Data-driven approaches and paradigms have become promising solutions to efficient network performances through optimization. These approaches focus on state-of-the-art machine learning techniques that can address the needs of 5G networks and the networks of tomorrow, such as proactive load balancing. In contrast to model-based approaches, data-driven approaches do not need accurate models to tackle the target problem, and their associated architectures provide a flexibility of available system parameters that improve the feasibility of learning-based algorithms in mobile wireless networks. The work presented in this paper focuses on demonstrating a working system prototype of the 5G Core (5GC) network and the Network Data Analytics Function (NWDAF) used to bring the benefits of data-driven techniques to fruition. Analyses of the network-generated data explore core intra-network interactions through unsupervised learning, clustering, and evaluate these results as insights for future opportunities and works.
翻译:以数据驱动的方法和模式已成为通过优化实现高效网络绩效的有希望的解决办法,这些方法侧重于能够满足5G网络和明天网络需要的最先进的机器学习技术,例如积极主动的负载平衡;与基于模型的方法相比,以数据驱动的方法不需要准确的模型来解决目标问题,其相关结构提供了现有系统参数的灵活性,提高了流动无线网络学习算法的可行性;本文件所述工作的重点是展示5G核心(5GC)网络和网络数据分析功能(NWDAF)的工作系统原型,用于实现数据驱动技术的效益;对网络生成数据的分析通过不受监督的学习、集群和将这些结果作为未来机会和工作的洞察力加以评价,探索核心网络内部互动。