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A LSTM-Based Channel Fingerprinting Method for Intrusion Detection

机译:用于入侵检测的基于LSTM的通道指纹识别方法

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摘要

Intrusion detection is a crucial issue for 5th generation (5G) access networks to securely support various services. Traditional cryptographic key-based solutions are not suitable for severe resources-constrained networks, such as the Internet of Things (IoT). In this paper, we propose a lightweight intrusion detection mechanism by exploring physical layer attributes that are unique and difficult to impersonate. Specifically, a long-short memory network (LSTM) is employed as an intelligent classifier to distinguish different transmitters based on channel state information (CSI) features. Then we develop a comprehensive 5G NR channel detection model based on LSTM under dynamic channel conditions to identify malicious attacks by intelligently analyzing CSI. The simulation results demonstrate that the proposed solution improves detection accuracy and successfully prevent systems from spoofing attacks.
机译:入侵检测是第五代(5G)接入网络以安全地支持各种服务的重要问题。传统的加密密钥基础解决方案不适合严重的资源受限网络,例如事物互联网(物联网)。在本文中,我们通过探索独特且难以模拟的物理层属性提出轻质入侵检测机制。具体地,使用长短存储器网络(LSTM)作为智能分类器,以基于信道状态信息(CSI)特征来区分不同的发射器。然后,我们在动态信道条件下开发一个基于LSTM的全面的5G NR通道检测模型,以智能分析CSI来识别恶意攻击。仿真结果表明,所提出的解决方案提高了检测精度,成功地防止了欺骗攻击的系统。

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