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High-Resolution Recognition of Orbital Angular Momentum Modes in Asymmetric Bessel Beams Assisted by Deep Learning

Pengfei 鹏飞 Xu 徐, Xin 鑫 Tong 童, Zishuai Zeng, Shuxi 书悉 Liu 刘, Daomu Zhao

2024Chinese Physics Letters12 citationsDOI

Abstract

Abstract Fractional orbital angular momentum (OAM) vortex beams present a promising way to increase the data throughput in optical communication systems. Nevertheless, high-precision recognition of fractional OAM with different propagation distances remains a significant challenge. We develop a convolutional neural network (CNN) method to realize high-resolution recognition of OAM modalities, leveraging asymmetric Bessel beams imbued with fractional OAM. Experimental results prove that our method achieves a recognition accuracy exceeding 94.3% for OAM modes, with an interval of 0.05, and maintains a high recognition accuracy above 92% across varying propagation distances. The findings of our research will be poised to significantly contribute to the deployment of fractional OAM beams within the domain of optical communications.

Topics & Concepts

Angular momentumBessel functionConvolutional neural networkPhysicsInterval (graph theory)Computer scienceVortexOpticsAlgorithmArtificial intelligenceMathematicsClassical mechanicsCombinatoricsThermodynamicsOrbital Angular Momentum in OpticsSperm and Testicular Function
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