论文标题

通过提取的上行链路路径增益,通过神经网络对FDD多个天线系统的下行链路推断

Downlink Extrapolation for FDD Multiple Antenna Systems Through Neural Network Using Extracted Uplink Path Gains

论文作者

Choi, Hyuckjin, Choi, Junil

论文摘要

当基本站(BSS)用多个天线部署时,它们需要具有下行链路(DL)通道状态信息(CSI),以通过横梁成形优化下行链路传输。 DL CSI通常通过DL培训在移动站(MSS)进行测量,并在频划分双工(FDD)中回馈BS。由于MSS高速导致通道迅速变化,DL训练和上行链路(UL)反馈可能会变得不可行。没有MSS的反馈,BS也可以使用UL和DL通道的固有关系直接获得DL CSI,即使在FDD中也称为DL推断。尽管确切的关系是高度非线性的,但先前的研究表明,神经网络(NN)可用于估计BS的UL CSI的DL CSI。以前的大多数在这一研究方面的作品都使用完整的UL和DL渠道训练了NN。但是,随着BS处的天线数量的增加,NN训练的复杂性变得严重。为了降低训练的复杂性并提高DL CSI估计质量,本文提出了一种新型的DL外推技术,使用NN的简化输入和输出。通过许多测量活动显示,UL和DL渠道仍然共享FDD中的路径延迟和角度等共同组成部分。提出的技术首先从UL和DL通道中提取这些常见系数,并仅使用取决于频带的路径增益来训练NN,与完整的UL和DL通道相比,尺寸降低了。广泛的仿真结果表明,所提出的技术优于常规方法,该方法依赖于完整的UL和DL通道来训练NN,而不论MSS的速度如何。

When base stations (BSs) are deployed with multiple antennas, they need to have downlink (DL) channel state information (CSI) to optimize downlink transmissions by beamforming. The DL CSI is usually measured at mobile stations (MSs) through DL training and fed back to the BS in frequency division duplexing (FDD). The DL training and uplink (UL) feedback might become infeasible due to insufficient coherence time interval when the channel rapidly changes due to high speed of MSs. Without the feedback from MSs, it may be possible for the BS to directly obtain the DL CSI using the inherent relation of UL and DL channels even in FDD, which is called DL extrapolation. Although the exact relation would be highly nonlinear, previous studies have shown that a neural network (NN) can be used to estimate the DL CSI from the UL CSI at the BS. Most of previous works on this line of research trained the NN using full dimensional UL and DL channels; however, the NN training complexity becomes severe as the number of antennas at the BS increases. To reduce the training complexity and improve DL CSI estimation quality, this paper proposes a novel DL extrapolation technique using simplified input and output of the NN. It is shown through many measurement campaigns that the UL and DL channels still share common components like path delays and angles in FDD. The proposed technique first extracts these common coefficients from the UL and DL channels and trains the NN only using the path gains, which depend on frequency bands, with reduced dimension compared to the full UL and DL channels. Extensive simulation results show that the proposed technique outperforms the conventional approach, which relies on the full UL and DL channels to train the NN, regardless of the speed of MSs.

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