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Classifying IoT Devices in Smart Environments Using Network Traffic Characteristics

机译:使用网络流量特征在智能环境中对IoT设备进行分类

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摘要

The Internet of Things (IoT) is being hailed as the next wave revolutionizing our society, and smart homes, enterprises, and cities are increasingly being equipped with a plethora of IoT devices. Yet, operators of such smart environments may not even be fully aware of their IoT assets, let alone whether each IoT device is functioning properly safe from cyber-attacks. In this paper, we address this challenge by developing a robust framework for IoT device classification using traffic characteristics obtained at the network level. Our contributions are fourfold. First, we instrument a smart environment with 28 different IoT devices spanning cameras, lights, plugs, motion sensors, appliances, and health-monitors. We collect and synthesize traffic traces from this infrastructure for a period of six months, a subset of which we release as open data for the community to use. Second, we present insights into the underlying network traffic characteristics using statistical attributes such as activity cycles, port numbers, signalling patterns, and cipher suites. Third, we develop a multi-stage machine learning based classification algorithm and demonstrate its ability to identify specific IoT devices with over 99 percent accuracy based on their network activity. Finally, we discuss the trade-offs between cost, speed, and performance involved in deploying the classification framework in real-time. Our study paves the way for operators of smart environments to monitor their IoT assets for presence, functionality, and cyber-security without requiring any specialized devices or protocols.
机译:物联网(IoT)正在掀起一场掀起我们社会革命的下一波热潮,而智能家居,企业和城市也越来越多地配备了许多IoT设备。但是,此类智能环境的运营商甚至可能没有完全意识到其IoT资产,更不用说每个IoT设备是否在正常运行时免受网络攻击。在本文中,我们通过使用在网络级别获得的流量特征,为物联网设备分类开发健壮的框架,来应对这一挑战。我们的贡献是四倍。首先,我们通过28种不同的IoT设备(包括摄像头,灯,插头,运动传感器,设备和健康监控器)为智能环境提供仪器。我们从此基础架构收集并综合了六个月的流量跟踪,我们将其中的一部分作为开​​放数据发布以供社区使用。其次,我们使用诸如活动周期,端口号,信令模式和密码套件之类的统计属性来介绍对底层网络流量特征的见解。第三,我们开发了一种基于多阶段机器学习的分类算法,并展示了其基于网络活动识别特定IoT设备的准确性超过99%的能力。最后,我们讨论了实时部署分类框架所涉及的成本,速度和性能之间的取舍。我们的研究为智能环境的运营商无需任何专用设备或协议即可监控其IoT资产的状态,功能和网络安全性铺平了道路。

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