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Toward an Intrusion Detection Approach for IoT Based on Radio Communications Profiling

机译:基于无线电通信分析的物联网入侵检测方法

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Nowadays, more and more Internet-of-Things (IoT) smart products, interconnected through various wireless communication technologies (Wifi, Bluetooth, Zigbee, Z-wave, etc.) are integrated in daily life, especially in homes, factories, cities, etc. Such IoT technologies have become very attractive with a large variety of new services offered to improve the quality of life of the endusers or to create new economic markets.However, the security of such connected objects is a real concern due to weak or flawed security designs, configuration errors or imperfect maintenance. Moreover, the vulnerabilities discovered in IoT products are often difficult to eliminate because, most of the time, they cannot be patched easily. Therefore, protection mechanisms are needed to mitigate the potential risks induced by such objects in private and public connected areas.In this paper, we propose a novel approach to detect potential attacks in smart places (e.g. smart homes) by detecting deviations from legitimate communication behavior, in particular at the physical layer. The proposed solution is based on the profiling and monitoring of the Radio Signal Strenght Indication (RSSI) associated to the wireless transmissions of the connected objects. A machine learning neural network algorithm is used to characterize legitimate communications and to identify suspiscious scenarios. We show the feasibility of this approach and discuss some possible application cases.
机译:如今,越来越多的通过各种无线通信技术(Wifi,蓝牙,Zigbee,Z-wave等)互连的物联网(IoT)智能产品已融入日常生活中,尤其是在家庭,工厂,城市,此类物联网技术已变得非常具有吸引力,它提供了各种新服务来改善最终用户的生活质量或创造新的经济市场。但是,由于弱点或缺陷,此类连接对象的安全性是一个真正的问题。安全设计,配置错误或维护不完善。此外,物联网产品中发现的漏洞通常很难消除,因为在大多数情况下,它们不容易修补。因此,需要一种保护机制来减轻此类物体在私人和公共连接区域中引起的潜在风险。本文提出了一种新颖的方法,通过检测与合法通信行为的偏差来检测智能场所(例如,智能家居)中的潜在攻击。 ,尤其是在物理层。所提出的解决方案基于与所连接对象的无线传输相关的无线信号强度指示(RSSI)的概要分析和监视。机器学习神经网络算法用于表征合法通信并识别可疑情况。我们展示了这种方法的可行性,并讨论了一些可能的应用案例。

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