回顾机器学习和人工智能在5G+网络中远程认证中的作用

Shannon K. Gallagher, Austin Whisnant, A. Hristozov, Amit Vasudevan
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引用次数: 0

摘要

下一代通信网络保证了设备数量、低延迟和异构性的指数级增长。因此,我们需要能够信任5G+网络中各个部分(通常称为切片)中的设备和设备对设备的交互。设备必须愿意并且能够远程证明它们的可靠性。尽管信任以前是基于确定性和硬件驱动的协议,但近几十年来,将人工智能和机器学习(AI/ML)建模作为这些协议的补充变得越来越普遍。本文综述了用于设备信任的模型的一些关键方面,包括模型选择的重要标准、模型结构和输入,以及这些模型的优缺点。我们还研究了这些AI/ML模型如何与5G网络架构交叉。接下来,我们将讨论这些信任模型需要哪些类型的数据。最后,我们讨论了5G+网络中用于远程认证的AI/ML模型的下一步工作。
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Reviewing the role of machine learning and artificial intelligence for remote attestation in 5G+ networks
The next generation of communication networks promises an exponential growth in number, low latency, and heterogeneity of devices. Consequently, we need to be able to trust devices and device-to-device interactions in sections of a 5G+ network, commonly known as slices. Devices must be willing and able to remotely attest to their trustworthiness. Although trust has previously been based upon deterministic and hardware-driven protocols, over recent decades it has become more common to incorporate artificial intelligence and machine learning (AI/ML) modeling to supplement those protocols. In this paper we review some key aspects of models used for trust of devices, including important criteria for model selection, model structure and inputs, and advantages and disadvantages of these models. We also examine how these AI/ML models intersect with 5G network architecture. Following that, we discuss what sort of data are expected for these trust models. Finally, we discuss next steps for AI/ML models for remote attestation in 5G+ networks.
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