The usage of technologically advanced devices has seen a boom in many domains, including education, automation, and healthcare; with most of the services requiring Internet connectivity. To secure a network, device identification plays key role. In this paper, a device fingerprinting (DFP) model, which is able to distinguish between Internet of Things (IoT) and non-IoT devices, as well as uniquely identify individual devices, has been proposed. Four statistical features have been extracted from the consecutive five device-originated packets, to generate individual device fingerprints. The method has been evaluated using the Random Forest (RF) classifier and different datasets. Experimental results have shown that the proposed method achieves up to 99.8% accuracy in distinguishing between IoT and non-IoT devices and over 97.6% in classifying individual devices. These signify that the proposed method is useful in assisting operators in making their networks more secure and robust to security breaches and unauthorized access.
翻译:技术先进设备的使用在许多领域,包括教育、自动化和保健领域都出现了蓬勃发展;大多数服务都需要互联网连接。为确保网络安全,设备识别具有关键作用。本文提出了能够区分物(IoT)和非IoT装置互联网的装置指纹(DFP)模型,以及独特识别的单个装置。从连续五个设备源包中提取了四个统计特征,以生成单个设备指纹。该方法利用随机森林分类器和不同数据集进行了评估。实验结果表明,拟议方法在区分IoT和非IoT装置方面达到99.8%的准确度,在对单个装置进行分类方面达到97.6%的准确度,这意味着拟议方法有助于帮助操作者使其网络更加安全可靠,以防范违反安全和未经授权的进入。