计算机科学
自由度(物理和化学)
光学
物理
量子力学
作者
Sensong An,Bowen Zheng,Mikhail Y. Shalaginov,Hong Tang,Hang Li,L. P. Zhou,Jun Ding,Anu Agarwal,Clara Rivero‐Baleine,Myungkoo Kang,Kathleen Richardson,Tian Gu,Juejun Hu,Clayton Fowler,Hualiang Zhang
出处
期刊:Optics Express
[Optica Publishing Group]
日期:2020-08-31
卷期号:28 (21): 31932-31932
被引量:119
摘要
Metasurfaces have shown promising potentials in shaping optical wavefronts while remaining compact compared to bulky geometric optics devices. The design of meta-atoms, the fundamental building blocks of metasurfaces, typically relies on trial and error to achieve target electromagnetic responses. This process includes the characterization of an enormous amount of meta-atom designs with varying physical and geometric parameters, which demands huge computational resources. In this paper, a deep learning-based metasurface/meta-atom modeling approach is introduced to significantly reduce the characterization time while maintaining accuracy. Based on a convolutional neural network (CNN) structure, the proposed deep learning network is able to model meta-atoms with nearly freeform 2D patterns and different lattice sizes, material refractive indices and thicknesses. Moreover, the presented approach features the capability of predicting a meta-atom’s wide spectrum response in the timescale of milliseconds, attractive for applications necessitating fast on-demand design and optimization of a meta-atom/metasurface.
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