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基于机器学习协同聚类的超5G网络干扰攻击检测与缓解方法

Machine Learning-Based Cooperative Clustering for Detecting and Mitigating Jamming Attacks in beyond 5G Networks

Information Systems Frontiers · 2024
被引 3
ABS 3

中文导读

提出一种基于机器学习的协同聚类方法,通过全局模型优化各节点的干扰检测结果,在超5G网络中提升检测率5.21%、吞吐量26.35%,并降低能耗和延迟。

Abstract

As the frequency of jamming attacks on wireless networks has increased, conventional local jamming detection methods cannot counter advanced jamming attacks. To maximize the jammer detection performance of machine learning (ML)-based detection methods, a global model that reflects the local detection results of each local node is necessary. This study proposes an ML-based cooperative clustering (MLCC) technique aimed at effectively detecting and countering jamming in beyond-5G networks that utilize smart repeaters. The MLCC algorithm optimizes the detection rate by creating and updating a global ML model based on the jammer detection results determined by each local node. The network performance is optimized through load balancing among the smart repeaters and access points, and the best path is selected to avoid jammers. The experimental results demonstrate that the MLCC improves the detection rate and throughput by up to 5.21% and 26.35%, respectively, while reducing the energy consumption and latency by up to 76.68% and 7.14%, respectively.

无线网络安全机器学习干扰攻击检测协同聚类5G/超5G网络