Fifth-Generation (5G) networks have a potential to accelerate power system transition to a flexible, softwarized, data-driven, and intelligent grid. With their evolving support for Machine Learning (ML)/Artificial Intelligence (AI) functions, 5G networks are expected to enable novel data-centric Smart Grid (SG) services. In this paper, we explore how data-driven SG services could be integrated with ML/AI-enabled 5G networks in a symbiotic relationship. We focus on the State Estimation (SE) function as a key element of the energy management system and focus on two main questions. Firstly, in a tutorial fashion, we present an overview on how distributed SE can be integrated with the elements of the 5G core network and radio access network architecture. Secondly, we present and compare two powerful distributed SE methods based on: i) graphical models and belief propagation, and ii) graph neural networks. We discuss their performance and capability to support a near real-time distributed SE via 5G network, taking into account communication delays.
翻译:第五大智能网络(5G)具有加速电力系统向灵活、软化、数据驱动和智能电网过渡的潜力。随着对机器学习/人工智能功能的支持不断演变,5G网络有望提供新的以数据为中心的智能网服务。在本文件中,我们探讨了数据驱动的SG服务如何与ML/AI驱动的5G网络在共生关系中融合的问题。我们侧重于国家估计功能,作为能源管理系统的一个关键要素,并侧重于两个主要问题。首先,我们以辅导方式概述了如何将分布的SE与5G核心网络和无线电接入网络结构的要素结合起来。第二,我们介绍并比较了两种强大的SE分布式方法,其基础是:一)图形模型和信仰传播,二)图象神经网络。我们讨论了它们通过5G网络支持近实时分发的SE网络的性能和能力,同时考虑到通信的延误。