期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Metasurfaces designed by a bidirectional deep neural network and iterative algorithm for generating quantitative field distributions 被引量:11
1
作者 Yang Zhu Xiaofei Zang +3 位作者 haoxiang chi Yiwen Zhou Yiming Zhu Songlin Zhuang 《Light(Advanced Manufacturing)》 2023年第2期28-38,共11页
Metasurfaces,which are the two-dimensional counterparts of metamaterials,have demonstrated unprecedented capabilities to manipulate the wavefront of electromagnetic waves in a single flat device.Despite various advanc... Metasurfaces,which are the two-dimensional counterparts of metamaterials,have demonstrated unprecedented capabilities to manipulate the wavefront of electromagnetic waves in a single flat device.Despite various advances in this field,the unique functionalities achieved by metasurfaces have come at the cost of the structural complexity,resulting in a time-consuming parameter sweep for the conventional metasurface design.Although artificial neural networks provide a flexible platform for significantly improving the design process,the current metasurface designs are restricted to generating qualitative field distributions.In this study,we demonstrate that by combining a tandem neural network and an iterative algorithm,the previous restriction of the design of metasurfaces can be overcome with quantitative field distributions.As proof-of-principle examples,metalenses predicted via the designed network architecture that possess multiple focal points with identical/orthogonal polarisation states,as well as accurate intensity ratios(quantitative field distributions),were numerically calculated and experimentally demonstrated.The unique and robust approach for the metasurface design will enable the acceleration of the development of devices with high-accuracy functionalities,which can be applied in imaging,detecting,and sensing. 展开更多
关键词 Metasurfaces Bidirectional deep neural network Iterative algorithm Focal points VORTEX
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部