使用无线指纹识别设备的机器学习方法

Srdjan Sobot, Vukan Ninkovic, D. Vukobratović, Milan Pavlović, Miloš Radovanović
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引用次数: 0

摘要

工业物联网(IoT)系统越来越依赖于无线通信标准。在常见的工业场景中,室内无线物联网设备与接入点通信,以提供从工业传感器、机器人和工厂机器收集的数据。由于物联网设备和接入点的静态或准静态位置,对物联网设备通道条件的历史观察提供了精确识别设备的可能性,而无需观察其传统标识符(例如MAC或IP地址)。这种基于无线指纹识别的设备识别方法最近作为关键物联网基础设施的附加网络安全机制而受到越来越多的关注。在本文中,我们对一类大型机器学习算法进行了系统研究,这些算法使用无线指纹对最流行的蜂窝和Wi-Fi物联网技术进行设备识别。我们设计,实施,部署,收集相关数据集,训练和测试大量机器学习算法,作为通过无线指纹识别设备的完整端到端解决方案设计的一部分。作为H2020项目COLLABS的一部分,拟议的解决方案目前正在实际工业物联网环境中部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Methods for Device Identification Using Wireless Fingerprinting
Industrial Internet of Things (IoT) systems increasingly rely on wireless communication standards. In a common industrial scenario, indoor wireless IoT devices communicate with access points to deliver data collected from industrial sensors, robots and factory machines. Due to static or quasi-static locations of IoT devices and access points, historical observations of IoT device channel conditions provide a possibility to precisely identify the device without observing its traditional identifiers (e.g., MAC or IP address). Such device identification methods based on wireless fingerprinting gained increased attention lately as an additional cyber-security mechanism for critical IoT infrastructures. In this paper, we perform a systematic study of a large class of machine learning algorithms for device identification using wireless fingerprints for the most popular cellular and Wi-Fi IoT technologies. We design, implement, deploy, collect relevant data sets, train and test a multitude of machine learning algorithms, as a part of the complete end-to-end solution design for device identification via wireless fingerprinting. The proposed solution is currently being deployed in a real-world industrial IoT environment as part of H2020 project COLLABS.
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