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通过数据集流量调查分析 LoRaWAN 行为。

LoRaWAN Behaviour Analysis through Dataset Traffic Investigation.

机构信息

DIET, Department of Information Engineering, Electronics and Telecommunications, Sapienza University of Rome, 00184 Rome, Italy.

CNIT, Consorzio Nazionale Interuniversitario per le Telecomunicazioni, 00133 Parma, Italy.

出版信息

Sensors (Basel). 2022 Mar 23;22(7):2470. doi: 10.3390/s22072470.

DOI:10.3390/s22072470
PMID:35408085
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9003208/
Abstract

The large development of Internet of Things technologies is increasing the use of smart-devices to solve and support several real-life issues. In many cases, the aim is to move toward systems that, even if significant demands are not required in terms of quantity of exchanged data, they should be very reliable in terms of battery life and signal coverage. Networks that have these characteristics are the Low Power WAN (LPWAN). One of the most interesting LPWAN is LoRaWAN. LoRaWAN is a network with four principal components: end-devices, gateways, network servers, and application servers. It uses a LoRa physical layer to exchange messages between end-devices and gateways that forward these messages, through classic TCP/IP protocol, to the network server. In this work, we analyse LoRa and LoRaWAN by looking at its transmission characteristics and network behaviour, respectively, explaining the role of its components and showing the message exchange. This analysis is performed through the exploration of a dataset taken from the literature collecting real LoRaWAN packets. The goal of the work is twofold: (1) to investigate, under different perspectives, how a LoRaWAN works and (2) to provide software tools that can be used in several other LoraWAN datasets to measure the network behaviour. We carry out six different analyses to look at the most important features of LoRaWAN. For each analysis we present the adopted measurement strategy as well as the obtained results in the specific use case.

摘要

物联网技术的大规模发展正在增加智能设备的使用,以解决和支持许多现实生活中的问题。在许多情况下,目标是朝着即使在数据交换量方面没有重大需求,但其电池寿命和信号覆盖范围也应非常可靠的系统发展。具有这些特性的网络就是低功耗广域网 (LPWAN)。其中最有趣的 LPWAN 之一是 LoRaWAN。LoRaWAN 是一个由四个主要组件组成的网络:终端设备、网关、网络服务器和应用服务器。它使用 LoRa 物理层在终端设备和网关之间交换消息,网关通过经典的 TCP/IP 协议将这些消息转发到网络服务器。在这项工作中,我们分别通过查看其传输特性和网络行为来分析 LoRa 和 LoRaWAN,解释其组件的作用并展示消息交换。这项分析是通过探索从文献中收集的真实 LoRaWAN 数据包的数据集来完成的。这项工作的目标是双重的:(1)从不同角度调查 LoRaWAN 的工作原理,(2)提供可用于其他几个 LoRaWAN 数据集的软件工具来测量网络行为。我们进行了六项不同的分析,以研究 LoRaWAN 的最重要特征。对于每个分析,我们都介绍了所采用的测量策略以及在特定用例中获得的结果。

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