机器对机器系统的可扩展性和LTE移动网络上的物联网

Jill Jermyn, R. Jover, I. Murynets, M. Istomin, S. Stolfo
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引用次数: 47

摘要

随着移动网络的迅速发展,机器对机器(M2M)系统正在积极普及,以提供超越智能手机和平板电脑的连接。预计未来几年将有数十亿的嵌入式设备加入蜂窝网络,新的应用正在涌现,并为物联网(IoT)范式做出贡献。新一代移动网络长期演进(LTE)旨在为大量移动设备提供增强的容量,预计将成为物联网出现的主要推动因素。在这种情况下,业界和标准化机构对了解M2M系统在LTE网络上的可扩展性的潜在影响越来越感兴趣。大多数M2M系统的高度异构的流量模式,与智能手机和其他移动设备的流量模式非常不同,以及未来几年M2M连接设备的激增,对网络提出了巨大的挑战。本文提出了关于物联网在LTE网络上的可扩展性的初步见解和答案,确定了移动网络在多大程度上可能被大量试图通信的设备所淹没。基于对定制的、符合标准的大规模LTE模拟测试平台的详细分析,我们确定了主要的潜在拥塞点和瓶颈,并确定了哪种类型的M2M流量面临更大的挑战。为此,仿真测试平台实现了真实的统计M2M流量模型,这些模型来自美国主要一级运营商之一的六个流行M2M系统的完全匿名的真实LTE轨迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalability of Machine to Machine systems and the Internet of Things on LTE mobile networks
Machine to Machine (M2M) systems are actively spreading, with mobile networks rapidly evolving to provide connectivity beyond smartphones and tablets. With billions of embedded devices expected to join cellular networks over the next few years, novel applications are emerging and contributing to the Internet of Things (IoT) paradigm. The new generation of mobile networks, the Long Term Evolution (LTE), has been designed to provide enhanced capacity for a large number of mobile devices and is expected to be the main enabler of the emergence of the IoT. In this context, there is growing interest in the industry and standardization bodies on understanding the potential impact of the scalability of M2M systems on LTE networks. The highly heterogeneous traffic patterns of most M2M systems, very different from those of smartphones and other mobile devices, and the surge of M2M connected devices over the next few years, present a great challenge for the network. This paper presents the first insights and answers on the scalability of the IoT on LTE networks, determining to what extent mobile networks could be overwhelmed by the large amount of devices attempting to communicate. Based on a detailed analysis with a custom-built, standards-compliant, large-scale LTE simulation testbed, we determine the main potential congestion points and bottlenecks, and determine which types of M2M traffic present a larger challenge. To do so, the simulation testbed implements realistic statistical M2M traffic models derived from fully anonymized real LTE traces of six popular M2M systems from one of the main tier-1 operators in the United States.
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