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A method for identifying faulty cells using a classification tree-based UE diagnosis in LTE

机译:在LTE中使用基于分类树的UE诊断来识别故障小区的方法

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The latest advances in wireless technologies have led to a proliferation of data mobile devices and services. As a consequence, mobile networks have experienced a significant increase in data traffic, while voice traffic has shown nearly no growth. It is therefore essential for operators to understand the data traffic behavior at the user level in order to ensure a good customer experience. In the radio access networks (RANs), traditional solutions based on cell-level measurements are not adequate to analyze performance of individual users. Instead, novel alternatives such as the use of call traces and the definition of new user-centric indicators will provide detailed and valuable information for each connection. One of the key measurements related to data services is the user throughput. In this work, the user throughput is adopted as the main attribute to conduct diagnosis in the RAN, which has typically been the bottleneck for data services. To that end, a binary classification tree is proposed to determine the root cause of poor throughput in user-level data sessions. Then, this information is aggregated at the cell level in order to provide effective diagnosis of degraded cells. In particular, a correlation-based analysis of the cell status is proposed in order to identify abnormal cell behaviors in an automatic way. Evaluation has been carried out with datasets from live cellular networks. Results show that the proposed diagnosis approach is an effective means to identify the main factors that limit the user throughput in network cells.
机译:无线技术的最新进展已导致数据移动设备和服务的激增。结果,移动网络的数据流量显着增加,而语音流量几乎没有增长。因此,对于运营商来说,必须了解用户级别的数据流量行为,以确保良好的客户体验。在无线接入网(RAN)中,基于小区级测量的传统解决方案不足以分析单个用户的性能。取而代之的是,诸如呼叫跟踪的使用和新的以用户为中心的指示器的定义之类的新颖替代方案将为每个连接提供详细而有价值的信息。与数据服务相关的关键度量之一是用户吞吐量。在这项工作中,用户吞吐量被用作在RAN中进行诊断的主要属性,而RAN通常是数据服务的瓶颈。为此,提出了一种二进制分类树,以确定用户级数据会话中吞吐量差的根本原因。然后,此信息在细胞级别汇总,以提供对降解细胞的有效诊断。特别地,提出了基于相关性的细胞状态分析,以便以自动方式识别异常细胞行为。已经使用来自实时蜂窝网络的数据集进行了评估。结果表明,所提出的诊断方法是识别限制网络单元中用户吞吐量的主要因素的有效手段。

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