论文标题
5G-NIDD:通过5G无线网络生成的综合网络入侵检测数据集
5G-NIDD: A Comprehensive Network Intrusion Detection Dataset Generated over 5G Wireless Network
论文作者
论文摘要
借助引入了众多新连接,功能和服务,第五代(5G)无线技术反映了移动通信网络的发展,并将在接下来的十年中留下来。 5G合并的多种服务和技术使现代通信网络本质上非常复杂和复杂。这种复杂性以及机器学习(ML)和人工智能(AI)的结合,为攻击者提供了对网络和网络设备发动智能攻击的机会。由于缺乏应对这些威胁的智能安全机制,这些攻击通常经常未被发现。因此,整个网络中实时,主动和自适应安全机制的实施将是5G和未来通信系统的组成部分。因此,从真实网络收集的大量数据将在培训AI/ML模型中发挥重要作用,以识别和检测网络流量中的恶意内容。这项工作介绍了5G-NIDD,这是一个在功能性5G测试网络上构建的完全标记的数据集,该数据集可以由开发和测试AI/ML解决方案的人使用。这项工作进一步使用常见的ML模型分析了收集的数据,并显示了达到的准确性水平。
With a plethora of new connections, features, and services introduced, the 5th generation (5G) wireless technology reflects the development of mobile communication networks and is here to stay for the next decade. The multitude of services and technologies that 5G incorporates have made modern communication networks very complex and sophisticated in nature. This complexity along with the incorporation of Machine Learning (ML) and Artificial Intelligence (AI) provides the opportunity for the attackers to launch intelligent attacks against the network and network devices. These attacks often traverse undetected due to the lack of intelligent security mechanisms to counter these threats. Therefore, the implementation of real-time, proactive, and self-adaptive security mechanisms throughout the network would be an integral part of 5G as well as future communication systems. Therefore, large amounts of data collected from real networks will play an important role in the training of AI/ML models to identify and detect malicious content in network traffic. This work presents 5G-NIDD, a fully labeled dataset built on a functional 5G test network that can be used by those who develop and test AI/ML solutions. The work further analyses the collected data using common ML models and shows the achieved accuracy levels.