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Ensemble Feature Learning-Based Event Classification for Cyber-Physical Security of the Smart Grid

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Ensemble Feature Learning-Based Event Classification for Cyber-Physical Security of the Smart Grid

Hu, Chengming (2019) Ensemble Feature Learning-Based Event Classification for Cyber-Physical Security of the Smart Grid. Masters thesis, Concordia University.

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Abstract

The power grids are transforming into the cyber-physical smart grid with increasing two-way communications and abundant data flows. Despite the efficiency and reliability promised by this transformation, the growing threats and incidences of cyber attacks targeting the physical power systems have exposed severe vulnerabilities. To tackle such vulnerabilities, intrusion detection systems (IDS) are proposed to monitor threats for the cyber-physical security of electrical power and energy systems in the smart grid with increasing machine-to-machine communication. However, the multi-sourced, correlated, and often noise-contained data, which record various concurring cyber and physical events, are posing significant challenges to the accurate distinction by IDS among events of inadvertent and malignant natures. Hence, in this research, an ensemble learning-based feature learning and classification for cyber-physical smart grid are designed and implemented. The contribution of this research are (i) the design, implementation and evaluation of an ensemble learning-based attack classifier using extreme gradient boosting (XGBoost) to effectively detect and identify attack threats from the heterogeneous cyber-physical information in the smart grid; (ii) the design, implementation and evaluation of stacked denoising autoencoder (SDAE) to extract highlyrepresentative feature space that allow reconstruction of a noise-free input from noise-corrupted
perturbations; (iii) the design, implementation and evaluation of a novel ensemble learning-based feature extractors that combine multiple autoencoder (AE) feature extractors and random forest base classifiers, so as to enable accurate reconstruction of each feature and reliable classification against malicious events. The simulation results validate the usefulness of ensemble learning approach in detecting malicious events in the cyber-physical smart grid.

Divisions:Concordia University > Gina Cody School of Engineering and Computer Science > Concordia Institute for Information Systems Engineering
Item Type:Thesis (Masters)
Authors:Hu, Chengming
Institution:Concordia University
Degree Name:M.A. Sc.
Program:Information and Systems Engineering
Date:September 2019
Thesis Supervisor(s):Wang, Chun and Yan, Jun
ID Code:985779
Deposited By: Chengming Hu
Deposited On:05 Feb 2020 14:25
Last Modified:05 Feb 2020 14:25
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