Mitigation of adversarial attacks: monitoring smart grids
バージョン 1.0.0 (4 MB) 作成者:
BERGHOUT Tarek
These codes presents a deep learning approach based robust data engineering for mitigation of adversarial attacks and wide area monitoring.
These files describe an experiment performed on phasor measurement unites dataset that is made publicly available . The goal of the experiment is to train a deep network to be resilient against any adversarial attacks. A specific Robust feature engineering and a deep learning are involved in model reconstructions. fast gradient sign method and basic iterative method are involved in this case.
Notes: (i) To be able to produce experiments provided in of these codes, you have to run the "*.m" files in the directory in alphabetical order. (ii) Then you can plot results starting by any "plot...*.m" files.
link to the original paper:
Please cite our work as:
Berghout, T.; Benbouzid, M.; Amirat, Y. Towards Resilient and Secure Smart Grids against PMU Adversarial Attacks: A Deep Learning-Based Robust Data Engineering Approach. Electronics 2023, 12, 2554. https://doi.org/10.3390/electronics12122554
引用
Berghout, Tarek, et al. “Towards Resilient and Secure Smart Grids against PMU Adversarial Attacks: A Deep Learning-Based Robust Data Engineering Approach.” Electronics, vol. 12, no. 12, MDPI AG, June 2023, p. 2554, doi:10.3390/electronics12122554.
MATLAB リリースの互換性
作成:
R2023a
R2018a 以降のリリースと互換性あり
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PMU_IMAGE_DATASET/ADV_Data_codes
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バージョン | 公開済み | リリース ノート | |
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1.0.0 |