LAPSE:2023.34697v1
Published Article
LAPSE:2023.34697v1
TADA: A Transferable Domain-Adversarial Training for Smart Grid Intrusion Detection Based on Ensemble Divergence Metrics and Spatiotemporal Features
Pengyi Liao, Jun Yan, Jean Michel Sellier, Yongxuan Zhang
April 27, 2023
Abstract
For attack detection in the smart grid, transfer learning is a promising solution to tackle data distribution divergence and maintain performance when facing system and attack variations. However, there are still two challenges when introducing transfer learning into intrusion detection: when to apply transfer learning and how to extract effective features during transfer learning. To address these two challenges, this paper proposes a transferability analysis and domain-adversarial training (TADA) framework. The framework first leverages various data distribution divergence metrics to predict the accuracy drop of a trained model and decides whether one should trigger transfer learning to retain performance. Then, a domain-adversarial training model with CNN and LSTM is developed to extract the spatiotemporal domain-invariant features to reduce distribution divergence and improve detection performance. The TADA framework is evaluated in extensive experiments where false data injection (FDI) attacks are injected at different times and locations. Experiments results show that the framework has high accuracy in accuracy drop prediction, with an RMSE lower than 1.79%. Compared to the state-of-the-art models, TADA demonstrates the highest detection accuracy, achieving an average accuracy of 95.58%. Moreover, the robustness of the framework is validated under different attack data percentages, with an average F1-score of 92.02%.
Keywords
adversarial training, cybersecurity, false data injection, smart grid, spatiotemporal feature, transfer learning, transferability analysis
Suggested Citation
Liao P, Yan J, Sellier JM, Zhang Y. TADA: A Transferable Domain-Adversarial Training for Smart Grid Intrusion Detection Based on Ensemble Divergence Metrics and Spatiotemporal Features. (2023). LAPSE:2023.34697v1
Author Affiliations
Liao P: Department of Electrical and Computer Engineering (ECE), Concordia University, Montréal, QC H3G 1M8, Canada [ORCID]
Yan J: Concordia Institute for Information Systems Engineering (CIISE), Concordia University, Montréal, QC H3G 1M8, Canada [ORCID]
Sellier JM: Ericsson GAIA Montréal, AI hub Canada, Montréal, QC H4S 0B6, Canada
Zhang Y: Department of Computer Science and Software Engineering (CSSE), Concordia University, Montréal, QC H3G 1M8, Canada
Journal Name
Energies
Volume
15
Issue
23
First Page
8778
Year
2022
Publication Date
2022-11-22
ISSN
1996-1073
Version Comments
Original Submission
Other Meta
PII: en15238778, Publication Type: Journal Article
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LAPSE:2023.34697v1
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https://doi.org/10.3390/en15238778
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