数据科学和人工智能支持的 6G 无线通信网络分析

Battula Nancharaiah, Kiran Chand Ravi, Ajeet Kumar Srivastava, K. Arunkumar, Shams Tabrez Siddiqui, M. R. Arun
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引用次数: 0

摘要

摘要当前的网络(如 4G 和即将推出的 5G 网络)可能无法完全满足快速出现的流量需求,原因是智能终端、基础设施的激增,以及具有不同需求的各种应用的激增。因此,私营企业和学术界都已开始参与 6G 网络研究。最近,一种基于人工智能(AI)和数据科学(DS)相结合的 6G 网络智能设计和优化创新范式应运而生。因此,本文提出了一种面向 6G 网络的人工智能架构,该架构分为四个层次:智能感知、数据分析、智能控制和智能应用,以实现模式监测、智能资源管理、网络自动调整和智能服务供应。我们详细介绍了 DS&AI 方法在 6G 网络中的应用,如 AI 增强的移动边缘计算、智能移动性和智能频谱管理,以及如何实施这些方法以最大限度地提高网络性能。我们还强调了人工智能支持的 6G 网络未来研究和澄清的关键领域,包括计算效率、算法弹性、硬件开发和能源管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Analysis of Data Science and AI-enabled 6G Wireless Communication Networks

Abstract

Current networks (such as 4G and the forthcoming 5G networks) may not be capable of fully congregating quickly emerging traffic strains due to the proliferation of smart fatal, infrastructures and the explosion of diverse applications with varying necessities. As a result, 6G network research has already seen participation from both the private sector and the academic community. Recently, an innovative paradigm has emerged for the intelligent design and optimization of 6G networks based on the combination of artificial intelligence (AI) and data science (DS). Therefore, this article proposes an AI-enabled architecture for 6G networks, which is alienated into four layers: intelligent sensing, data analytics, intelligent control, and smart application, to realize patterns sighting, smart resource management, automatic network adjustment, and intelligent service provisioning. We go over the uses of DS&AI methods in 6G networks, such as AI-enhanced mobile edge computing, intelligent mobility, and smart-spectrum management, and how to implement these methods to maximize the network’s performance. We also emphasize key areas for future study and clarifications for AI-enabled 6G networks, together with computational efficiency, algorithm resilience, hardware development, and energy management.

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来源期刊
Radioelectronics and Communications Systems
Radioelectronics and Communications Systems Engineering-Electrical and Electronic Engineering
CiteScore
2.10
自引率
0.00%
发文量
9
期刊介绍: Radioelectronics and Communications Systems  covers urgent theoretical problems of radio-engineering; results of research efforts, leading experience, which determines directions and development of scientific research in radio engineering and radio electronics; publishes materials of scientific conferences and meetings; information on scientific work in higher educational institutions; newsreel and bibliographic materials. Journal publishes articles in the following sections:Antenna-feeding and microwave devices;Vacuum and gas-discharge devices;Solid-state electronics and integral circuit engineering;Optical radar, communication and information processing systems;Use of computers for research and design of radio-electronic devices and systems;Quantum electronic devices;Design of radio-electronic devices;Radar and radio navigation;Radio engineering devices and systems;Radio engineering theory;Medical radioelectronics.
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