Abstract
AbstractConsidering the variety of Internet of Things (IoT) device types and access methods, it remains necessary to address the security challenges we currently encounter. Physical layer security (PLS) can offer streamlined security solutions for the next generation of IoT networks. Presently, we are witnessing the application of intelligent technologies including machine learning (ML) and artificial intelligence (AI) for precise prevention or detection of security breaches. Active eavesdropping detection is a physical layer security-based method that can differentiate wireless signals between wireless devices through feature classification. However, the operation of numerous IoT devices operate in environments characterized by low signal-to-noise ratios (SNR), and active eavesdropping attack detection during communication is rarely studied. We assume that the wireless system comprising an access point (AP), K authorized users and a proactive eavesdropper (E), following the framework of transforming wireless signals at AP into organized datasets that this article proposes a BP neural network model based on deep learning as a classifier to distinguish eavesdropping and non-eavesdropping attack signals. By conducting experiments under SNRs, the numerical results show that the proposed model has stronger robustness and detection accuracy can significantly improve the up to 19.58% compared with the reference approach, which show the superiority of our proposed method.
Publisher
Springer Science and Business Media LLC
Cited by
3 articles.
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1. Active Eavesdropping Attacks Detection in Massive Multiple Input Multiple Output Based on Machine Learning;2024 11th International Conference on Wireless Networks and Mobile Communications (WINCOM);2024-07-23
2. Machine Learning-Based Channel Allocation for Secure Indoor Visible Light Communications;2024 14th International Symposium on Communication Systems, Networks and Digital Signal Processing (CSNDSP);2024-07-17
3. Silencing eavesdroppers: SVM unveiling physical layer threats;i-manager's Journal on Information Technology;2024