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Optimization of metamaterials and metamaterial-microcavity based on deep neural networks.

Guoqiang LanYu WangJun-Yu Ou
Published in: Nanoscale advances (2022)
Computational inverse-design and forward prediction approaches provide promising pathways for on-demand nanophotonics. Here, we use a deep-learning method to optimize the design of split-ring metamaterials and metamaterial-microcavities. Once the deep neural network is trained, it can predict the optical response of the split-ring metamaterial in a second which is much faster than conventional simulation methods. The pretrained neural network can also be used for the inverse design of split-ring metamaterials and metamaterial-microcavities. We use this method for the design of the metamaterial-microcavity with the absorptance peak at 1310 nm. Experimental results verified that the deep-learning method is a fast, robust, and accurate method for designing metamaterials with complex nanostructures.
Keyphrases
  • neural network
  • deep learning
  • high resolution
  • machine learning
  • artificial intelligence
  • convolutional neural network
  • photodynamic therapy