摘要
False data injection attacks (FDIAs) pose significant threats to power system security by stealthily manipulating measurements to bypass traditional residual-based detectors. While recent time-series detection methods improve robustness by modeling temporal continuity, they often rely on labeled attack data or static architectures with limited adaptability. This paper proposes a fully unsupervised FDIA detection framework based on implicit neural representations (INRs), which model multivariate power system measurements as continuous functions of time. A transformer-based hypernetwork dynamically generates INR parameters, enabling the model to adapt to varying operating conditions without retraining. To unify temporal continuity and structural decomposition, the proposed framework couples continuous-time INR modeling with a hierarchical trend-seasonal-residual representation and a measurement-type-aware residual structure. Anomalies are identified via a weighted reconstruction error using type-normalized anomaly scores. Extensive experiments on IEEE 14-bus and 118-bus test systems demonstrate that the proposed method achieves near-perfect detection accuracy against both optimization-based and controllable FDIAs, significantly outperforming existing supervised, semi-supervised, and unsupervised baselines. Moreover, the INR model exhibits strong sensitivity to subtle, temporally-localized perturbations and remains robust under different attack amplitudes. To the best of our knowledge, this is the first FDIA detection framework leveraging INR-based continuous-time modeling with transformer-driven parameterization, offering a scalable, interpretable, and topology-agnostic solution for securing modern power grids.
| 原文 | English |
|---|---|
| 文章編號 | 111507 |
| 期刊 | International Journal of Electrical Power and Energy Systems |
| 卷 | 174 |
| DOIs | |
| 出版狀態 | Published - 1月 2026 |
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