首页> 外文会议>International Symposium on Personal, Indoor, and Mobile Radio Communications >Classification of Heterogenous M2M/IoT Traffic Based on C-plane and U-plane Data
【24h】

Classification of Heterogenous M2M/IoT Traffic Based on C-plane and U-plane Data

机译:基于C平面和U平面数据的异常M2M /物联网流量的分类

获取原文
获取外文期刊封面目录资料

摘要

This paper is motivated by the observation that M2M/IoT traffic is rather heterogeneous. By using traffic data collected in a real scenario, we prove that some M2M devices might generate a signaling traffic more similar to the traffic of a smartphone than to the traffic of a traditional M2M device used for metering applications. This makes difficult the task of a mobile operator to understand the impact of the introduction of M2M/IoT devices into the network. The paper presents a classification of the M2M/IoT heterogeneous world in three classes. The classification has been performed using the C-plane attributes and its effectiveness has been assessed by performing a clustering analysis over the U-plane data, which represent the ground truth. We found a good matching between the results of the classification task carried out by using the C-plane data and the results of the clustering task carried out by exploiting the U-plane data. This means that, by using the C-plane data (simpler with respect to using U-plane data) the network operator can understand with a good accuracy which type of M2M devices are active on the network, and what are the applications that they run and the data traffic that they generate. Therefore, the results may be useful for a proper dimensioning and management of the evolution of an EPC network.
机译:本文的观点是M2M /物联网交通相当异构的动机。通过使用在真实场景中收集的流量数据,我们证明了一些M2M设备可能会产生与智能手机的流量更类似于用于计量应用的传统M2M设备的流量的信令流量。这使得移动运营商的任务难以了解将M2M / IOT设备引入网络的影响。本文提出了三个类别的M2M /物联网异质世界的分类。已经使用C平面属性进行了分类,并且通过对U平面数据进行聚类分析来评估其有效性,这代表了基础事实。我们在通过使用C平面数据执行的分类任务的结果与通过利用U平面数据执行的群集任务的结果之间找到了良好匹配。这意味着,通过使用C平面数据(相对于使用U平面数据更简单),网络运营商可以通过良好的精度理解,该类型的M2M设备在网络上处于活动状态,以及它们运行的​​应用程序是什么以及它们生成的数据流量。因此,结果对于EPC网络的演进的适当尺寸和管理可能是有用的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号