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首页> 外文期刊>Electronics Letters >Blind symbol packing ratio estimation for faster-than-Nyquist signalling based on deep learning
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Blind symbol packing ratio estimation for faster-than-Nyquist signalling based on deep learning

机译:基于深度学习的比奈奎斯特信令更快的盲符号打包率估计

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摘要

This Letter proposes a blind symbol packing ratio estimation for faster-than-Nyquist (FTN) signalling based on state-of-the-art deep learning technology. The symbol packing ratio (also named speeding parameter, time packing parameter etc.) is a vital parameter to obtain the real symbol rate and recover the origin symbols from the received symbols by calculating the intersymbol interference. To the best of the authors' knowledge, this is the first effective estimation approach for symbol packing ratio in FTN signalling and has shown its fast convergence and robustness to signal-to-noise ratio by numerical simulations. Benefiting from the proposed blind estimation, the packing-ratio-based adaptive FTN transmission without dedicate channel or control frame becomes available. Also, the secure FTN communications based on the secret symbol packing ratio can be easily cracked.
机译:这封信提出了一种基于最新的深度学习技术的比奈奎斯特(FTN)信令快的盲符号打包率估计方法。符号打包率(也称为速度参数,时间打包参数等)是获取实际符号率并通过计算符号间干扰从接收到的符号中恢复原始符号的重要参数。据作者所知,这是FTN信令中符号填充率的第一种有效估计方法,并通过数值模拟显示了其快速收敛性和对信噪比的鲁棒性。受益于建议的盲估计,无需专用信道或控制帧的基于打包率的自适应FTN传输变得可用。而且,基于秘密符号打包率的安全FTN通信可以容易地被破解。

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