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An RSS-Based Classification of User Equipment Usage in Indoor Millimeter Wave Wireless Networks Using Machine Learning

机译:使用机器学习的室内毫米波无线网络中的用户设备使用量的基于RSS的分类

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摘要

The use of millimeter wave technologies offer a promising solution for dense small cell networks, despite having to contend with challenging propagation characteristics. In particular, user-induced effects can lead to significant channel variations depending on the user equipment (UE) usage mode which in turn, can impact the quality of service. Estimation of UE operating conditions is therefore critical for optimal radio resource management. We propose a new approach to user activity recognition which makes use of both supervised and unsupervised machine learning. In particular, using information extracted from the received signal strength (RSS), a common metric readily available from many receiver chipsets, we perform a classification of user state (static or mobile relative to an access point) and UE mode of operation (voice call, using an app or in pocket). To develop and then train our classification system, measured RSS data was obtained using a custom 60 GHz measurement system for a range of indoor office scenarios which considered various UE to ceiling mounted access point configurations. In our approach, differentiation between static and mobile states is performed in preprocessing using a k-means algorithm. Small-scale fading features are then estimated from the RSS data and, using different feature scaling mechanisms, various supervised learning approaches are applied to investigate the optimal classification accuracy for the considered use cases in this work. We compare the classification performance of various window sizes and types, and show that a sliding window length of 1s without overlap performs best for time series segmentation at 60 GHz for the activities considered in this study. Among the different supervised learning approaches, the Decision Tree (DT) classifier performs best for both the user static and mobile cases with an accuracy of 100 & x0025; and 98.0 & x0025;, respectively. For static cases, user orientation, i.e., line-of-sight (LOS), quasi-LOS, and non-LOS, can also be classified and here the DT classifier also performs best with an accuracy of 98.2 & x0025;, 97.6 & x0025; and 100 & x0025; for the voice call, using an app or in pocket use cases. Additionally, a feature ranking algorithm, called ReliefF, is adopted to determine the small-scale fading features that have the most significant influences on the classification accuracy and three different feature sets, namely Full, Reduced and Constrained sets, are then proposed based on feature ranking results. This allows the proposed techniques to be deployed on wireless platforms with different levels of processing capability.
机译:尽管必须与具有挑战性的传播特性抗争,但毫米波技术的使用提供了一种密集的小型电池网络的有希望的解决方案。特别地,用户诱导的效果可以通过根据用户设备(UE)使用模式导致重要的信道变化,这反过来又会影响服务质量。因此,UE操作条件的估计对于最佳无线电资源管理是至关重要的。我们提出了一种新的用户活动识别方法,它利用监督和无监督的机器学习。特别地,使用从接收信号强度(RSS)中提取的信息,从许多接收器芯片组容易地获得公共度量,我们执行用户状态的分类(<斜体>静态或<斜斜体>移动相对于接入点)和UE操作模式(<斜体>语音呼叫,在口袋中使用app )。要开发然后培训我们的分类系统,使用定制60 GHz测量系统获得测量的RSS数据,用于一系列室内办公场景,该方案认为是天花板安装的接入点配置的各种UE。在我们的方法中,在使用K-means算法预处理中执行<斜体>静态和<斜体>移动状态之间的差异。然后从RSS数据估计小规模渐变特征,并且使用不同的特征缩放机制,应用各种监督学习方法来研究这项工作中所考虑的用例的最佳分类精度。我们比较各种窗口尺寸和类型的分类性能,并表明1S的滑动窗口长度没有重叠在60 GHz的时间序列分割对于本研究中考虑的活动来说。在不同的监督学习方法中,决策树(DT)分类器对于用户<斜体>静态和<斜体>移动式案例最佳地执行,精度为100&x0025; 98.0&x0025;分别为98.0&x0025;对于<斜体>静态案例,用户方向,即视线(LOS),准LOS和非LOS,也可以在此处分类,DT分类器也能够以准确性执行98.2&x0025 ;,97.6&x0025;和100&x0025;对于<斜视>语音调用在Pocket 用例中使用app 。另外,采用一个称为<斜体> refieff 的特征排名算法来确定对分类准确性和三个不同特征集具有最重要影响的小规模衰落功能,即<斜体>完整,<斜视>减少和<斜体>约束集。这允许提出的技术在具有不同的处理能力水平的无线平台上部署。

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