Mahalanobis distance-based robust approaches against false data injection attacks on dynamic power state estimation
Jing Lin, Kaiqi Xiong

TL;DR
This paper introduces two robust methods using Mahalanobis distance to defend against false data injection attacks in dynamic power state estimation, significantly improving accuracy and stability over existing approaches.
Contribution
The paper proposes novel Mahalanobis distance-based robust defense approaches specifically designed for dynamic power state estimation against FDI attacks, outperforming existing static-focused methods.
Findings
Reduces estimation error by up to four orders of magnitude.
More stable and accurate than existing approaches.
Efficient in computational complexity.
Abstract
Many researchers have studied false data injection (FDI) attacks in power state estimation, but existing state estimation approaches are still highly vulnerable to FDI attacks. In this paper, we investigate the problem of the above three FDI attacks against dynamic power state estimation (DSE). Although the three attacks were discovered in SSE several years ago, none of them has been well addressed in static power state systems. In this research, we propose two robust defense approaches against the above three efficient FDI attacks on DSE. Compared to existing approaches, our proposed approaches have three major differences and significant strengths: (1) they defend against the three FDI attacks on dynamic power state estimation rather than static power state estimation, (2) they give a robust estimator that can accurately extract a subset of attack-free sensors for power state…
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Taxonomy
MethodsStochastic Steady-state Embedding
