Massive MIMO systems are highly efficient but critically rely on accurate channel state information (CSI) at the base station in order to determine appropriate precoders. CSI acquisition requires sending pilot symbols which induce an important overhead. In this paper, a method whose objective is to determine an appropriate precoder from the knowledge of the user's location only is proposed. Such a way to determine precoders is known as location based beamforming. It allows to reduce or even eliminate the need for pilot symbols, depending on how the location is obtained. the proposed method learns a direct mapping from location to precoder in a supervised way. It involves a neural network with a specific structure based on random Fourier features allowing to learn functions containing high spatial frequencies. It is assessed empirically and yields promising results on realistic synthetic channels. As opposed to previously proposed methods, it allows to handle both line-of-sight (LOS) and non-line-of-sight (NLOS) channels.
翻译:大型MIMO系统效率很高,但关键依赖于基地站的准确频道状态信息,以便确定适当的编译员。CSI的获取需要发送试点符号,从而引起重要的间接费用。在本文中,提出了一种方法,其目标是从用户所在地知识中确定适当的预译员。这种确定预译员的方法被称为基于波束的定位。这种方法可以减少甚至消除对试点符号的需要,取决于地点的获取方式。拟议方法以监督的方式从地点到预译员直接进行绘图。它涉及一个神经网络,其具体结构以随机的四维特征为基础,能够学习含有高空间频率的功能。它通过经验评估,在现实的合成渠道产生有希望的结果。与先前建议的方法相反,它允许处理视线和非视线(LOS)渠道。