An anomaly-based technique for fault detection in power system networks
Abstract
In recent years, fault detection in electrical power
systems has attracted substantial attention from both research
communities and industry. Although many fault detection
methods and their modifications have been developed during
the past decade, it remained very challenging in real
applications. Moreover, one of the most important parts of
designing a fault detection system is reliable data for training
and testing which is rare. Accordingly, this paper proposes an
anomaly-based technique for fault detection in electrical power
systems. Furthermore, a One-Class Support Vector Machine
(SVM) model and a Principal Component Analysis (PCA)-
based model are utilized to accomplish the desired task. The
used models are trained and tested on VSB (Technical
University of Ostrava) Power Line Fault Detection dataset
which is a large amount of real-time waveform data recorded
by their meter on Kaggle. Finally, performance and Receiver
Operating Characteristic (ROC) curves analyses of our results
are exploited to verify the effectiveness of the proposed
technique in the fault detection problem.