Online Dictionary Learning Based Fault and Cyber Attack Detection for
Power Systems
- URL: http://arxiv.org/abs/2108.10990v1
- Date: Tue, 24 Aug 2021 23:17:58 GMT
- Title: Online Dictionary Learning Based Fault and Cyber Attack Detection for
Power Systems
- Authors: Gabriel Intriago, Yu Zhang
- Abstract summary: This paper deals with the event and intrusion detection problem by leveraging a stream data mining classifier.
We first build a dictionary by learning higher-level features from unlabeled data.
Then, the labeled data are represented as sparse linear combinations of learned dictionary atoms.
We capitalize on those sparse codes to train the online classifier along with efficient change detectors.
- Score: 4.657875410615595
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The emerging wide area monitoring systems (WAMS) have brought significant
improvements in electric grids' situational awareness. However, the newly
introduced system can potentially increase the risk of cyber-attacks, which may
be disguised as normal physical disturbances. This paper deals with the event
and intrusion detection problem by leveraging a stream data mining classifier
(Hoeffding adaptive tree) with semi-supervised learning techniques to
distinguish cyber-attacks from regular system perturbations accurately. First,
our proposed approach builds a dictionary by learning higher-level features
from unlabeled data. Then, the labeled data are represented as sparse linear
combinations of learned dictionary atoms. We capitalize on those sparse codes
to train the online classifier along with efficient change detectors. We
conduct numerical experiments with industrial control systems cyber-attack
datasets. We consider five different scenarios: short-circuit faults, line
maintenance, remote tripping command injection, relay setting change, as well
as false data injection. The data are generated based on a modified IEEE 9-bus
system. Simulation results show that our proposed approach outperforms the
state-of-the-art method.
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