Feature Selection–Based Detection of Covert Cyber Deception Assaults in Smart Grid Communications Networks Using Machine Learning

The integration of computing and modern wireless communications techniques is enabling prolific intelligent monitoring and efficient control of electric power systems in the frameworks of smart grids. In parallel, an enhanced reliance on such technologies has increased the susceptibility of today�...

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Main Authors: Saeed Ahmed, Youngdoo Lee, Seung-Ho Hyun, Insoo Koo
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8357769/
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spelling doaj-1e99e088167e4e34828a5927260504082021-03-29T21:09:14ZengIEEEIEEE Access2169-35362018-01-016275182752910.1109/ACCESS.2018.28355278357769Feature Selection–Based Detection of Covert Cyber Deception Assaults in Smart Grid Communications Networks Using Machine LearningSaeed Ahmed0https://orcid.org/0000-0002-3624-4096Youngdoo Lee1Seung-Ho Hyun2Insoo Koo3https://orcid.org/0000-0001-7476-8782School of Electrical Engineering, University of Ulsan, Ulsan, South KoreaSchool of Electrical Engineering, University of Ulsan, Ulsan, South KoreaSchool of Electrical Engineering, University of Ulsan, Ulsan, South KoreaSchool of Electrical Engineering, University of Ulsan, Ulsan, South KoreaThe integration of computing and modern wireless communications techniques is enabling prolific intelligent monitoring and efficient control of electric power systems in the frameworks of smart grids. In parallel, an enhanced reliance on such technologies has increased the susceptibility of today's smart grids to cyber-assaults. Recently, a new type of assault, termed covert cyber deception assault, has been introduced to infringe upon the integrity of smart grid data. Such assaults are designed and initiated by hackers who have considerably good knowledge of the power network topology and the security measures in place, and therefore, these assaults cannot be effectively detected by the bad-data detectors in traditional state estimators. In this paper, we propose a supervised machine learning-based scheme to detect a covert cyber deception assault in the state estimation-measurement feature data that are collected through a smart-grid communications network. The distinctive characteristic of the paper is that we use a genetic algorithm-based feature selection in our scheme to improve detection accuracy and reduce computational complexity. The proposed detection scheme is evaluated using standard IEEE 14-bus, 39-bus, 57-bus, and 118-bus test systems. Through performance analysis, it is shown that the proposed scheme provides a significant improvement in covert cyber deception assault detection accuracy, compared with existing machine learning-based schemes.https://ieeexplore.ieee.org/document/8357769/Cyber assaultsfeature selectiongenetic algorithmmachine learningsmart gridsstate estimation
collection DOAJ
language English
format Article
sources DOAJ
author Saeed Ahmed
Youngdoo Lee
Seung-Ho Hyun
Insoo Koo
spellingShingle Saeed Ahmed
Youngdoo Lee
Seung-Ho Hyun
Insoo Koo
Feature Selection–Based Detection of Covert Cyber Deception Assaults in Smart Grid Communications Networks Using Machine Learning
IEEE Access
Cyber assaults
feature selection
genetic algorithm
machine learning
smart grids
state estimation
author_facet Saeed Ahmed
Youngdoo Lee
Seung-Ho Hyun
Insoo Koo
author_sort Saeed Ahmed
title Feature Selection–Based Detection of Covert Cyber Deception Assaults in Smart Grid Communications Networks Using Machine Learning
title_short Feature Selection–Based Detection of Covert Cyber Deception Assaults in Smart Grid Communications Networks Using Machine Learning
title_full Feature Selection–Based Detection of Covert Cyber Deception Assaults in Smart Grid Communications Networks Using Machine Learning
title_fullStr Feature Selection–Based Detection of Covert Cyber Deception Assaults in Smart Grid Communications Networks Using Machine Learning
title_full_unstemmed Feature Selection–Based Detection of Covert Cyber Deception Assaults in Smart Grid Communications Networks Using Machine Learning
title_sort feature selection–based detection of covert cyber deception assaults in smart grid communications networks using machine learning
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description The integration of computing and modern wireless communications techniques is enabling prolific intelligent monitoring and efficient control of electric power systems in the frameworks of smart grids. In parallel, an enhanced reliance on such technologies has increased the susceptibility of today's smart grids to cyber-assaults. Recently, a new type of assault, termed covert cyber deception assault, has been introduced to infringe upon the integrity of smart grid data. Such assaults are designed and initiated by hackers who have considerably good knowledge of the power network topology and the security measures in place, and therefore, these assaults cannot be effectively detected by the bad-data detectors in traditional state estimators. In this paper, we propose a supervised machine learning-based scheme to detect a covert cyber deception assault in the state estimation-measurement feature data that are collected through a smart-grid communications network. The distinctive characteristic of the paper is that we use a genetic algorithm-based feature selection in our scheme to improve detection accuracy and reduce computational complexity. The proposed detection scheme is evaluated using standard IEEE 14-bus, 39-bus, 57-bus, and 118-bus test systems. Through performance analysis, it is shown that the proposed scheme provides a significant improvement in covert cyber deception assault detection accuracy, compared with existing machine learning-based schemes.
topic Cyber assaults
feature selection
genetic algorithm
machine learning
smart grids
state estimation
url https://ieeexplore.ieee.org/document/8357769/
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AT seunghohyun featureselectionx2013baseddetectionofcovertcyberdeceptionassaultsinsmartgridcommunicationsnetworksusingmachinelearning
AT insookoo featureselectionx2013baseddetectionofcovertcyberdeceptionassaultsinsmartgridcommunicationsnetworksusingmachinelearning
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