exploiting observations of the trained ANN for practical applications. Our design method can also be applied to design various nanophotonic structures that are particularly sensitive to resonant wavelengths, such as spectroscopic detection and multi-color applications. (C) 2021 Chinese Laser Press

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