A Lightweight Flow Feature-Based IoT Device Identification Scheme

Ruizhong Du, Jingze Wang, Shuang Li
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引用次数: 4

Abstract

Internet of Things (IoT) device identification is a key step in the management of IoT devices. The devices connected to the network must be controlled by the manager. For this purpose, many schemes are proposed to identify IoT devices, especially the schemes working on the gateway. However, almost all researchers do not pay close attention to the cost. Thus, considering the gateway’s limited storage and computational resources, a new lightweight IoT device identification scheme is proposed. First, the DFI (deep/dynamic flow inspection) technology is utilized to efficiently extract flow-related statistical features based on in-depth studies. Then, combined with symmetric uncertainty and correlation coefficient, we proposed a novel filter feature selection method based on NSGA-III to select effective features for IoT device identification. We evaluate our proposed method by using a real smart home IoT data set and three different ML algorithms. The experimental results showed that our proposed method is lightweight and the feature selection algorithm is also effective, only using 6 features can achieve 99.5% accuracy with a 3-minute time interval.
一种基于流量特征的轻量级物联网设备识别方案
物联网(IoT)设备识别是物联网设备管理的关键步骤。接入网络的设备必须由管理员控制。为此,提出了许多方案来识别物联网设备,特别是工作在网关上的方案。然而,几乎所有的研究人员都没有密切关注成本问题。因此,考虑到网关有限的存储和计算资源,提出了一种新的轻量级物联网设备识别方案。首先,利用DFI (deep/dynamic flow inspection)技术,在深入研究的基础上,高效提取与流动相关的统计特征。然后,结合对称不确定性和相关系数,提出了一种新的基于NSGA-III的滤波特征选择方法,选择物联网设备识别的有效特征。我们通过使用真实的智能家居物联网数据集和三种不同的ML算法来评估我们提出的方法。实验结果表明,我们的方法轻量级,特征选择算法也很有效,仅使用6个特征,在3分钟的时间间隔内就可以达到99.5%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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