This article emphasizes the great potential of big data processing for advanced user- and situation-oriented, so context-aware resource utilization in future wireless networks. In particular, we consider the application of dedicated, detailed, and rich-in-content maps and records called Radio Service Maps, (RSM) for unlocking the spectrum opportunities in 6G networks. Due to the characteristics of 5G, in the future, there will be a need for high convergence of various types of wireless networks, such as cellular and the Internet-of-Things (IoT) networks, which are steadily growing and consequently considered as the studied use case in this work. We show that the 6G network significantly benefits from effective Dynamic Spectrum management (DSM) based on RSM which provides rich and accurate knowledge of the radio context; a knowledge that is stored and processed within database-oriented subsystems designed to support wireless networks for improving spectral efficiency. In this article, we discuss context-aware RSM subsystem architecture and operation for DSM in convergent 6G radio and IoT networks. By providing various use-cases, we demonstrate that the accurate definition and access to the rich context information lead to a significant improvement of the system performance. In consequence, we also claim that efficient big-data processing algorithms will be necessary for future applications.
翻译:文章强调对先进的用户和情况导向型网络进行大数据处理的巨大潜力,从而在将来的无线网络中进行符合背景的资源利用。我们尤其考虑应用专门、详细和丰富的内容地图和记录,称为无线电服务地图,以打开6G网络的频谱机会。由于5G的特性,今后需要高度整合各类无线网络,如蜂窝和因特网网络,这些网络正在稳步增长,并因此被视为这项工作中研究的用途。我们表明,6G网络从基于RSM的有效动态光谱管理(DSM)中获得巨大好处,该动态光谱管理对无线电环境提供丰富和准确的知识;这种知识在数据库导向型子系统中储存和处理,目的是支持无线网络提高光谱效率。在文章中,我们讨论了在Connt 6G无线电和IoT网络中进行有背景的RSM子系统结构和DSM的操作。通过提供各种使用案例,我们表明,基于RSMM(DSM)的高效定义和获取未来有重大性能处理结果的系统,因此,我们还需要对丰富的数据进行重大性数据处理。