Improvise, Adapt, Overcome: Dynamic Resiliency Against Unknown Attack Vectors in Microgrid Cybersecurity Games
Cyber-physical microgrids are vulnerable to rootkit attacks that manipulate system dynamics to create instabilities in the network. Rootkits tend to hide their access level within microgrid system components to launch sudden attacks that prey on the slow response time of defenders to manipulate syst...
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Zusammenfassung: | Cyber-physical microgrids are vulnerable to rootkit attacks that manipulate
system dynamics to create instabilities in the network. Rootkits tend to hide
their access level within microgrid system components to launch sudden attacks
that prey on the slow response time of defenders to manipulate system
trajectory. This problem can be formulated as a multi-stage, non-cooperative,
zero-sum game with the attacker and the defender modeled as opposing players.
To solve the game, this paper proposes a deep reinforcement learning-based
strategy that dynamically identifies rootkit access levels and isolates
incoming manipulations by incorporating changes in the defense plan. A major
advantage of the proposed strategy is its ability to establish resiliency
without altering the physical transmission/distribution network topology,
thereby diminishing potential instability issues. The paper also presents
several simulation results and case studies to demonstrate the operating
mechanism and robustness of the proposed strategy. |
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DOI: | 10.48550/arxiv.2306.15106 |