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Generalized Attack Model for Networked Control Systems, Evaluation of Control Methods

机译:网络控制系统的通用攻击模型,控制方法的评估

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Networked Control Systems (NCSs) have been implemented in several different industries. The integration with advanced communication networks and computing techniques allows for the enhancement of efficiency of industrial control systems. Despite all the advantages that NCSs bring to industry, they remain at risk to a spectrum of physical and cyber-attacks. In this paper, we elaborate on security vulnerabilities of NCSs, and examine how these vulnerabilities may be exploited when attacks occur. A general model of NCS designed with three different controllers, i.e., proportional-integral-derivative (PID) controllers, Model Predictive control (MPC) and Emotional Learning Controller (ELC) are studied. Then three different types of attacks are applied to evaluate the system performance. For the case study, a networked pacemaker system using the Zeeman nonlinear heart model (ZHM) as the plant combined with the above-mentioned controllers to test the system performance when under attacks. The results show that with Emotional Learning Controller (ELC), the pacemaker is able to track the ECG signal with high fidelity even under different attack scenarios.
机译:网络控制系统(NCS)已在几个不同的行业中实施。与先进的通信网络和计算技术的集成可以提高工业控制系统的效率。尽管NCS给行业带来了诸多优势,但它们仍然面临一系列物理和网络攻击的风险。在本文中,我们详细介绍了NCS的安全漏洞,并研究了在发生攻击时如何利用这些漏洞。研究了使用三种不同控制器设计的NCS通用模型,即比例积分微分(PID)控制器,模型预测控制(MPC)和情感学习控制器(ELC)。然后,将三种不同类型的攻击应用于评估系统性能。对于此案例研究,使用Zeeman非线性心脏模型(ZHM)作为工厂的网络起搏器系统与上述控制器结合使用,以测试受到攻击时的系统性能。结果表明,即使在不同的攻击场景下,使用情绪学习控制器(ELC),心脏起搏器也能够以高保真度跟踪ECG信号。

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