4.8 Article

Deep Learning: A Rapid and Efficient Route to Automatic Metasurface Design

期刊

ADVANCED SCIENCE
卷 6, 期 12, 页码 -

出版社

WILEY
DOI: 10.1002/advs.201900128

关键词

absorbers; autoencoders; deep learning; discrete cosine transform; metasurfaces

资金

  1. National key R&D program of China [2017YFA0700201]
  2. National Natural Science Foundation of China [61331005, 61671467, 61671466, 61801509, 61501503, 51802349]
  3. Natural Science Foundation of Shaanxi Province [2017JM6005]

向作者/读者索取更多资源

Metasurfaces provide unprecedented routes to manipulations on electromagnetic waves, which can realize many exotic functionalities. Despite the rapid development of metasurfaces in recent years, the design process of metasurface is still time-consuming and computational resource-consuming. Moreover, it is quite complicated for layman users to design metasurfaces as plenty of specialized knowledge is required. In this work, a metasurface design method named REACTIVE is proposed on the basis of deep learning, as deep learning method has shown its natural advantages and superiorities in mining undefined rules automatically in many fields. REACTIVE is capable of calculating metasurface structure directly through a given design target; meanwhile, it also shows the advantage in making the design process automatic, more efficient, less time-consuming, and less computational resource-consuming. Besides, it asks for less professional knowledge, so that engineers are required only to pay attention to the design target. Herein, a triple-band absorber is designed using the REACTIVE method, where a deep learning model computes the metasurface structure automatically through inputting the desired absorption rate. The whole design process is achieved 200 times faster than the conventional one, which convincingly demonstrates the superiority of this design method. REACTIVE is an effective design tool for designers, especially for laymen users and engineers.

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