5G工业物联网环境下基于ai的网络安全增强

Jonghoon Lee, Hyunjin Kim, Chulhee Park, Youngsoo Kim, Jong-Geun Park
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引用次数: 1

摘要

最近的5G网络旨在提供更高的速度、更低的延迟和更大的容量;因此,与以往的移动网络相比,5G网络需要更先进、更智能的网络安全。为了检测未知的和不断发展的5G网络入侵,本文提出了一种基于人工智能(AI)的网络威胁检测系统,对5G网络流和安全事件数据进行数据标记、数据过滤、数据预处理和数据学习。首先在nsl - kdd和CICIDS 2017两个知名数据集上进行绩效评估;然后,在5G工业物联网环境中对所提出的系统进行了实际测试。为了演示在真实5G环境中对网络威胁的检测,本研究利用了5G模型工厂,该模型工厂被缩小为一个真实的智能工厂,其中包括许多基于5G工业物联网的设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-based Network Security Enhancement for 5G Industrial Internet of Things Environments
The recent 5G networks aim to provide higher speed, lower latency, and greater capacity; therefore, compared to the previous mobile networks, more advanced and intelligent network security is essential for 5G networks. To detect unknown and evolving 5G network intrusions, this paper presents an artificial intelligence (AI)-based network threat detection system to perform data labeling, data filtering, data preprocessing, and data learning for 5G network flow and security event data. The performance evaluations are first conducted on two well-known datasets-NSL-KDD and CICIDS 2017; then, the practical testing of proposed system is performed in 5G industrial IoT environments. To demonstrate detection against network threats in real 5G environments, this study utilizes the 5G model factory, which is downscaled to a real smart factory that comprises a number of 5G industrial IoT-based devices.
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