Localization in Cellular and Heterogeneous Networks for 5G and Beyond: A Review

A. Ivanov, Desislava Koshnicharova, Krasimir Tonchev, V. Poulkov
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引用次数: 1

Abstract

Localization in modern and future wireless networks has been established as an important field of research work due to the requirements of location-based applications and services with variety of accuracy requirements. These are driven by the strong heterogeneity in terms of processing power, size and range of the nodes in beyond Fifth Generation (5G) telecommunications. Thus, localization methods in cellular and heterogeneous networks (Het-Nets) diversify in their application scenario (terrestrial and based on aerial platforms) and bands (licensed and unlicensed). They are categorized, according to the methodology used to perform the positioning, into three groups – fingerprinting (learning-based location estimation), trilateration and triangulation (distance or angular based), and hybrid (combining two geometric features of the received signals) methods. For each category, a summary of the methods’ design features and achieved accuracy is presented in tabular form. On the basis of the review, directions for future research are outlined, that will facilitate the further advancements in the design and application of localization methods for wireless communications.
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5G及以后的蜂窝和异构网络定位:综述
由于基于位置的应用和服务的各种精度要求,定位已成为现代和未来无线网络中的一个重要研究领域。这是由处理能力、第五代(5G)以上电信节点的大小和范围等方面的强大异质性所驱动的。因此,蜂窝和异构网络(Het-Nets)中的定位方法在其应用场景(地面和基于空中平台)和频段(许可和非许可)上多样化。根据用于执行定位的方法,它们分为三组-指纹(基于学习的位置估计),三边测量和三角测量(基于距离或角度)和混合(结合接收信号的两种几何特征)方法。对于每一类,方法的设计特点和达到的精度的总结以表格形式呈现。在此基础上,展望了未来的研究方向,以促进无线通信定位方法的设计和应用的进一步发展。
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