4.8 Article

Deep-Learning-Enabled On-Demand Design of Chiral Metamaterials

Journal

ACS NANO
Volume 12, Issue 6, Pages 6326-6334

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acsnano.8b03569

Keywords

deep learning; neural network; chirality; metamaterial; on-demand design

Funding

  1. Office of Naval Research [N00014-16-1-2409]

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Deep-learning framework has significantly impelled the development of modern machine learning technology by continuously pushing the limit of traditional recognition and processing of images, speech, and videos. In the meantime, it starts to penetrate other disciplines, such as biology, genetics, materials science, and physics. Here, we report a deep-learning-based model, comprising two bidirectional neural networks assembled by a partial stacking strategy, to automatically design and optimize three-dimensional chiral metamaterials with strong chiroptical responses at predesignated wavelengths. The model can help to discover the intricate, nonintuitive relationship between a metamaterial structure and its optical responses from a number of training examples, which circumvents the time-consuming, case-by-case numerical simulations in conventional metamaterial designs. This approach not only realizes the forward prediction of optical performance much more accurately and efficiently but also enables one to inversely retrieve designs from given requirements. Our results demonstrate that such a data-driven model can be applied as a very powerful tool in studying complicated light-matter interactions and accelerating the on-demand design of nanophotonic devices, systems, and architectures for real world applications.

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