论文标题
6G的五个方面:研究挑战和机遇
Five Facets of 6G: Research Challenges and Opportunities
论文作者
论文摘要
尽管在全球范围内推出了第五代(5G)系统,但研究人员将注意力转向了对激进的下一代解决方案的探索。在这个早期的进化阶段,我们调查了该领域的五个主要研究方面,即{\ em Facet〜1:下一代体系结构,频谱和服务,方面〜2:下一代网络,〜3:事物Internet facet 〜4:facet 〜4:无线定位和感应〜FraceT 〜5:在6G中提供了一个至关重要的信息。有希望的技术的文献从相关的架构,网络,应用程序以及设计等等。我们描绘了许多依靠合作式混合网络的异质体系结构,这些网络由多种访问和传输机制支持。这些技术的脆弱性也被仔细考虑,以突出大多数有希望的未来研究方向。此外,我们列出了一套丰富的学习驱动优化技术。最后,我们观察了从纯单一组件带宽效率,功率效率或延迟优化对多组分设计的进化范式移位,这是由5G系统的Twin-Components Ultra Colable可靠的低层次模式的例证。我们主张朝着多组分帕累托优化的进一步步骤,这需要探索所有光学解决方案的整个帕累托前部,在不降低至少其他组件的情况下,目标函数的组成部分都无法改善目标函数的组成部分。
Whilst the fifth-generation (5G) systems are being rolled out across the globe, researchers have turned their attention to the exploration of radical next-generation solutions. At this early evolutionary stage we survey five main research facets of this field, namely {\em Facet~1: next-generation architectures, spectrum and services, Facet~2: next-generation networking, Facet~3: Internet of Things (IoT), Facet~4: wireless positioning and sensing, as well as Facet~5: applications of deep learning in 6G networks.} In this paper, we have provided a critical appraisal of the literature of promising techniques ranging from the associated architectures, networking, applications as well as designs. We have portrayed a plethora of heterogeneous architectures relying on cooperative hybrid networks supported by diverse access and transmission mechanisms. The vulnerabilities of these techniques are also addressed and carefully considered for highlighting the most of promising future research directions. Additionally, we have listed a rich suite of learning-driven optimization techniques. We conclude by observing the evolutionary paradigm-shift that has taken place from pure single-component bandwidth-efficiency, power-efficiency or delay-optimization towards multi-component designs, as exemplified by the twin-component ultra-reliable low-latency mode of the 5G system. We advocate a further evolutionary step towards multi-component Pareto optimization, which requires the exploration of the entire Pareto front of all optiomal solutions, where none of the components of the objective function may be improved without degrading at least one of the other components.