采用有限信道数据样本的多路多输入多输出波束成形

Shaoran Li;Nan Jiang;Yongce Chen;Weijun Xie;Wenjing Lou;Y. Thomas Hou
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引用次数: 0

摘要

信道状态信息(CSI)是 MU-MIMO 波束成形的关键信息。然而,CSI 估计误差在实践中是不可避免的。CSI 估计误差的随机性和不确定性给 MU-MIMO 波束成形带来了巨大挑战。解决这种 CSI 不确定性的最先进技术可分为基于模型的技术和数据驱动的技术,这两种技术在为用户提供性能保证时都有局限性。与此相反,本文提出了基于有限样本的波束成形(LSBF)--一种新颖的多路多输入多输出波束成形方法,它只使用有限数量的 CSI 数据样本(不假定任何信道分布知识)。由于使用了 CSI 数据样本,LSBF 具有与数据驱动方法类似的灵活性,并能为用户提供理论保证--这是基于模型方法的主要优势。为了实现这两点,LSBF 采用了机会约束编程(CCP),并利用 $\infty $ -Wasserstein 模糊集来弥合 CSI 样本有限的未知 CSI 分布。基于有限的 CSI 数据样本,LSBF 对每个子问题进行了问题分解和新颖的双层表述,并通过二元搜索和凸近似解决了每个子问题。我们的研究表明,LSBF 能显著提高网络性能,同时为用户提供概率数据速率保证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MU-MIMO Beamforming With Limited Channel Data Samples
Channel State Information (CSI) is a critical piece of information for MU-MIMO beamforming. However, CSI estimation errors are inevitable in practice. The random and uncertain nature of CSI estimation errors poses significant challenges to MU-MIMO beamforming. State-of-the-art works addressing such a CSI uncertainty can be categorized into model-based and data-driven works, both of which have limitations when providing a performance guarantee to the users. In contrast, this paper presents Limited Sample-based Beamforming (LSBF)—a novel approach to MU-MIMO beamforming that only uses a limited number of CSI data samples (without assuming any knowledge of channel distributions). Thanks to the use of CSI data samples, LSBF enjoys flexibility similar to data-driven approaches and can provide a theoretical guarantee to the users—a major strength of model-based approaches. To achieve both, LSBF employs chance-constrained programming (CCP) and utilizes the $\infty $ -Wasserstein ambiguity set to bridge the unknown CSI distribution with limited CSI samples. Through problem decomposition and a novel bilevel formulation for each subproblem based on limited CSI data samples, LSBF solves each subproblem with a binary search and convex approximation. We show that LSBF significantly improves the network performance while providing a probabilistic data rate guarantee to the users.
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