Cyber-physical attack conduction and detection in decentralized power systems
IEEE Access, 2022•ieeexplore.ieee.org
The expansion of power systems over large geographical areas renders centralized
processing inefficient. Therefore, the distributed operation is increasingly adopted. This work
introduces a new type of attack against distributed state estimation of power systems, which
operates on inter-area boundary buses. We show that the developed attack can circumvent
existing robust state estimators and the convergence-based detection approaches.
Afterward, we carefully design a deep learning-based cyber-anomaly detection mechanism …
processing inefficient. Therefore, the distributed operation is increasingly adopted. This work
introduces a new type of attack against distributed state estimation of power systems, which
operates on inter-area boundary buses. We show that the developed attack can circumvent
existing robust state estimators and the convergence-based detection approaches.
Afterward, we carefully design a deep learning-based cyber-anomaly detection mechanism …
The expansion of power systems over large geographical areas renders centralized processing inefficient. Therefore, the distributed operation is increasingly adopted. This work introduces a new type of attack against distributed state estimation of power systems, which operates on inter-area boundary buses. We show that the developed attack can circumvent existing robust state estimators and the convergence-based detection approaches. Afterward, we carefully design a deep learning-based cyber-anomaly detection mechanism to detect such attacks. Simulations conducted on the IEEE 14-bus system reveal that the developed framework can obtain a very high detection accuracy. Moreover, experimental results indicate that the proposed detector surpasses current machine learning-based detection methods.
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