ORAN-B5G: A Next-Generation Open Radio Access Network Architecture With Machine Learning for Beyond 5G in Industrial 5.0

IF 5.3 2区 计算机科学 Q1 TELECOMMUNICATIONS IEEE Transactions on Green Communications and Networking Pub Date : 2024-03-06 DOI:10.1109/TGCN.2024.3396454
Abdullah Ayub Khan;Asif Ali Laghari;Abdullah M. Baqasah;Roobaea Alroobaea;Thippa Reddy Gadekallu;Gabriel Avelino Sampedro;Yaodong Zhu
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Abstract

Autonomous decision-making is considered an intercommunication use case that needs to be addressed when integrating open radio access networks with mobile-based 5G communication. The robustness of innovations is diminished by the conventional method of designing an end-to-end radio access network solution. Through an analysis of these possibilities, this paper presents a machine learning-based intelligent system whose primary goal is load balancing using Artificial Neural Networks with Particle Swam Optimization-enabled metaheuristic optimization mechanisms for telecommunication industry requests, like product compatibility. We increase the proposed system’s reliability by using third-generation partnership project standards to automate the distribution of transactional load among various connected units. This intelligent system encloses the hierarchy of automation enabled by artificial intelligence. Conversely, AI-enabled open radio access control explores the barriers to next-generation intercommunication, including those after 5G. It covers deterministic latency and capabilities, physical layer-based dynamic controls, privacy and security, and testing applications for AI-based controller designs.
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ORAN-B5G:面向工业 5.0 中的超越 5G 的机器学习下一代开放式无线接入网络架构
在将开放式无线接入网络与基于移动的 5G 通信集成时,自主决策被认为是需要解决的一个互通用例。传统的端到端无线接入网络解决方案设计方法削弱了创新的稳健性。通过对这些可能性的分析,本文提出了一种基于机器学习的智能系统,其主要目标是利用人工神经网络和支持粒子搜索优化(Particle Swam Optimization)的元搜索优化机制来平衡负载,以满足电信行业的要求,如产品兼容性。我们通过使用第三代合作项目标准来自动分配各连接单元之间的事务负载,从而提高了拟议系统的可靠性。这一智能系统包含了人工智能实现的自动化层次。相反,人工智能支持的开放式无线电接入控制探索了下一代互通的障碍,包括 5G 之后的障碍。它涵盖了确定性延迟和能力、基于物理层的动态控制、隐私和安全,以及基于人工智能的控制器设计的测试应用。
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来源期刊
IEEE Transactions on Green Communications and Networking
IEEE Transactions on Green Communications and Networking Computer Science-Computer Networks and Communications
CiteScore
9.30
自引率
6.20%
发文量
181
期刊最新文献
Table of Contents Guest Editorial Special Issue on Green Open Radio Access Networks: Architecture, Challenges, Opportunities, and Use Cases IEEE Transactions on Green Communications and Networking IEEE Communications Society Information HSADR: A New Highly Secure Aggregation and Dropout-Resilient Federated Learning Scheme for Radio Access Networks With Edge Computing Systems
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