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2022-09-20
Yao, Pengchao, Hao, Weijie, Yan, Bingjing, Yang, Tao, Wang, Jinming, Yang, Qiang.  2021.  Game-Theoretic Model for Optimal Cyber-Attack Defensive Decision-Making in Cyber-Physical Power Systems. 2021 IEEE 5th Conference on Energy Internet and Energy System Integration (EI2). :2359—2364.

Cyber-Physical Power Systems (CPPSs) currently face an increasing number of security attacks and lack methods for optimal proactive security decisions to defend the attacks. This paper proposed an optimal defensive method based on game theory to minimize the system performance deterioration of CPPSs under cyberspace attacks. The reinforcement learning algorithmic solution is used to obtain the Nash equilibrium and a set of metrics of system vulnerabilities are adopted to quantify the cost of defense against cyber-attacks. The minimax-Q algorithm is utilized to obtain the optimal defense strategy without the availability of the attacker's information. The proposed solution is assessed through experiments based on a realistic power generation microsystem testbed and the numerical results confirmed its effectiveness.