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Security Analysis of Cyber-Physical Systems Using Reinforcement Learning

Mariam Ibrahim, Ruba Elhafiz

2023Sensors22 citationsDOIOpen Access PDF

Abstract

Future engineering systems with new capabilities that far exceed today's levels of autonomy, functionality, usability, dependability, and cyber security are predicted to be designed and developed using cyber-physical systems (CPSs). In this paper, the security of CPSs is investigated through a case study of a smart grid by using a reinforcement learning (RL) augmented attack graph to effectively highlight the subsystems' weaknesses. In particular, the state action reward state action (SARSA) RL technique is used, in which the agent is taken to be the attacker, and an attack graph created for the system is built to resemble the environment. SARSA uses rewards and penalties to identify the worst-case attack scenario; with the most cumulative reward, an attacker may carry out the most harm to the system with the fewest available actions. Results showed successfully the worst-case attack scenario with a total reward of 26.9 and identified the most severely damaged subsystems.

Topics & Concepts

Reinforcement learningDependabilityCyber-physical systemComputer scienceComputer securityUsabilityAutonomySmart gridGraphEngineeringArtificial intelligenceHuman–computer interactionTheoretical computer scienceSoftware engineeringElectrical engineeringPolitical scienceLawOperating systemSmart Grid Security and ResilienceInformation and Cyber SecurityAdvanced Malware Detection Techniques
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