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NoiSense Print: Detecting Data Integrity Attacks on Sensor Measurements Using Hardware-based Fingerprints

机译:noisense打印:使用基于硬件的指纹检测对传感器测量的数据完整性攻击

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Fingerprinting of various physical and logical devices has been proposed for uniquely identifying users or devices of mainstream IT systems such as PCs, laptops, and smart phones. However, the application of such techniques in Industrial Control Systems (ICS) is less explored for reasons such as a lack of direct access to such systems and the cost of faithfully reproducing realistic threat scenarios. This work addresses the feasibility of using fingerprinting techniques in the context of realistic ICS related to water treatment and distribution systems. A model-free sensor fingerprinting scheme (NoiSense) and a model-based sensor fingerprinting scheme (NoisePrint) are proposed. Using extensive experimentation with sensors, it is shown that noise patterns due to microscopic imperfections in hardware manufacturing can uniquely identify sensors with accuracy as high as 97%. The proposed technique can be used to detect physical attacks, such as the replacement of legitimate sensors by faulty or manipulated sensors. For NoisePrint, a combined fingerprint for sensor and process noise is created. The difference (called residual), between expected and observed values, i.e., noise, is used to derive a model of the system. It was found that in steady state the residual vector is a function of process and sensor noise. Data from experiments reveals that a multitude of sensors can be uniquely identified with a minimum accuracy of 90% based on NoisePrint. Also proposed is a novel challenge-response protocol that exposes more powerful cyber-attacks, including replay attacks.
机译:已经提出了各种物理和逻辑设备的指纹识别,用于独特地识别主流IT系统的用户或设备,例如PC,笔记本电脑和智能手机。然而,由于缺乏直接访问这种系统的原因和忠实地再现现实威胁情景的原因,这些技术在工业控制系统(ICS)中的应用不太探索。这项工作解决了在与水处理和分配系统相关的现实IC的背景下使用指纹识别技术的可行性。提出了一种无模型传感器指纹方案(NOISENSE)和基于模型的传感器指纹图谱方案(诊断)。使用具有传感器的广泛实验,表明硬件制造中的微观缺陷引起的噪声模式可以唯一地识别传感器,精度高达97%。所提出的技术可用于检测物理攻击,例如通过故障或操纵的传感器更换合法传感器。对于诊断,创建了传感器和过程噪声的组合指纹。在预期和观察到的值之间,即噪声之间的差异(称为残差)用于导出系统的模型。发现,在稳定状态下,残留载体是过程和传感器噪声的函数。实验的数据表明,基于诊断图谱的最小精度为90%,可以唯一地识别多个传感器。还提出了一种新的挑战 - 反应协议,暴露更强大的网络攻击,包括重播攻击。

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