Journal Article10.1109/tpel.2023.3263728
Reinforcement Learning-Based Method to Exploit Vulnerabilities of False Data Injection Attack Detectors in Modular Multilevel Converters
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TL;DR: In this paper , a reinforcement learning (RL)-based method is proposed to uncover the deficiencies of existing false data injection attack (FDIA) detectors used for M2C applications, where the proposed method auto-generates complex attack sequences able to bypass FDIA detectors.
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Abstract: Implementing control schemes for modular multilevel converters (M2Cs) involves both a cyber and a physical level, leading to a cyber-physical system (CPS). At the cyber level, a communication network enables the data exchange between sensors, control platforms, and monitoring systems. Meanwhile, at the physical level, the semiconductor devices that comprise the M2C are switched ON/OFF by the control system. In this context, almost all published works in this research area assume that the CPS always reports correct information. However, this may not be the case when the M2C is affected by cyber-attacks, such as the one named false data injection attack (FDIA), where the data seen by the control system is corrupted through illegitimate data intrusion into the CPS. To deal with this situation, FDIA detectors for the M2C are recently starting to be studied, where the goal is to detect and mitigate the attacks and the attacked sub-modules. This paper proposes a reinforcement learning (RL)-based method to uncover the deficiencies of existing FDIAs detectors used for M2C applications. The proposed method auto-generates complex attack sequences able to bypass FDIA detectors. Therefore, it points out the weaknesses of current detectors: This valuable information can be used later to improve the performance of the detectors, establishing more reliable cybersecurity solutions for M2Cs. The RL environment is developed in Matlab/Simulink augmented by PLECS/blockset, and it is made available to researchers on a website to motivate future research efforts in this area. Hardware-in-the-loop (HIL) studies verify the proposal's effectiveness.
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Citations
A Review of Cybersecurity in Grid-Connected Power Electronics Converters: Vulnerabilities, Countermeasures, and Testbeds
Ruiyun Fu,Mary E. Lichtenwalner,Thomas J. Johnson +2 more
TL;DR: A comprehensive review of existing outcomes from selected references, in the aspects of vulnerabilities, countermeasures, and testbeds, and four recommendations are raised for future research on GCPEC’s cybersecurity and their applications in smart grids.
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Distributed Control for Modular Multilevel Cascaded Converters: Toward a Fully Modular Topology
Claudio Burgos-Mellado,Javier Pereda,Andrés Mora,Roberto Cárdenas,Tomislav Dragičević +4 more
TL;DR: Review article on distributed control for modular multilevel cascaded converters (MMCCs) focusing on recent advancements, key challenges, and opportunities. Covers control strategies for various MMCC topologies and applications.
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Reinforcement Learning-Based False Data Injection Attacks Detector for Modular Multilevel Converters
Cristóbal Gallardo,Claudio Burgos-Mellado,Diego Munoz-Carpintero,Yeiner Arias-Esquivel,Anant Kumar Verma,Alex Navas-Fonseca,Roberto Cardenas-Dobson,Tomislav Dragičević +7 more
TL;DR: An FDIA detector based on the reinforcement learning (RL) technique to detect sophisticated FDIAs targeting the MMC control system is proposed and verified via hardware-in-the-loop studies, showing its effectiveness in detecting sophisticated attack sequences affecting the MMC control system.
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