混合阶poincarcars光束的衍射超表面单镜头特性

IF 8 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Xiaoxin Li, Bojian Shi, Qi Jia, Yanxia Zhang, Yanyu Gao, Wenya Gao, Donghua Tang, Yongyin Cao, Fangkui Sun, Rui Feng, Weiqiang Ding
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引用次数: 0

摘要

具有复杂横向偏振态的混合阶庞卡罗光束在光通信和量子信息领域具有重要的应用潜力。充分表征hyopb的poincarcars参数是加速应用的关键任务。传统的方法通常需要在多个极化状态下进行映射,并逐点重建,这为快速测量和实时监测庞卡罗参数造成了根本瓶颈。在这项工作中,通过将衍射神经网络应用于级联衍射超表面系统,证明了一种单镜头实时表征方案。所设计的衍射超表面本质上是一个光学处理器,可以有效地提取高维空间模式和复杂幅度信息。在此基础上,利用电子深度神经网络准确地预测了庞卡罗参数,并对hyopb进行了正确的重构。通过一系列仿真研究验证了该方法的有效性,σ和θ的平均重构误差分别为2.68%和1.84%。这项工作为精确、紧凑和实时检测hyopb提供了一种有效的策略,为其在下一代高容量光通信系统中的应用铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Diffractive Metasurface-Enabled Single-Shot Characterization of Hybrid-Order Poincaré Beams

Diffractive Metasurface-Enabled Single-Shot Characterization of Hybrid-Order Poincaré Beams

Hybrid-order Poincaré beams (HyOPBs) with complex transverse polarization states hold significant potential in optical communication and quantum information. Fully characterizing the Poincaré parameters of HyOPBs is a key task to accelerate applications. Conventional methods typically require mapping in multiple polarization states and reconstructing point by point, creating a fundamental bottleneck for fast measurement and real-time monitoring of Poincaré parameters. In this work, a single-shot and real-time characterization scheme for HyOPBs is demonstrated by applying diffractive neural networks to a system of cascaded diffractive metasurfaces. The designed diffractive metasurfaces essentially function as an optical processor, efficiently extracting high-dimensional spatial modes and complex amplitude information. Whereafter, the Poincaré parameters are accurately predicted, and the HyOPBs are correctly reconstructed with the help of electronic deep neural networks. This innovative approach is validated through a series of simulation studies with average reconstruction errors of <2.68% for σ and 1.84% for θ, respectively. The work provides an effective strategy for precise, compact, and real-time detection of HyOPBs, paving the way for their application in the next generation of high-capacity optical communication systems.

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来源期刊
Advanced Optical Materials
Advanced Optical Materials MATERIALS SCIENCE, MULTIDISCIPLINARY-OPTICS
CiteScore
13.70
自引率
6.70%
发文量
883
审稿时长
1.5 months
期刊介绍: Advanced Optical Materials, part of the esteemed Advanced portfolio, is a unique materials science journal concentrating on all facets of light-matter interactions. For over a decade, it has been the preferred optical materials journal for significant discoveries in photonics, plasmonics, metamaterials, and more. The Advanced portfolio from Wiley is a collection of globally respected, high-impact journals that disseminate the best science from established and emerging researchers, aiding them in fulfilling their mission and amplifying the reach of their scientific discoveries.
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