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Learning-Based Attacks in Cyber-Physical Systems

机译:基于学习的网络物理系统攻击

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摘要

We introduce the problem of learning-based attacks in a simple abstraction of cyber-physical systems- the case of a discrete-time, linear, time-invariant plant that may be subject to an attack that overrides sensor readings and controller actions. The attacker attempts to learn the dynamics of the plant and subsequently overrides the controller's actuation signal to destroy the plant without being detected. The attacker can feed fictitious sensor readings to the controller using its estimate of the plant dynamics and mimic the legitimate plant operation. The controller, in contrast, is constantly on the lookout for an attack; once the controller detects an attack, it immediately shuts the plant off. In the case of scalar plants, we derive an upper bound on the attacker's deception probability for any measurable control policy when the attacker uses an arbitrary learning algorithm to estimate the system dynamics. We then derive lower bounds for the attacker's deception probability for both scalar and vector plants by assuming an authentication test that inspects the empirical variance of the system disturbance. We also show how the controller can improve the security of the system by superimposing a carefully crafted privacy-enhancing signal on top of the "nominal control policy." Finally, for nonlinear scalar dynamics that belong to the reproducing kernel Hilbert space, we investigate the performance of attacks based on nonlinear Gaussian process learning algorithms.
机译:我们在网络 - 物理系统的简单抽象中介绍了基于学习的攻击问题 - 这种情况可能受到覆盖传感器读数和控制器动作的攻击的离散时间,线性,时间不变工厂的情况。攻击者试图了解工厂的动态,随后覆盖控制器的致动信号以在不检测的情况下摧毁工厂。攻击者可以使用其对植物动力学的估计来向控制器馈送虚拟传感器读数,并模仿合法的工厂操作。相比之下,控制器不断地了解攻击;一旦控制器检测到攻击,它就会立即关闭植物。在标量植物的情况下,当攻击者使用任意学习算法来估计系统动态时,我们导出了对任何可测量的控制策略的攻击者的欺骗概率的上限。然后,我们通过假设检查系统扰动的经验方差的认证测试,从而导致攻击者对标量和传染媒介工厂的欺骗概率的下限。我们还展示了控制器如何通过叠加在“名义控制政策”之上叠加仔细制作的隐私增强信号来提高系统的安全性。最后,对于属于再现内核希尔伯特空间的非线性标量动态,我们研究了基于非线性高斯过程学习算法的攻击性能。

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