SNR Prediction in Cellular Systems based on Channel Charting

Parham Kazemi, H. Al-Tous, Christoph Studer, O. Tirkkonen
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引用次数: 12

Abstract

We consider a machine learning algorithm to predict the Signal-to-Noise-Ratio (SNR) of a user transmission at a neighboring base station in a massive MIMO (mMIMO) cellular system. This information is needed for Handover (HO) decisions for mobile users. For SNR prediction, only uplink channel characteristics of users, measured in a serving cell, are used. Measuring the signal quality from the downlink signals of neighboring Base Stations (BSs) at the User Equipment (UE) becomes increasingly problematic in forthcoming mMIMO Millimeter-Wave (mmWave) 5G cellular systems, due to the high degree of directivity required from transmissions, and vulnerability of mm Wave signals to blocking. Channel Charting (CC) is a machine learning technique for creating a radio map based on radio measurements only, which can be used for radio-resource-management problems. A CC is a two-dimensional representation of the space of received radio signals. Here, we learn an annotation of the CC in terms of neighboring BS signal qualities. Such an annotated CC can be used by a BS serving a UE to first localize the UE in the CC, and then to predict the signal quality from neighboring BSs. Each BS first constructs a CC from a number of samples, determining similarity of radio signals transmitted from different locations in the network based on covariance matrices. Then, the BS learns a continuous function for predicting the vector of neighboring BS SNRs as a function of a 2D coordinate in the chart. The considered algorithm provides information for handover decisions without UE assistance. UE-power consuming neighbor measurements are not needed, and the protocol overhead for HO is reduced.
基于信道图的蜂窝系统信噪比预测
我们考虑了一种机器学习算法来预测用户在大规模MIMO (mMIMO)蜂窝系统中相邻基站传输的信噪比(SNR)。这些信息对于移动用户的切换(HO)决策是必需的。对于信噪比预测,只使用在服务小区中测量的用户的上行信道特性。在即将到来的毫米波(mmWave) 5G蜂窝系统中,测量用户设备(UE)上邻近基站(BSs)下行信号的信号质量变得越来越成问题,因为传输需要高度的指向性,而且毫米波信号容易被阻塞。信道制图(CC)是一种机器学习技术,用于仅基于无线电测量创建无线电地图,可用于无线电资源管理问题。CC是接收到的无线电信号空间的二维表示。在这里,我们根据邻近的BS信号质量来学习CC的注释。这种带注释的CC可以被服务于终端的基站使用,首先定位CC中的终端,然后预测来自相邻基站的信号质量。每个BS首先从多个样本中构建一个CC,根据协方差矩阵确定网络中不同位置传输的无线电信号的相似性。然后,BS学习一个连续函数,用于预测相邻BS信噪比向量作为图中二维坐标的函数。所考虑的算法在没有UE辅助的情况下为切换决策提供信息。不需要消耗大量电能的邻居测量,并且降低了HO的协议开销。
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