Neural network-assisted meta-router for fiber mode and polarization demultiplexing
Author:
Zhao Yu12, Wang Huijiao1, Huang Tian1, Guan Zhiqiang34ORCID, Li Zile12ORCID, Yu Lei1, Yu Shaohua2, Zheng Guoxing124ORCID
Affiliation:
1. Electronic Information School , and School of Microelectronics , Wuhan University , Wuhan 430072 , China 2. Peng Cheng Laboratory , Shenzhen 518055 , China 3. School of Physics and Technology , Wuhan University , Wuhan 430072 , China 4. Wuhan Institute of Quantum Technology , Wuhan 430206 , China.
Abstract
Abstract
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.
Funder
National Natural Science Foundation of China National Key Research and Development Program of China
Publisher
Walter de Gruyter GmbH
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