Federated Learning-Based Intrusion Detection Method for Smart Grid

Dong Bin, Xin Li, Chunyan Yang, Songming Han, Ying Ling
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Abstract

Power systems have revealed serious security problems in the process of gradual opening, and intrusion detection as an important security defense measure can detect potential intrusions in a timely manner. In the big data environment of electric power, there are information silos between different electric power data owners, and in order to obtain intrusion detection models with better performance, traditional methods need to fuse data from all parties, which often brings difficulties in information security and data privacy protection. In this paper, we propose a distributed intrusion detection framework based on federated learning and apply it to network traffic data analysis. The framework aims to ensure the information security of each local power data while establishing a collection of decentralized data and completing the joint training of models from multiple data sources. The experimental results show that the scheme achieves 98.1% accuracy on the simulated data set, which is better than other commonly used intrusion detection algorithms. In addition, the method well ensures the security and privacy of data because the data are not interoperable among each participant under the federated learning mechanism.
基于联邦学习的智能电网入侵检测方法
电力系统在逐步开放的过程中暴露出了严重的安全问题,入侵检测作为一种重要的安全防御措施,可以及时发现潜在的入侵。在电力大数据环境中,不同电力数据所有者之间存在信息孤岛,传统方法为了获得性能更好的入侵检测模型,需要融合各方数据,这往往给信息安全和数据隐私保护带来困难。本文提出了一种基于联邦学习的分布式入侵检测框架,并将其应用于网络流量数据分析。该框架旨在确保各个地方电力数据的信息安全,同时建立一个分散的数据集合,完成多个数据源模型的联合训练。实验结果表明,该方案在模拟数据集上的准确率达到了98.1%,优于其他常用的入侵检测算法。此外,由于在联邦学习机制下各参与者之间的数据不能互操作,该方法很好地保证了数据的安全性和隐私性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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