论文标题
机器学习能够启用频谱-AS-AS-Service动态共享
Machine Learning Towards Enabling Spectrum-as-a-Service Dynamic Sharing
论文作者
论文摘要
无线宽带用户,设备和新颖应用的增长导致对新射频频谱的需求显着增加。考虑到到2022年,每年的全球流量将达到4.8个Zettabytes。此外,预计互联网用户的数量将达到48亿,并且连接设备的数量将接近285亿个设备。但是,由于频谱大部分是分配和分配的,因此提供了更多的频谱来扩展现有服务或提供新服务变得更具挑战性。为了解决这个问题,已提出频谱共享作为提高光谱利用效率的潜在解决方案。考虑到可以集成以实现它的多种级别和技术,采用有效和有效的频谱共享机制本身就是一项艰巨的任务。为此,本文概述了文献中提出的不同频谱共享级别和技术。此外,它通过提供Spectrum-As-As-Service架构来讨论采用动态共享机制的潜力。此外,它描述了机器学习模型在促进频谱的自动化动态共享和提供频谱-AS-AS-Service的潜在作用。
The growth in wireless broadband users, devices, and novel applications has led to a significant increase in the demand for new radio frequency spectrum. This is expected to grow even further given the projection that the global traffic per year will reach 4.8 zettabytes by 2022. Moreover, it is projected that the number of Internet users will reach 4.8 billion and the number of connected devices will be close 28.5 billion devices. However, due to the spectrum being mostly allocated and divided, providing more spectrum to expand existing services or offer new ones has become more challenging. To address this, spectrum sharing has been proposed as a potential solution to improve spectrum utilization efficiency. Adopting effective and efficient spectrum sharing mechanisms is in itself a challenging task given the multitude of levels and techniques that can be integrated to enable it. To that end, this paper provides an overview of the different spectrum sharing levels and techniques that have been proposed in the literature. Moreover, it discusses the potential of adopting dynamic sharing mechanisms by offering Spectrum-as-a-Service architecture. Furthermore, it describes the potential role of machine learning models in facilitating the automated and efficient dynamic sharing of the spectrum and offering Spectrum-as-a-Service.