基于学习的多播天线选择

M. S. Ibrahim, Ahmed S. Zamzam, Xiao Fu, N. Sidiropoulos
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引用次数: 29

摘要

在多天线系统中,最好只激活可用发射天线的一个子集,以节省硬件和能源资源,而不会严重降低系统性能。然而,天线选择往往会带来非常困难的优化问题。联合组播波束形成和天线选择就是一个典型的例子,通常采用半确定松弛(SDR)类型的近似来解决。缺点是SDR将问题提升到更高的维度,导致相当高的内存和计算复杂性。在本文中,我们提出了一种基于机器学习的方法来规避复杂性问题。具体来说,我们提出了一种基于神经网络的方法,旨在选择天线子集,使接收器的信噪比最小最大化。这个想法是学习一个映射函数(由神经网络表示),从大量模拟数据中将信道实现映射到天线选择解决方案。这样,天线选择的计算负担可以转移到离线神经网络训练上。实验证明了所提出的机器学习方法相对于现有技术的有效性。
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Learning-Based Antenna Selection for Multicasting
In multi-antenna systems, it is preferred to activate only a subset of the available transmit antennas in order to save hardware and energy resources, without seriously degrading the system performance. However, antenna selection often poses very hard optimization problems. Joint multicast beamforming and antenna selection is one particular example, which is often approached by Semi-Definite Relaxation (SDR) type approximations. The drawback is that SDR lifts the problem to a much higher dimension, leading to considerably high memory and computational complexities. In this paper, we propose a machine learning based approach to circumvent the complexity issues. Specifically, we propose a neural network-based approach that aims at selecting a subset of antennas that maximizes the minimum signal to noise ratio at the receivers. The idea is to learn a mapping function (represented by a neural network) that maps channel realizations to antenna selection solutions from massive simulated data. This way, the computational burden of antenna selection can be shifted to off-line neural network training. Experiments demonstrate the efficacy of the proposed machine learning approach relative to the prior state-of-art.
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