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A Clustering Approach for Profiling LoRaWAN IoT Devices

机译:分析LoRaWAN IoT设备的集群方法

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Internet of Things (IoT) devices are starting to play a predominant role in our everyday life. Application systems like Amazon Echo and Google Home allow IoT devices to answer human requests, or trigger some alarms and perform suitable actions. In this scenario, any data information, related device and human interaction are stored in databases and can be used for future analysis and improve the system functionality. Also, IoT information related to the network level (wireless or wired) may be stored in databases and can be processed to improve the technology operation and to detect network anomalies. Acquired data can be also used for profiling operation, in order to group devices according to their characteristics. LoRaWAN (Long Range Wide Area Network) is one of the emerging IoT technologies in today's world, it is a protocol based on LoRa modulation. In this work, we propose a methodology to process LoRaWAN packets and perform profiling of the IoT devices. Specifically, we use the K-means algorithm to group devices according to their radio and network behaviour. We tested our approach on a real LoRaWAN network where the entire captured traffic is stored in a proprietary database. Our analysis, performed on 286, 753 packets with 765 devices involved, leads to remarkable clustering performance according to validation indices such as the Silhouette and the Davies-Bouldin indices. Further, with the help of field-experts, we were able to analyze clusters' contents, revealing results both in line with the current, network behaviour and alerts on malfunctioning devices, remarking the reliability of the proposed approach.
机译:物联网(IoT)设备开始在我们的日常生活中起主要作用。诸如Amazon Echo和Google Home之类的应用程序系统使IoT设备可以回答人的请求,或触发一些警报并执行适当的操作。在这种情况下,任何数据信息,相关设备和人机交互都存储在数据库中,可用于将来的分析并改善系统功能。而且,与网络级别(无线或有线)有关的IoT信息可以存储在数据库中,并且可以进行处理以改善技术操作并检测网络异常。所获取的数据也可以用于配置操作,以便根据设备的特性对设备进行分组。 LoRaWAN(远程广域网)是当今世界上新兴的物联网技术之一,它是基于LoRa调制的协议。在这项工作中,我们提出了一种方法来处理LoRaWAN数据包并执行IoT设备的性能分析。具体来说,我们使用K-means算法根据设备的无线电和网络行为对其进行分组。我们在真实的LoRaWAN网络上测试了我们的方法,该网络将捕获的全部流量存储在专有数据库中。我们根据涉及765个设备的286个,753个数据包进行了分析,根据诸如Silhouette和Davies-Bouldin索引之类的验证索引,得出了显着的聚类性能。此外,在现场专家的帮助下,我们能够分析群集的内容,并根据电流,网络行为和故障设备的警报显示结果,从而证明了该方法的可靠性。

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