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Adaptive LS- and MMSE-Based Beamformer Design for Multiuser MIMO Interference Channels

机译:用于多用户MIMO干扰信道的基于LS和MMSE的自适应波束形成器设计

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摘要

In the presence of perfect channel state information (CSI), the achievable degrees of freedom (DoF) in wireless interference networks can be linearly scaled up with the number of users. Achievability is based on the idea of interference alignment (IA). However, in the presence of imperfect CSI, the sum rate becomes degraded, and full DoF may no longer be achievable. In this paper, we propose novel least squares (LS)- and minimum mean square error (MMSE)-based IA schemes that adaptively design beamformers by relying on the availability of imperfect CSI and knowledge of the channel estimation error variance in advance. Interestingly and unlike the other robust algorithms, the proposed adaptive schemes do not impose extra computational complexity compared to their nonadaptive counterparts. It is shown that the LS-based IA is able to outperform interference leakage minimization algorithms under both perfect and imperfect CSI. Furthermore, we compare the performance of the proposed MMSE-based IA with maximum signal-to-interference-plus-noise ratio (Max-SINR) algorithm. We show that while under perfect CSI, the MMSE-based IA achieves the same performance as that of Max-SINR, the former outperforms the latter under CSI mismatch. Meanwhile, it is shown that the proposed MMSE-based IA needs less CSI to be available and has less computational complexity compared to Max-SINR.
机译:在存在完美的信道状态信息(CSI)的情况下,无线干扰网络中可实现的自由度(DoF)可以随用户数量线性扩展。可达到性基于干扰对齐(IA)的思想。但是,在存在不完善的CSI的情况下,总速率会降低,并且可能无法再获得完整的DoF。在本文中,我们提出了新颖的基于最小二乘法(LS)和最小均方误差(MMSE)的IA方案,该方案通过不完善的CSI的可用性和事先对信道估计误差方差的了解来自适应地设计波束形成器。有趣的是,与其他健壮算法不同,与非自适应算法相比,所提出的自适应方案没有施加额外的计算复杂性。结果表明,基于LS的IA在完美和不完美的CSI下都能够胜过最小化干扰泄漏的算法。此外,我们将建议的基于MMSE的IA的性能与最大信号干扰加噪声比(Max-SINR)算法进行了比较。我们显示,虽然在完美的CSI下,基于MMSE的IA可以达到与Max-SINR相同的性能,但在CSI不匹配的情况下,前者要优于后者。同时,表明与Max-SINR相比,所提出的基于MMSE的IA需要更少的CSI可用并且具有更少的计算复杂度。

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