FEDDBN-IDS: federated deep belief network-based wireless network intrusion detection system

被引:0
作者
M. Nivaashini
E. Suganya
S. Sountharrajan
M. Prabu
Durga Prasad Bavirisetti
机构
[1] Sri Eshwar College of Engineering,Department of Artificial Intelligence and Data Science
[2] Sri Sivasubramaniya Nadar College of Engineering,Department of Information Technology
[3] Amrita School of Computing,Department of Computer Science and Engineering
[4] Amrita Vishwa Vidyapeetham,Department of Computer Science
[5] Norwegian University of Science and Technology (NTNU),undefined
来源
EURASIP Journal on Information Security | / 2024卷
关键词
Federated learning (FL); Deep learning (DL); Wi-Fi attacks; Intrusion detection system (IDS);
D O I
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中图分类号
学科分类号
摘要
Over the last 20 years, Wi-Fi technology has advanced to the point where most modern devices are small and rely on Wi-Fi to access the internet. Wi-Fi network security is severely questioned since there is no physical barrier separating a wireless network from a wired network, and the security procedures in place are defenseless against a wide range of threats. This study set out to assess federated learning, a new technique, as a possible remedy for privacy issues and the high expense of data collecting in network attack detection. To detect and identify cyber threats, especially in Wi-Fi networks, the research presents FEDDBN-IDS, a revolutionary intrusion detection system (IDS) that makes use of deep belief networks (DBNs) inside a federated deep learning (FDL) framework. Every device has a pre-trained DBN with stacking restricted Boltzmann machines (RBM) to learn low-dimensional characteristics from unlabelled local and private data. Later, these models are combined by a central server using federated learning (FL) to create a global model. The whole model is then enhanced by the central server with fully linked SoftMax layers to form a supervised neural network, which is then trained using publicly accessible labeled AWID datasets. Our federated technique produces a high degree of classification accuracy, ranging from 88% to 98%, according to the results of our studies.
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