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Leveraging Electromagnetic Side-Channel Analysis for the Investigation of IoT Devices

机译:利用电磁边道分析技术进行物联网设备研究

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Internet of Things (IoT) devices have expanded the horizon of digital forensic investigations by providing a rich set of new evidence sources. IoT devices includes health implants, sports wearables, smart burglary alarms, smart thermostats, smart electrical appliances, and many more. Digital evidence from these IoT devices is often extracted from third party sources, e.g., paired smartphone applications or the devices' back-end cloud services. However vital digital evidence can still reside solely on the IoT device itself. The specifics of the IoT device's hardware is a black-box in many cases due to the lack of proven, established techniques to inspect IoT devices. This paper presents a novel methodology to inspect the internal software activities of IoT devices through their electromagnetic radiation emissions during live device investigation. When a running IoT device is identified at a crime scene, forensically important software activities can be revealed through an electromagnetic side-channel analysis (EM-SCA) attack. By using two representative IoT hardware platforms, this work demonstrates that cryptographic algorithms running on high-end IoT devices can be detected with over 82% accuracy, while minor software code differences in low-end IoT devices could be detected over 90% accuracy using a neural network-based classifier. Furthermore, it was experimentally demonstrated that malicious modification of the stock firmware of an IoT device can be detected through machine learning-assisted EM-SCA techniques. These techniques provide a new investigative vector for digital forensic investigators to inspect IoT devices. (C) 2019 The Author(s). Published by Elsevier Ltd on behalf of DFRWS.
机译:物联网(IoT)设备通过提供一组丰富的新证据来源,扩展了数字取证调查的范围。物联网设备包括健康植入物,运动可穿戴设备,智能防盗警报器,智能恒温器,智能电器等。这些物联网设备的数字证据通常是从第三方来源中提取的,例如配对的智能手机应用程序或设备的后端云服务。但是,重要的数字证据仍然可以仅存在于IoT设备本身上。由于缺乏经过验证的成熟技术来检查IoT设备,因此在许多情况下,IoT设备硬件的细节是一个黑匣子。本文提出了一种新颖的方法,可以在现场设备调查期间通过其电磁辐射来检查IoT设备的内部软件活动。当在犯罪现场发现正在运行的IoT设备时,可以通过电磁边信道分析(EM-SCA)攻击来揭示具有法医学意义的重要软件活动。通过使用两个代表性的IoT硬件平台,这项工作表明,高端IoT设备上运行的加密算法的准确度可以达到82%以上,而低端IoT设备中的细微软件代码差异可以通过检测到的准确度超过90%。基于神经网络的分类器。此外,通过实验证明,可以通过机器学习辅助的EM-SCA技术检测到IoT设备库存固件的恶意修改。这些技术为数字取证调查人员检查物联网设备提供了新的调查载体。 (C)2019作者。由Elsevier Ltd代表DFRWS发布。

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