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Deep reinforecement learning based optimal defense for cyber-physical system in presence of unknown cyber-attack

机译:在存在未知网络攻击的情况下,基于深度强化学习的网络物理系统最佳防御

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In this paper, the online optimal cyber-defense problem has been investigated for Cyber-Physical Systems (CPS) with unknown cyber-attacks. Firstly, a novel cyber state dynamics has been generated that can evaluate the real-time impacts from current cyber-attack and defense strategies effectively and dynamically. Next, adopting game theory technique, the idea optimal defense design can be obtained by using the full knowledge of cyber-state dynamics. To relax the requirement about cyber-state dynamics, a game-theoretical actor-critic neural network (NN) structure was developed to efficiently learn the optimal cyber defense strategy online. Moreover, to further improve the practicality of developed scheme, a novel deep reinforcement learning algorithm have been designed and implemented into actor-critic NN structure. Eventually, the numerical simulation demonstrate that proposed deep reinforcement learning based optimal defense strategy cannot only online defend the CPS even in presence of unknown cyber-attacks, and also learn the optimal defense policy more accurate and timely.
机译:本文针对未知网络攻击的网络物理系统(CPS),研究了在线最佳网络防御问题。首先,已经产生了一种新颖的网络状态动态,可以动态,有效地评估当前网络攻击和防御策略的实时影响。接下来,采用博弈论技术,可以利用网络状态动态的全部知识来获得最佳防御设计的思想。为了放宽对网络状态动态的要求,开发了一种博弈论的行为者-批评者神经网络(NN)结构,以有效地在线学习最佳的网络防御策略。此外,为了进一步提高所开发方案的实用性,已经设计了一种新颖的深度强化学习算法并将其实施于行为者-批评的神经网络结构中。最终,数值模拟表明,基于深度强化学习的最优防御策略不仅可以在未知网络攻击的情况下在线防御CPS,而且可以更准确,及时地学习最优防御策略。

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