5G及以后网络中基于分布式学习的入侵检测

Cheolhee Park, Kyung-Woo Park, Jihyeon Song, Jong-Hoi Kim
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引用次数: 1

摘要

随着移动技术的不断发展,通信系统也随之发展。此外,第六代(6G)移动网络预计将演变成一个更加分散和开放的环境。与此同时,随着网络系统的这些进步,可以暴露给对手的攻击面已经扩大,潜在的威胁变得更加复杂。为了保护网络系统免受这些潜在的攻击,各种研究都集中在入侵检测系统上。特别是基于人工智能的网络入侵检测系统研究积极开展,并取得了显著成果。然而,这些研究大多集中在集中式环境上,可能不适合部署在分布式系统中。在本文中,我们提出了一种基于分布式学习的入侵检测系统,该系统可以在分散的环境中有效地训练预测模型,并使具有不同计算能力的系统能够学习。我们利用了最先进的分割学习方法,它允许在具有不同计算资源的分布式系统中训练模型。在我们的实验中,我们使用在5G移动网络环境中收集的数据来评估模型,并证明所提出的系统可以应用于下一代移动环境中的网络安全。
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Distributed Learning-Based Intrusion Detection in 5G and Beyond Networks
As mobile technology has evolved over generations, communication systems have advanced along with it. Moreover, the 6th generation (6G) of mobile networks is expected to evolve into a more decentralized and open environment. Meanwhile, with these advancements in network systems, the attack surface that can be exposed to adversaries has expanded, and potential threats have become more sophisticated. To secure network sys-tems from these potential attacks, various studies have focused on intrusion detection systems. In particular, studies on artificial intelligence-based network intrusion detection systems have been actively conducted and have shown remarkable results. However, most of these studies concentrate on centralized environments and may not be suitable for deployment in distributed systems. In this paper, we propose a distributed learning-based intrusion detection system that can efficiently train predictive models in a decentralized environment and enable learning in systems with varying computing capabilities. We leveraged a state-of-the-art split learning approach, which allows for models to be trained in distributed systems with different computing resources. In our experiments, we evaluate the models using data collected in a 5G mobile network environment and demonstrate that the proposed system can be applied for network security in the next-generation mobile environment.
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