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首页> 外文期刊>AEU: Archiv fur Elektronik und Ubertragungstechnik: Electronic and Communication >Limited feedback distributed interference alignment in cellular networks with large scale antennas
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Limited feedback distributed interference alignment in cellular networks with large scale antennas

机译:有限的反馈在大规模天线中的蜂窝网络中的分布式干扰对齐

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摘要

Interference alignment (IA) is an effective scheme for counteracting multi-user interference in wireless networks. Unfortunately, IA is sensitive to channel-state-information (CSI) imperfections. Achieving perfect CSI knowledge at a central node in large scale antenna wireless networks implies a huge feedback which is prohibitive. In this paper, we assume a distributed multicellular scenario, where there is no central node that knows global CSI and optimizing IA's precoder and combiner matrices is done by exchanging the local channel information between users and base stations (BSs) in several iterations. By using low-rank matrix approximation theory, we propose an efficient method to iteratively optimize precoder and combiner matrices for distributed IA. In each iteration, only a part of the CSI is fed back to BSs. More precisely, based on the latest available CSI and certain performance criteria, a few columns of the effective channel are sent back to the transmitters to approximate the interference covariance matrix which is then used to update the precoder matrices. We also propose a new method for quantizing the channel information matrix non-uniformly, which improves upon the conventional channel feedback quantization techniques. We evaluate the proposed methods by simulating a cellular network with various number of BS antennas and different feedback channel capacities. Simulation results show that our methods outperform both the conventional and improved channel feedback quantization algorithms significantly. (C) 2019 Elsevier GmbH. All rights reserved.
机译:干扰对准(IA)是抵消无线网络中的多用户干扰的有效方案。不幸的是,IA对信道状态(CSI)缺陷感到敏感。在大规模天线无线网络中的中央节点实现完善的CSI知识意味着巨大的反馈,这是令人望而却步的。在本文中,我们假设分布式多细胞场景,其中没有知道全局CSI的中央节点,并且通过在几个迭代中交换用户和基站(BSS)之间的本地信道信息来完成IA的预编码器和组合矩阵。通过使用低秩矩阵近似理论,我们提出了一种有效的方法来迭代优化用于分布式IA的预编码器和组合矩阵。在每次迭代中,只有一部分CSI被馈送到BSS。更精确地,基于最新的可用CSI和某些性能标准,将几列的有效通道发送回发射器以近似干扰协方差矩阵,然后用于更新预编码器矩阵。我们还提出了一种用于非均匀地量化信道信息矩阵的新方法,这提高了传统信道反馈量化技术。我们通过模拟具有各种数量的BS天线和不同反馈信道容量的蜂窝网络来评估所提出的方法。仿真结果表明,我们的方法显着优于传统的和改进的信道反馈量化算法。 (c)2019年Elsevier GmbH。版权所有。

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