Zhao Yu, Wang Huijiao, Huang Tian, Guan Zhiqiang, Li Zile, Yu Lei, Yu Shaohua, Zheng Guoxing
Electronic Information School, and School of Microelectronics, Wuhan University, Wuhan 430072, China.
Peng Cheng Laboratory, Shenzhen 518055, China.
Nanophotonics. 2024 Sep 5;13(22):4181-4189. doi: 10.1515/nanoph-2024-0338. eCollection 2024 Sep.
Advancements in computer science have propelled society into an era of data explosion, marked by a critical need for enhanced data transmission capacity, particularly in the realm of space-division multiplexing and demultiplexing devices for fiber communications. However, recently developed mode demultiplexers primarily focus on mode divisions within one dimension rather than multiple dimensions (i.e., intensity distributions and polarization states), which significantly limits their applicability in space-division multiplexing communications. In this context, we introduce a neural network-assisted meta-router to recognize intensity distributions and polarization states of optical fiber modes, achieved through a single layer of metasurface optimized via neural network techniques. Specifically, a four-mode meta-router is theoretically designed and experimentally characterized, which enables four modes, comprising two spatial modes with two polarization states, independently divided into distinct spatial regions, and successfully recognized by positions of corresponding spatial regions. Our framework provides a paradigm for fiber mode demultiplexing apparatus characterized by application compatibility, transmission capacity, and function scalability with ultra-simple design and ultra-compact device. Merging metasurfaces, neural network and mode routing, this proposed framework paves a practical pathway towards intelligent metasurface-aided optical interconnection, including applications such as fiber communication, object recognition and classification, as well as information display, processing, and encryption.
计算机科学的进步已将社会推进到一个数据爆炸的时代,其标志是对增强数据传输能力的迫切需求,特别是在光纤通信的空分复用和解复用设备领域。然而,最近开发的模式解复用器主要关注一维内的模式划分,而非多维(即强度分布和偏振态),这极大地限制了它们在空分复用通信中的适用性。在此背景下,我们引入了一种神经网络辅助的元路由器,以识别光纤模式的强度分布和偏振态,这是通过经由神经网络技术优化的单层超表面实现的。具体而言,从理论上设计并通过实验表征了一种四模式元路由器,它能将包含具有两种偏振态的两个空间模式的四种模式独立地划分到不同的空间区域,并通过相应空间区域的位置成功识别。我们的框架为光纤模式解复用装置提供了一种范例,其具有应用兼容性、传输能力以及功能可扩展性,且设计超简单、设备超紧凑。融合超表面、神经网络和模式路由,这一提出的框架为智能超表面辅助的光互连铺平了一条实用途径,包括光纤通信、目标识别与分类以及信息显示、处理和加密等应用。