Intrusion Detection Method Based on CNN–GRU–FL in a Smart Grid Environment

Author:

Zhai Feng12ORCID,Yang Ting1ORCID,Chen Hao2,He Baoling3,Li Shuangquan4ORCID

Affiliation:

1. School of Electrical and Information Engineering, Tianjin University, Tianjin 300072, China

2. China Electric Power Research Institute Co., Ltd., Beijing 100192, China

3. State Grid Corporation of China, Beijing 100031, China

4. Hexing Electrical Co., Ltd., Hangzhou 310030, China

Abstract

The aim of this paper is to address the current situation where business units in smart grid (SG) environments are decentralized and independent, and there is a conflict between the need for data privacy protection and network security monitoring. To address this issue, we propose a distributed intrusion detection method based on convolutional neural networks–gated recurrent units–federated learning (CNN–GRU–FL). We designed an intrusion detection model and a local training process based on convolutional neural networks–gated recurrent units (CNN–GRU) and enhanced the feature description ability by introducing an attention mechanism. We also propose a new parameter aggregation mechanism to improve the model quality when dealing with differences in data quality and volume. Additionally, a trust-based node selection mechanism was designed to improve the convergence ability of federated learning (FL). Through experiments, it was demonstrated that the proposed method can effectively build a global intrusion detection model among multiple independent entities, and the training accuracy rate, recall rate, and F1 value of CNN–GRU–FL reached 78.79%, 64.15%, and 76.90%, respectively. The improved mechanism improves the performance and efficiency of parameter aggregation when there are differences in data quality.

Funder

National Key R&D Program of China

National Natural Science Foundation of China

Key Program of Natural Science Foundation of Tianjin

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference35 articles.

1. Kim, H., and Choi, J. (2021). Intelligent Access Control Design for Security Context Awareness in Smart Grid. Sustainability, 13.

2. Yin, X.C., Liu, Z.G., Nkenyereye, L., and Ndibanje, B. (2019). Toward an Applied Cyber Security Solution in IoT-Based Smart Grids: An Intrusion Detection System Approach. Sensors, 19.

3. Waghmare, S. (2021, January 21–23). Machine Learning Based Intrusion Detection System for Real-Time Smart Grid Security. Proceedings of the 2021 13th IEEE PES Asia Pacific Power & Energy Engineering Conference (APPEEC), Thiruvananthapuram, India.

4. Intrusion Detection in Smart Grid Using Bagging Ensemble Classifiers;Subasi;Appl. Sci.,2021

5. Applying Big Data Based Deep Learning System to Intrusion Detection;Zhong;Big Data Min. Anal.,2020

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