基于特征向量分割的物联网设备识别

Ruizhong Du, Shuang Li
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引用次数: 0

摘要

通过对设备的识别和管理,可以有效防止物联网设备的大量接入带来的安全问题。然而,当物联网中有新设备接入和已知设备固件升级时,基于多分类的频繁模型再训练变得困难,可以通过为每个设备单独开发识别模型来解决这一问题,但由于模型重叠,识别精度通常较低。在本文中,我们提出了一种特征向量分裂的方法来减少模型之间的重叠,并基于K-means算法开发了一个子向量联合模型组,可以实时检测每个设备的正常网络行为并对其进行分类。我们用公共数据集对我们的方案进行了有效性评估,结果表明我们提出的方法可以达到98%以上的总体准确率,同时有效地减少了模型的训练时间和存储成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of IoT Devices Based on Feature Vector Split
Device identification and management effectively prevent security issues caused by the massive access of Internet of Things (IoT) devices. However, when there is access of new devices and firmware upgrade of known devices in IoT, frequent model re-training based on multi-classing becomes difficult, which problem could be solved by developing a separate identification model for each device, but the identification accuracy is usually low due to model overlapping. In this article, we propose a method of feature vector splitting to reduce the overlap between models and develop a Sub-Vector Joint Model Group based on K-means algorithm, which can detect normal network behavior of each device and classify them in real-time. We evaluate the efficacy of our scheme with public dataset, and the result shows that the method we proposed could reach an overall accuracy of over 98%, and effectively reduce the training time and storage cost of the model simultaneously.
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