论文标题
6G的十二个科学挑战:重新思考通信理论的基础
Twelve Scientific Challenges for 6G: Rethinking the Foundations of Communications Theory
论文作者
论文摘要
第六代通信网络中的研究需要应对新的挑战,以便在高数据速率,低延迟,高可靠性和庞大的连接性方面满足新兴应用程序的要求。为此,需要优化整个通信链,包括通道和周围环境,因为它不足以控制发射器和/或接收器。研究大型智能表面,超大的多输入多输出和智能的建设性环境将促进这一方向。此外,要允许在连接的智能设备之间交换高维感应数据,需要考虑使用更有效和上下文感知的信息编码的语义和目标通信。特别是对于多机构系统,代理共同协作以实现复杂的任务,可以学习新兴的通信,而不是硬编码的通信,以实现更有效的任务执行和通信资源的使用。此外,应利用新的物理现象,例如通信的热力学以及信息理论与电磁主义之间的相互作用,以更好地了解不同技术的物理局限性,例如全息传播。另一个新的交流范式是考虑端到端的方法,而不是逐块优化,这需要利用机器学习理论,非线性信号处理理论和非共同通信理论。在这种情况下,我们确定了十二个科学挑战以重建通信的理论基础,并且在为研究社区提供研究机会和开放问题的同时,我们概述了每个挑战。
The research in the sixth generation of communication networks needs to tackle new challenges in order to meet the requirements of emerging applications in terms of high data rate, low latency, high reliability, and massive connectivity. To this end, the entire communication chain needs to be optimized, including the channel and the surrounding environment, as it is no longer sufficient to control the transmitter and/or the receiver only. Investigating large intelligent surfaces, ultra massive multiple-input multiple-output, and smart constructive environments will contribute to this direction. In addition, to allow the exchange of high dimensional sensing data between connected intelligent devices, semantic and goal oriented communications need to be considered for a more efficient and context-aware information encoding. In particular, for multi-agent systems, where agents are collaborating together to achieve a complex task, emergent communications, instead of hard coded communications, can be learned for more efficient task execution and communication resources use. Moreover, new physics phenomenon should be exploited such as the thermodynamics of communication as well as the the interaction between information theory and electromagnetism to better understand the physical limitations of different technologies, e.g, holographic communications. Another new communication paradigm is to consider the end-to-end approach instead of block-by-block optimization, which requires exploiting machine learning theory, non-linear signal processing theory, and non-coherent communications theory. Within this context, we identify twelve scientific challenges for rebuilding the theoretical foundations of communications, and we overview each of the challenges while providing research opportunities and open questions for the research community.