机器学习算法在路径损失建模中的应用综述

A. Abdulkarim, N. Faruk, Emmanuel Alozie, O. Sowande, Imam-Fulani Yusuf Olayinka, A. D. Usman, K. Adewole, A. Oloyede, H. Chiroma, Salisu Garba, A. Imoize, A. Musa, L. S. Taura
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引用次数: 0

摘要

由于电子商务、电子保健、教育和其他高科技应用等新出现的需求,对高速互联网服务的需求正在增加。无线通信网络现在已经成为一种必需品,特别是随着5G网络的引入,5G网络有可能以极低的延迟提供非凡的数据速率。在建筑环境中部署和运行5G及以上网络将需要一个复杂而可靠的无线电传播模型,以指导网络工程师实现有效的覆盖估计和适当的基站放置。确定性和经验路径损失模型的低效率和有时的不一致性使得整合机器学习模型成为必要。最近,不同的基于机器学习的路径损失模型已经被开发出来,以克服传统路径损失模型的缺点,因为它们具有显著的学习和预测能力。本文旨在回顾与基于机器学习的算法相关的路径损失模型,重点研究近21年(2000年至2021年)发展的模型,研究其网络参数和架构、设计和适用性,并提出进一步的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Machine Learning Algorithms to Path Loss Modeling: A Review
The demand for high-speed internet services is increasing due to emerging needs such as e-commerce, e-health, education, and other high-technology applications. Wireless communication networks have now become a necessity, especially with the introduction of the 5G networks which have the potential to provide extraordinary data rates with extremely low latency. The deployment and operation of 5G and beyond networks in built-up environments would require a complex and reliable radio propagation model that guides network engineers to achieve effective coverage estimation and appropriate base station placements. The inefficiency, and sometimes inconsistencies of deterministic and empirical path loss models necessitated the need to integrate machine learning models. Recently, different machine learning-based pathloss models have been developed to overcome drawbacks associated with conventional pathloss models due to their significant learning and prediction abilities. This paper aims to review path loss models relative to machine learning-based algorithms with a focus on models developed in the last 21 years (2000 to 2021) to study their network parameters and architectures, designs, and applicability, and proffer further research directions.
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