Chen Chunlei, Zhang Huixiang, Hou Jinkui, Zhang Yonghui, Zhang Huihui, Dai Jiangyan, Pang Shunpeng, Wang Chengduan
School of Computer Engineering, Weifang University, Weifang 261061, China.
School of Cyberspace Security, Northwestern Polytechnical University, Xi'an 710072, China.
Biomimetics (Basel). 2023 Aug 2;8(4):343. doi: 10.3390/biomimetics8040343.
With the rapid development of enabling technologies like VR and AR, we human beings are on the threshold of the ubiquitous human-centric intelligence era. 6G is believed to be an indispensable cornerstone for efficient interaction between humans and computers in this promising vision. 6G is supposed to boost many human-centric applications due to its unprecedented performance improvements compared to 5G and before. However, challenges are still to be addressed, including but not limited to the following six aspects: Terahertz and millimeter-wave communication, low latency and high reliability, energy efficiency, security, efficient edge computing and heterogeneity of services. It is a daunting job to fit traditional analytical methods into these problems due to the complex architecture and highly dynamic features of ubiquitous interactive 6G systems. Fortunately, deep learning can circumvent the interpretability issue and train tremendous neural network parameters, which build mapping relationships from neural network input (status and specific requirements of a 6G application) to neural network output (settings to satisfy the requirements). Deep learning methods can be an efficient alternative to traditional analytical methods or even conquer unresolvable predicaments of analytical methods. We review representative deep learning solutions to the aforementioned six aspects separately and focus on the principles of fitting a deep learning method into specific 6G issues. Based on this review, our main contributions are highlighted as follows. (i) We investigate the representative works in a systematic view and find out some important issues like the vital role of deep reinforcement learning in the 6G context. (ii) We point out solutions to the lack of training data in 6G communication context. (iii) We reveal the relationship between traditional analytical methods and deep learning, in terms of 6G applications. (iv) We identify some frequently used efficient techniques in deep-learning-based 6G solutions. Finally, we point out open problems and future directions.
随着虚拟现实(VR)和增强现实(AR)等使能技术的迅速发展,我们人类正站在无处不在的以人为中心的智能时代的门槛上。6G被认为是在这一充满前景的愿景中实现人与计算机高效交互不可或缺的基石。由于与5G及之前相比,6G有着前所未有的性能提升,它有望推动许多以人为中心的应用。然而,挑战依然存在,包括但不限于以下六个方面:太赫兹和毫米波通信、低延迟和高可靠性、能源效率、安全性、高效边缘计算以及服务的异构性。由于无处不在的交互式6G系统架构复杂且具有高度动态特性,将传统分析方法应用于这些问题是一项艰巨的任务。幸运的是,深度学习可以规避可解释性问题并训练大量神经网络参数,这些参数建立了从神经网络输入(6G应用的状态和特定要求)到神经网络输出(满足要求的设置)的映射关系。深度学习方法可以成为传统分析方法的有效替代方案,甚至能够攻克分析方法无法解决的困境。我们分别回顾了针对上述六个方面的代表性深度学习解决方案,并重点关注将深度学习方法应用于特定6G问题的原理。基于此综述,我们的主要贡献如下:(i)我们从系统的角度研究了代表性的工作,并找出了一些重要问题,如深度强化学习在6G背景下的关键作用;(ii)我们指出了6G通信背景下训练数据不足的解决方案;(iii)我们从6G应用的角度揭示了传统分析方法与深度学习之间的关系;(iv)我们识别了基于深度学习的6G解决方案中一些常用的有效技术。最后,我们指出了开放问题和未来方向。