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Deep learning-based security situational awareness and detection technology for power networks in the context of big data

  • Autores: Xiaoyang Gong, Xinyu Hu, Xuxiang Zhou
  • Localización: Applied Mathematics and Nonlinear Sciences, ISSN-e 2444-8656, Vol. 8, Nº. 1, 2023, págs. 2939-2956
  • Idioma: inglés
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  • Resumen
    • With the comprehensive promotion of “big data + energy”, new power network security threats are also more prominent,and the traditional security system mainly based on “protection” will face great challenges. Firstly, this paper proposesfour kinds of network security situational awareness detection techniques based on distributed data analysis by combiningthe characteristics of big data in power networks. Secondly, the CRIT-LSTM power network security situationalawareness model is constructed by improving its loss evaluation process using the cross entropy (CE) function andimproving the LSTM unit structure using linear unit (ReLU). Finally, the performance of the three models is comparedand analyzed under two aspects of neural network training and testing and various metrics to verify the models'effectiveness. The results show that the improved CRIT-LSTM model based on deep learning, combining LSTM andReLU algorithms, has an RMSE of 0.717 for the training set and 0.806 for the test set. 7.32% accuracy and 10.51%improvement in recall compared to the LSTM-only model. The power network security situational awareness modelbased on the CRIT-LSTM model proposed in this paper integrates various security system functions to maximize thedefense against attacks and reduce unnecessary security risk losses.


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