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首页> 外文期刊>Journal of signal processing systems for signal, image, and video technology >Fingerprinting IIoT Devices Through Machine Learning Techniques
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Fingerprinting IIoT Devices Through Machine Learning Techniques

机译:通过机器学习技术指纹IIT设备

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From a security perspective, identifying Industrial Internet of Things (IIoT) devices connected to a network has multiple applications such as penetration testing, vulnerability assessment, etc. In this work, we propose a feature-based methodology to perform device-type fingerprinting. A device fingerprint consists of the TCP/IP header features and port-based features extracted from the network traffic of the device. These features are collected by a hybrid mechanism which has a negligible impact on device functionality and can avoid the problem of the long TCP connection. Once the fingerprint of a device is generated, it will be fed to the classifiers based on Gradient Boosting to predict its type details. Based on our proposed method, we implement a prototype application called IIoT Device Type Fingerprinting (IDTF) which capable of automatically identifying the types of devices being connected to an IIoT network. We collect a dataset consisting of 19,174 fingerprints from real-world Internet-facing IIoT devices indexed by Shodan to train and evaluate the classifiers using ten-fold cross-validation. And we conduct comparative experiments in an IIoT testbed to compare the effectiveness of IDTF with two famous fingerprinting tools. The experimental result shows that the ability of our approach is confirmed by a high mean F-Measure of 95.76%. It also demonstrates that IDTF achieves the highest identification rate in the testbed and is non-intrusive for IIoT devices. Compared with existing works, our approach is more generic as it does not rely on a specific protocol or deep packet inspection and can distinguish almost all IIoT device-types.
机译:从安全角度来看,识别连接到网络的工业物联网(IIT)设备有多种应用,例如穿透测试,漏洞评估等。在这项工作中,我们提出了一种基于特征的方法来执行设备类型的指纹识别。设备指纹包括从设备的网络流量中提取的TCP / IP标题功能和基于端口的功能。这些特征由混合机制收集,其对设备功能的影响可忽略不计,并且可以避免长TCP连接的问题。一旦生成了设备的指纹,就会基于梯度提升将其馈送到分类器以预测其类型的细节。基于我们所提出的方法,我们实现了一种称为IIOT设备类型的指纹(IDTF)的原型应用程序,其能够自动识别连接到IIT网络的设备类型。我们收集由Shodan索引的现实世界互联网的IIOT设备组成的数据集,以使用十倍交叉验证来培训和评估分类器。我们在IIOT测试台上进行比较实验,以比较IDTF与两个着名的指纹识别工具的有效性。实验结果表明,我们的方法的能力通过95.76%的高平均值来证实。它还表明IDTF在试验台上实现了最高的识别率,并且是IIT设备的非侵入性。与现有工作相比,我们的方法更通用,因为它不依赖于特定的协议或深度数据包检查,并且可以区分几乎所有IIT设备类型。

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