Two main trends characterize today's communication landscape and are finding their way into industrial facilities: the rollout of 5G with its distinct support for vertical industries and the increasing success of machine learning (ML). The combination of those two technologies open the doors to many exciting industrial applications and its impact is expected to rapidly increase in the coming years, given the abundant data growth and the availability of powerful edge computers in production facilities. Unlike most previous work that has considered the application of 5G and ML in industrial environment separately, this paper highlights the potential and synergies that result from combining them. The overall vision presented here generates from the KICK project, a collaboration of several partners from the manufacturing and communication industry as well as research institutes. This unprecedented blend of 5G and ML expertise creates a unique perspective on ML-supported industrial communications and their role in facilitating industrial automation. The paper identifies key open industrial challenges that are grouped into four use cases: wireless connectivity and edge-cloud integration, flexibility in network reconfiguration, dynamicity of heterogeneous network services, and mobility of robots and vehicles. Moreover, the paper provides insights into the advantages of ML-based industrial communications and discusses current challenges of data acquisition in real systems.
翻译:与以往大多数单独考虑在工业环境中应用5G和ML的工作不同,本文件着重介绍了合并后产生的潜力和协同作用。本文介绍的总体愿景来自KICK项目,这是制造业和通信业以及研究机构的若干合作伙伴的合作。5G和ML专门知识的空前结合,为ML支持的工业通信及其在促进工业自动化方面的作用提供了独特的视角。本文件确定了主要开放的工业挑战,分为四类:无线连通和边缘集成、网络重组的灵活性、混杂网络服务的动态性以及机器人和车辆的流动。此外,本文还介绍了基于ML的工业通信的优势,并讨论了目前实际系统中获取数据的挑战。