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Defense Strategy against False Data Injection Attacks in Ship DC Microgrids

Hong Zeng, Yuanhao Zhao, Tianjian Wang, Jundong Zhang

2022Journal of Marine Science and Engineering17 citationsDOIOpen Access PDF

Abstract

False Data Injection Attacks (FDIA) on ship Direct Current (DC) microgrids may result in the priority trip of a large load, a black-out, and serious accidents of ship collisions when maneuvering in the port. The key of the prevention of FDIA is the detection of and countermeasures to false data. In this paper, a defense strategy is developed to detect and mitigate against FDIA on ship DC microgrids. First, a DC bus voltage estimator is trained with an Artificial Neural Network (ANN) model. The error between the estimate value and the measure value is compared with a threshold generated from history data to detect the occurrence of FDIA. Combined with the correlation of artificial neural network inputs, bad data are identified and recovered. The method is tested under six cases with different network and physical disturbances in Matlab/Simulink. The results show that the method can identify and mitigate the FDIA effectively; the error of identifying FDIA by ANN is less than 0.5 V. Therefore, the deviation between the actual bus voltage and the reference voltage is less than 0.5 V.

Topics & Concepts

Artificial neural networkMATLABVoltageEstimatorComputer scienceKey (lock)EngineeringReliability engineeringControl theory (sociology)Artificial intelligenceComputer securityElectrical engineeringStatisticsMathematicsControl (management)Operating systemSmart Grid Security and ResilienceHVDC Systems and Fault ProtectionNetwork Security and Intrusion Detection
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