自适应神经复制和弹性控制,尽管恶意攻击

Salvatore Giorgi, F. Saleheen, F. Ferrese, Chang-Hee Won
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引用次数: 3

摘要

本文在弹性控制框架下,采用自适应神经控制(ANC)体系结构进行系统复制和控制。为我们的工厂和被“恶意攻击”的工厂选择一个动态模型。模型参考自适应控制(MRAC)体系结构用于复制和控制对象以匹配理想的参考系统。在特定时间,我们通过改变工厂参数,注入虚假数据或改变传感器数据来复制恶意攻击。然后,这个被攻击的工厂被复制和控制,以匹配参考系统。仿真结果表明,自适应神经网络可以实现精确的系统复制和弹性控制。
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Adaptive Neural replication and resilient control despite malicious attacks
In this paper, an Adaptive Neural Control (ANC) architecture is used for system replication and control within a Resilient Control framework. A dynamic model is chosen for our plant and a “maliciously attacked” plant. A Model Reference Adaptive Control (MRAC) architecture is used to replicate and control the plant to match an ideal reference system. At certain time, we replicate a malicious attack by changing plant parameters, injecting false data, or altering sensor data. This attacked plant is then replicated and controlled to match the reference system. Simulations were carried out to show that accurate system replication and resilient control is possible using adaptive neural networks.
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