超材料
计算机科学
生成模型
忠诚
全息术
直觉
生成语法
反向
高保真
反问题
生成设计
光学
物理
人工智能
数学
材料科学
几何学
数学分析
声学
电信
复合材料
哲学
认识论
相容性(地球化学)
作者
Zhaocheng Liu,Dayu Zhu,Sean P. Rodrigues,Kyu‐Tae Lee,Wenshan Cai
出处
期刊:Nano Letters
[American Chemical Society]
日期:2018-09-12
卷期号:18 (10): 6570-6576
被引量:744
标识
DOI:10.1021/acs.nanolett.8b03171
摘要
The advent of two-dimensional metamaterials in recent years has ushered in a revolutionary means to manipulate the behavior of light on the nanoscale. The effective parameters of these architected materials render unprecedented control over the optical properties of light, thereby eliciting previously unattainable applications in flat lenses, holographic imaging, and emission control among others. The design of such structures, to date, has relied on the expertise of an optical scientist to guide a progression of electromagnetic simulations that iteratively solve Maxwell's equations until a locally optimized solution can be attained. In this work, we identify a solution to circumvent this intuition-guided design by means of a deep learning architecture. When fed an input set of optical spectra, the constructed generative network assimilates a candidate pattern from a user-defined dataset of geometric structures in order to match the input spectra. The generated metamaterial patterns demonstrate high fidelity, yielding equivalent optical spectra at an average accuracy of about 0.9. This approach reveals an opportunity to expedite the discovery and design of metasurfaces for tailored optical responses in a systematic, inverse-design manner.
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