Puspitasari Annisa Anggun, An To Truong, Alsharif Mohammed H, Lee Byung Moo
Department of Intelligent Mechatronics Engineering and Convergence Engineering for Intelligent Drone, Sejong University, Seoul 05006, Republic of Korea.
Department of Electrical Engineering, College of Electronics and Information Engineering, Sejong University, Seoul 05006, Republic of Korea.
Sensors (Basel). 2023 Sep 6;23(18):7709. doi: 10.3390/s23187709.
The fifth generation achieved tremendous success, which brings high hopes for the next generation, as evidenced by the sixth generation (6G) key performance indicators, which include ultra-reliable low latency communication (URLLC), extremely high data rate, high energy and spectral efficiency, ultra-dense connectivity, integrated sensing and communication, and secure communication. Emerging technologies such as intelligent reflecting surface (IRS), unmanned aerial vehicles (UAVs), non-orthogonal multiple access (NOMA), and others have the ability to provide communications for massive users, high overhead, and computational complexity. This will address concerns over the outrageous 6G requirements. However, optimizing system functionality with these new technologies was found to be hard for conventional mathematical solutions. Therefore, using the ML algorithm and its derivatives could be the right solution. The present study aims to offer a thorough and organized overview of the various machine learning (ML), deep learning (DL), and reinforcement learning (RL) algorithms concerning the emerging 6G technologies. This study is motivated by the fact that there is a lack of research on the significance of these algorithms in this specific context. This study examines the potential of ML algorithms and their derivatives in optimizing emerging technologies to align with the visions and requirements of the 6G network. It is crucial in ushering in a new era of communication marked by substantial advancements and requires grand improvement. This study highlights potential challenges for wireless communications in 6G networks and suggests insights into possible ML algorithms and their derivatives as possible solutions. Finally, the survey concludes that integrating Ml algorithms and emerging technologies will play a vital role in developing 6G networks.
第五代取得了巨大成功,这为下一代带来了很高的期望,第六代(6G)关键性能指标就是证明,这些指标包括超可靠低延迟通信(URLLC)、极高的数据速率、高能效和频谱效率、超密集连接、集成传感与通信以及安全通信。诸如智能反射面(IRS)、无人驾驶飞行器(UAV)、非正交多址接入(NOMA)等新兴技术有能力为大量用户提供通信,但存在高开销和计算复杂性的问题。这将解决对离谱的6G要求的担忧。然而,人们发现用传统数学解决方案很难优化这些新技术的系统功能。因此,使用机器学习(ML)算法及其衍生算法可能是正确的解决方案。本研究旨在全面、有条理地概述与新兴6G技术相关的各种机器学习(ML)、深度学习(DL)和强化学习(RL)算法。本研究的动机是在这一特定背景下,缺乏对这些算法重要性的研究。本研究考察了ML算法及其衍生算法在优化新兴技术以符合6G网络愿景和要求方面的潜力。这对于开启一个以重大进步为标志、需要大幅改进的通信新时代至关重要。本研究突出了6G网络中无线通信的潜在挑战,并提出了对可能的ML算法及其衍生算法作为可能解决方案的见解。最后,该综述得出结论,整合ML算法和新兴技术将在6G网络的发展中发挥至关重要的作用。