Bad-Data Sequence Detection for Power System State Estimation via
ICA-GAN
- URL: http://arxiv.org/abs/2012.05163v1
- Date: Wed, 9 Dec 2020 16:53:56 GMT
- Title: Bad-Data Sequence Detection for Power System State Estimation via
ICA-GAN
- Authors: Kursat Rasim Mestav, Lang Tong
- Abstract summary: A deep learning approach to the detection of bad-data sequences in power systems is proposed.
The bad-data model is nonparametric that includes arbitrary natural and adversarial data anomalies.
The probability distribution of data in anomaly-free system operations is also non-parametric, unknown, but with historical training samples.
- Score: 5.990174495635325
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A deep learning approach to the detection of bad-data sequences in power
systems is proposed. The bad-data model is nonparametric that includes
arbitrary natural and adversarial data anomalies. No historical samples of data
anomaly are assumed. The probability distribution of data in anomaly-free
system operations is also non-parametric, unknown, but with historical training
samples. A uniformity test is proposed based on a generative adversarial
network (GAN) that extracts independent components of the measurement sequence
via independent component analysis (ICA). Referred to as ICA-GAN, the developed
approach to bad-data sequence detection can be applied at the individual sensor
level or jointly at the system level. Numerical results demonstrate significant
improvement over the state-of-the-art solutions for a variety of bad-data cases
using PMU measurements from the EPFL smart grid testbed and that from the
synthetic Northern Texas grid.
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