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Reinforcement Learning-Based False Data Injection Attacks Detector for Modular Multilevel Converters

Authors :
Gallardo, Cristobal
Burgos-Mellado, Claudio
Munoz-Carpintero, Diego
Arias-Esquivel, Yeiner
Verma, Anant Kumar
Navas-Fonseca, Alex
Cardenas-Dobson, Roberto
Dragicevic, Tomislav
Gallardo, Cristobal
Burgos-Mellado, Claudio
Munoz-Carpintero, Diego
Arias-Esquivel, Yeiner
Verma, Anant Kumar
Navas-Fonseca, Alex
Cardenas-Dobson, Roberto
Dragicevic, Tomislav
Source :
Gallardo , C , Burgos-Mellado , C , Munoz-Carpintero , D , Arias-Esquivel , Y , Verma , A K , Navas-Fonseca , A , Cardenas-Dobson , R & Dragicevic , T 2024 , ' Reinforcement Learning-Based False Data Injection Attacks Detector for Modular Multilevel Converters ' , IEEE Transactions on Industrial Electronics , vol. 71 , no. 7 , pp. 7927-7937 .
Publication Year :
2024

Abstract

The modular multilevel converter (MMC) is a prominent solution for medium- to high-voltage and high-power conversion applications. Recently, distributed control strategies have been proposed to make this converter modular in terms of software and control hardware. In this control architecture, high-level control tasks are performed by a central controller (CC), whereas low-level control tasks are achieved by local controllers (LCs) placed on the MMC submodules. The CC and LCs use a cyber-physical system (CPS) to share all the necessary information to execute their respective control schemes. In this context, the CPS is vulnerable to cyberattacks, such as the false data injection attack (FDIA), where the data seen by the controllers are corrupted through illegitimate data intrusion. This cyberattack may hinder the MMC performance, producing suboptimal, or even unstable operations. Even more, diverse FDIAs can be generated using artificial intelligence methods to deceive FDIA detectors. This article proposes an FDIA detector based on the reinforcement learning (RL) technique to detect sophisticated FDIAs targeting the MMC control system. The performance of the proposed RL-based FDIA detector is verified via hardware-in-the-loop studies, showing its effectiveness in detecting sophisticated attack sequences affecting the MMC control system.

Details

Database :
OAIster
Journal :
Gallardo , C , Burgos-Mellado , C , Munoz-Carpintero , D , Arias-Esquivel , Y , Verma , A K , Navas-Fonseca , A , Cardenas-Dobson , R & Dragicevic , T 2024 , ' Reinforcement Learning-Based False Data Injection Attacks Detector for Modular Multilevel Converters ' , IEEE Transactions on Industrial Electronics , vol. 71 , no. 7 , pp. 7927-7937 .
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1439389321
Document Type :
Electronic Resource