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TONTA: Trend-based Online Network Traffic Analysis in ad-hoc IoT networks

机译:TONTA:基于趋势的在线网络网络流量分析

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Internet of Things (IoT) refers to a system of interconnected heterogeneous smart devices communicating without human intervention. A significant portion of existing IoT networks is under the umbrella of ad-hoc and quasi ad-hoc networks. Ad-hoc based IoT networks suffer from the lack of resource-rich network infrastructures that are able to perform heavyweight network management tasks using, e.g. machine learning-based Network Traffic Monitoring and Analysis (NTMA) techniques. Designing light-weight NTMA techniques that do not need to be (re-) trained has received much attention due to the time complexity of the training phase. In this study, a novel pattern recognition method, called Trend-based Online Network Traffic Analysis (TONTA), is proposed for ad-hoc IoT networks to monitor network performance. The proposed method uses a statistical light-weight Trend Change Detection (TCD) method in an online manner. TONTA discovers predominant trends and recognizes abrupt or gradual time-series dataset changes to analyze the IoT network traffic. TONTA is then compared with RuLSIF as an offline benchmark TCD technique. The results show that TONTA detects approximately 60% less false positive alarms than RuLSIF.
机译:事物互联网(IOT)是指在没有人为干预的情况下通信的互联异构智能设备系统。现有物联网网络的一部分大部分位于Ad-hoc和准ad-hoc网络的伞下。基于AD-HOC的IOT网络遭受缺乏资源丰富的网络基础架构,可以使用,例如,能够执行重量级网络管理任务。基于机器学习的网络流量监控和分析(NTMA)技术。由于培训阶段的时间复杂性,设计不需要(重新)的轻量级NTMA技术(重新)受到培训的很多关注。在本研究中,提出了一种名为基于趋势的在线网络流量分析(Tonta)的模式识别方法,用于监视网络性能。该方法以在线方式使用统计轻重趋势改变检测(TCD)方法。 Tonta发现了主要的趋势,并识别突然或逐步的时序数据集更改,以分析物联网网络流量。然后将Tonta与Rulsif作为离线基准TCD技术进行比较。结果表明,Tonta检测比腐殖蛋白的误报率大约60%。

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