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A Carrier-Frequency-Offset Resilient OFDMA Receiver Designed Through Machine Deep Learning

机译:通过机器深度学习设计的载波频率偏移弹性OFDMA接收器

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The aim of this paper is to handle the multi-frequency synchronization problem inherent in orthogonal frequency-division multiple access (OFDMA) uplink communications, where the carrier frequency offset (CFO) for each user may be different, and they can be hardly compensated at the receiver side. Our major contribution lies in the development of a novel OFDM receiver that is resilient to unknown random CFO thanks to the use of a CFO-compensator bank. Specifically, the whole CFO range is evenly divided into a set of sub-ranges, with each being supported by a dedicated CFO compensator. Given the optimization for CFO compensator a NP-hard problem, a machine deep-learning approach is proposed to yield a good sub-optimal solution. It is shown that the proposed receiver is able to offer inter-carrier interference free performance for OFDMA systems operating at a wide range of SNRs.
机译:本文的目的是处理正交频分多址(OFDMA)上行通信中固有的多频同步问题,其中每个用户的载波频率偏移(CFO)可能是不同的,并且它们可以几乎不补偿接收器侧。我们的主要贡献在于开发一种新的OFDM接收器,由于使用CFO补偿器库,这是一个新的OFDM接收器,这些接收器是一个不明的随机CFO。具体地,整个CFO范围均匀地分成一组子范围,每个CFO分流由专用的CFO补偿器支持。鉴于CFO补偿器的优化A NP难题,提出了一种机器深度学习方法来产生良好的次优溶液。结果表明,所提出的接收器能够为在各种SNR中运行的OFDMA系统提供载波间干扰性能。

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