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Optimized OAM Laguerre-Gauss Alphabets for Demodulation using Machine Learning

机译:优化的OAM Laguerre-Gauss字母用于使用机器学习进行解调

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In orbital angular momentum (OAM) based free-space optical (FSO) communication systems, a CCD camera can be used at the reception side to capture images of the laser beam carrying the transmitted OAM modes. The tasks of extracting features from these images and identifying the transmitted modes are studied in this paper. The ability of machine learning algorithms to perform these tasks is explored. Laguerre-Gauss beams and turbulent channels are considered. Different modulation alphabets formed by using sets of superposed and multiplexed OAM modes are investigated. Appropriate choice of these alphabets can increase data rate transmission.
机译:在基于轨道角动量(OAM)的自由空间光学(FSO)通信系统中,可以在接收侧使用CCD摄像机捕获载有传输的OAM模式的激光束的图像。本文研究了从这些图像中提取特征并识别传输模式的任务。探索了机器学习算法执行这些任务的能力。考虑了Laguerre-Gauss梁和湍流通道。研究了通过使用一组重叠和复用的OAM模式形成的不同调制字母。这些字母的合适的选择可以提高数据速率传输。

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