Gaussian Process Regression for CSI and feedback estimation in LTE

A. Chiumento, M. Bennis, C. Desset, A. Bourdoux, L. Perre, S. Pollin
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引用次数: 3

Abstract

With the constant increase in wireless handheld devices and the prospect of billions of connected machines one of the problems for future mobile networks, usually overlooked by the research community, is that more connected devices require proportionally more signalling overhead. Particularly, acquiring users' channel state information is necessary in order for the base station to assign frequency resources. Estimating this channel information with full resolution in frequency and in time is generally impossible and, thus, methods have to be implemented in order to reduce the overhead. In this paper, we propose a channel quality estimation method based on the concept of Gaussian Process Regression to predict users' channel states for varying user mobility profiles. Furthermore, we present a dual-control technique to determine which is the most appropriate prediction time for each user in order to keep the packet loss rate below a pre-defined threshold. The proposed dual-control technique is then analysed in a multicell network with proportional fair and maximum throughput scheduling mechanisms. Remarkably, it is shown that the presented approach allows for a reduction of the overall channel quality signalling by over 90% while keeping the packet loss below 5% with maximum throughput schedulers, as well as signalling reduction of 60% with proportional fair scheduling.
基于高斯过程回归的CSI与LTE中的反馈估计
随着无线手持设备的不断增加和数十亿台连接机器的前景,未来移动网络的一个问题通常被研究界所忽视,即更多的连接设备需要更多的信号开销。特别是,为了基站分配频率资源,获取用户的信道状态信息是必要的。在频率和时间上以完全分辨率估计这些信道信息通常是不可能的,因此,必须实现方法以减少开销。在本文中,我们提出了一种基于高斯过程回归概念的信道质量估计方法,用于预测不同用户移动概况下的用户信道状态。此外,我们提出了一种双控制技术来确定每个用户最合适的预测时间,以保持丢包率低于预定义的阈值。然后在具有比例公平和最大吞吐量调度机制的多蜂窝网络中分析了所提出的双控制技术。值得注意的是,研究表明,所提出的方法允许将整体信道质量信令减少90%以上,同时使用最大吞吐量调度器将数据包丢包率保持在5%以下,并且使用比例公平调度将信令减少60%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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