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A Manifold Learning Two-Tier Beamforming Scheme Optimizes Resource Management in Massive MIMO Networks

机译:歧管学习双层波束成形方案优化了大规模MIMO网络中的资源管理

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Two-tier massive multiple-input multiple-output (MIMO) systems achieve high sum spectral efficiency by simultaneously serving large numbers of users. However, as the number of service antennas and users tend to infinity, the performance is limited by directed inter-cell and intra-cell interferences. Handling these interferences are challenging due to the large channel dimensionality and the high complexity associated with implementing large precoding/combining matrices. Moreover, two-tier massive MIMO is computationally demanding, as the high antenna count results in high-dimensional matrix operations when conventional MIMO hybrid precoding is applied. In this paper, a manifold learning two-tier beamforming (MLTB) scheme is proposed to enable efficient and low-complexity operation in large scale dimensional MIMO systems. Users of multi-cell are clustered into several regions of user groups by manifold learning. Most of the high-dimensional channels are embedded in the low-dimensional subspace by manifold learning, while retaining the potential spatial correlation of the high-dimensional channels. The nonlinearity of high-dimensional channel is transformed into local linearity to achieve dimensionality reduction. Through proper user clustering, the beamformers are split into outer beamformers and inner beamformers. The outer beamformers can minimize inter-cell interference and the inner beamformers can minimize multi-user interference of intra-groups. The high signal to interference plus noise ratio (SINR) is achieved and the computational complexity is reduced by avoiding the conventional schemes to deal with high-dimensional channel parameters. Performance evaluations show that the proposed MLTB scheme can obtain near-optimal sum-rate and considerably higher energy efficiency than the conventional schemes.
机译:双层巨大的多输入多输出(MIMO)系统通过同时为大量用户提供高度的频谱效率。然而,随着服务天线和用户的数量倾向于无穷大,性能受到指导的小区间和电池内干扰的限制。处理这些干扰由于具有大的通道维度和实现大预编码/组合矩阵相关的高复杂性而挑战。此外,当施加传统的MIMO混合预热时,两层巨大的MIMO是计算要求的,随着高天线计数导致高维矩阵操作。在本文中,提出了一种歧管学习双层波束形成(MLTB)方案,以在大规模维度MIMO系统中实现高效且低复杂的操作。多单元的用户通过多方面学习聚集成用户组的几个区域。大多数高维通道通过歧管学习嵌入在低维子空间中,同时保留高维信道的潜在空间相关性。高维通道的非线性转化为局部线性度以实现维度降低。通过适当的用户聚类,波束形成器被分成外波束形成器和内波束形成器。外波束形成器可以最小化小区间干扰,内部波束形成器可以最小化帧内组的多用户干扰。通过避免传统方案来处理高维信道参数来实现对干扰加噪声比(SINR)的高信号,并且通过避免传统方案来减少计算复杂性。性能评估表明,所提出的MLTB方案可以获得近最佳的总和速率和比传统方案相当较高的能量效率。

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