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Unsupervised Deep Learning for Blind Multiuser Frequency Synchronization in OFDMA Uplink

机译:OFDMA上行链路中用于盲多用户频率同步的无监督深度学习

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In this paper, a novel unsupervised deep learning approach is proposed to tackle the multiuser frequency synchronization problem inherent in orthogonal frequency-division multiple-access (OFDMA) uplink communications. The key idea lies in the use of the feed-forward deep neural network (FF-DNN) for multiuser interference (MUI) cancellation taking advantage of their strong classification capability. Basically, the proposed FF-DNN consists of two essential functional layers. One is called carrier-frequency-offsets (CFOs) classification layer that is responsible for identifying the users' CFO range, and another is called MUI-cancellation layer responsible for joint multiuser detection (MUD) and frequency synchronization. By such means, the proposed FF-DNN approach showcases remarkable MUI-cancellation performances without the need of multiuser CFO estimation. In addition, we also exhibit an interesting phenomenon occurred at the CFO-classification stage, where the CFO-classification performance get improved exponentially with the increase of the number of users. This is called multiuser diversity gain in the CFO-classification stage, which is carefully studied in this paper.
机译:在本文中,提出了一种新颖的无监督深度学习方法,以解决正交频分多址(OFDMA)上行链路通信中固有的多用户频率同步问题。关键思想在于利用前馈深度神经网络(FF-DNN)消除多用户干扰(MUI),因为它们具有强大的分类能力。基本上,提出的FF-DNN由两个基本功能层组成。一个称为载波频率偏移(CFO)分类层,负责识别用户的CFO范围,另一个称为MUI取消层,负责联合多用户检测(MUD)和频率同步。通过这种方式,提出的FF-DNN方法展示了显着的MUI取消性能,而无需进行多用户CFO估计。此外,我们还展示了一个有趣的现象,即在CFO分类阶段,随着用户数量的增加,CFO分类性能得到了指数级的提高。在CFO分类阶段,这称为多用户分集增益,本文对此进行了仔细研究。

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