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Machine Learning-Based Dimension Optimization for Two-Stage Precoder in Massive MIMO Systems with Limited Feedback

机译:基于机器学习的尺寸优化两级预编码器,具有有限反馈的大型MIMO系统

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摘要

A two-stage precoder is widely considered in frequency division duplex massive multiple-input and multiple-output (MIMO) systems to resolve the channel feedback overhead problem. In massive MIMO systems, users on a network can be divided into several user groups of similar spatial antenna correlations. Using the two-stage precoder, the outer precoder reduces the channel dimensions mitigating inter-group interferences at the first stage, while the inner precoder eliminates the smaller dimensions of intra-group interferences at the second stage. In this case, the dimension of effective channel reduced by outer precoder is important as it leverages the inter-group interference, the intra-group interference, and the performance loss from the quantized channel feedback. In this paper, we propose the machine learning framework to find the optimal dimensions reduced by the outer precoder that maximizes the average sum rate, where the original problem is an NP-hard problem. Our machine learning framework considers the deep neural network, where the inputs are channel statistics, and the outputs are the effective channel dimensions after outer precoding. The numerical result shows that our proposed machine learning-based dimension optimization achieves the average sum rate comparable to the optimal performance using brute-forcing searching, which is not feasible in practice.
机译:两级预编码器广泛考虑在频分双工大量多输入和多输出(MIMO)系统中,以解决频道反馈开销问题。在大规模的MIMO系统中,网络上的用户可以分为几个类似的空间天线相关的用户组。使用两级预编码器,外部预编码器减少了在第一阶段缓解组间干扰的通道尺寸,而内部预码器消除了第二阶段的组内干扰的较小尺寸。在这种情况下,由外部预编码器减少的有效通道的维度很重要,因为它利用了组间干扰,局部间干扰和来自量化信道反馈的性能损耗。在本文中,我们提出了机器学习框架,以找到由外部预编码器减少的最佳尺寸,从而最大化平均和速率,其中原始问题是NP难题。我们的机器学习框架考虑了深度神经网络,其中输入是通道统计,输出是外部预编码后的有效通道尺寸。数值结果表明,我们所提出的基于机器学习的尺寸优化实现了与使用Bruting Forcing搜索的最佳性能相当的平均和速率,这在实践中是不可行的。

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