智能交通系统中光学无线通信的机器学习技术综述

Thabelang Sefako;Fang Yang;Jian Song;Reevana Balmahoon;Ling Cheng
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引用次数: 0

摘要

智能交通系统(ITS)对交通安全、效率和减少拥堵至关重要。它们需要高效、安全、高速的通信。第五代(5G)、超5G (B5G)和第六代(6G)等射频(RF)技术很有前景,但频谱稀缺要求与光无线通信(OWC)网络共存,后者提供高数据速率和安全性,为ITS中混合RF/OWC应用奠定了坚实的基础。在本文中,我们深入研究了机器学习(ML)的应用,以增强ITS中OWC系统内的数据通信。我们首先对ITS领域的数据通信先决条件和相关挑战进行深入研究。随后,我们阐明了异构射频技术与OWC在ITS场景中用于数据通信的融合背后令人信服的理由。然后,我们的研究重点是阐明机器学习在优化ITS中通过OWC进行数据通信方面所发挥的不可或缺的作用。为了提供一个全面的视角,我们系统地评估和比较了OWC ITS数据通信中使用的一系列ML方法。作为我们研究的高潮,我们提供了一组有价值的建议,并为未来的研究工作阐明了有希望的途径,这些研究工作保证了在ML, OWC和ITS数据通信的关键交叉领域进行进一步的探索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review of Machine Learning Techniques for Optical Wireless Communication in Intelligent Transport Systems
Intelligent Transport Systems (ITS) are crucial for safety, efficiency, and reduced congestion in transportation. They require efficient, secure, high-speed communication. Radio Frequency (RF) technologies like Fifth Generation (5G), Beyond 5G (B5G), and Sixth Generation (6G) are promising, but spectrum scarcity mandates coexistence with Optical Wireless Communication (OWC) networks, which offer high data rates and security, forming a strong foundation for hybrid RF/OWC applications in ITS. In this paper, we delve into the application of Machine Learning (ML) to enhance data communications within OWC systems in ITS. We commence by conducting an in-depth examination of the data communication prerequisites and the associated challenges within the ITS domain. Subsequently, we elucidate the compelling rationale behind the convergence of heterogeneous RF technologies with OWC for data communications in ITS scenarios. Our investigation then pivots towards elucidating the indispensable role played by ML in optimizing data communications via OWC within ITS. To provide a comprehensive perspective, we systematically evaluate and compare a spectrum of ML methodologies employed in OWC ITS data communications. As a culmination of our study, we proffer a set of valuable recommendations and illuminate promising avenues for future research endeavors that warrant further exploration within this critical intersection of ML, OWC, and ITS data communications.
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