Document Type
Article
Publication Date
8-1-2021
Publication Title
Sensors
Volume
21
Issue
15
Keywords
Cyber-physical power systems, Fault diagnosis, Feature selection, Generative adversarial networks
Abstract
This paper presents a novel diagnostic framework for distributed power systems that is based on using generative adversarial networks for generating artificial knockoffs in the power grid. The proposed framework makes use of the raw data measurements including voltage, frequency, and phase-angle that are collected from each bus in the cyber-physical power systems. The collected measurements are firstly fed into a feature selection module, where multiple state-of-the-art techniques have been used to extract the most informative features from the initial set of available features. The selected features are inputs to a knockoff generation module, where the generative adversarial networks are employed to generate the corresponding knockoffs of the selected features. The generated knockoffs are then fed into a classification module, in which two different classification models are used for the sake of fault diagnosis. Multiple experiments have been designed to investigate the effect of noise, fault resistance value, and sampling rate on the performance of the proposed framework. The effectiveness of the proposed framework is validated through a comprehensive study on the IEEE 118-bus system.
DOI
10.3390/s21155173
ISSN
14248220
Recommended Citation
Hassani, Hossein; Razavi-Far, Roozbeh; Saif, Mehrdad; and Palade, Vasile. (2021). Generative adversarial network-based scheme for diagnosing faults in cyber-physical power systems. Sensors, 21 (15).
https://scholar.uwindsor.ca/electricalengpub/86
PubMed ID
34372410