Artificial intelligence support for 5G/6G-enabled Internet of Vehicles networks: An overview

Elias Eze, Joy Eze
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Abstract

Improving transportation efficiency and on-road safety using Intelligent Transportation Systems (ITSs) has become crucial as road congestion and vehicle complexity increase coupled with ongoing rapid development and deployment of electric vehicles across the globe. Recent advances in computer systems and wireless communications have ushered in more possibilities for smart solutions to road traffic safety, congestion reduction, convenience, and overall efficiency. The evolution and deployment of 5G have opened up new technologies and features that can provide the much needed high-mobility wireless networks for the emerging Internet of Vehicles (IoV). The application of AI consisting of Deep Learning (DL), Machine Learning (ML) and Swarm Intelligence (SI) techniques have emerged in both conventional and vehicular wireless networks with strong promises towards enhancing traditional data-centric methods. Particularly, in the application domains of IoV, big data is frequently generated from various sources within the vehicular communication environment. The collected big data is usually processed and used for both safety and infotainment services including routing, broadening drivers' awareness, traffic mobility prediction for hazardous situation avoidance to improve overall safety and passenger comfort, and general quality of road experience. Applying data-driven methods enables AI to address high mobility and dynamic vehicular communications and network issues facing traditional solutions and approaches like network optimization techniques and conventional control loop design. This study provides a concise review of DL, ML and SI techniques and applications that are currently being explored by different research efforts within the application area of vehicular networks. The paper further discusses the strengths and weaknesses of the proposed AI-based solutions for the IoV networks.
人工智能支持5G/ 6g车联网:概述
随着道路拥堵和车辆复杂性的增加,以及电动汽车在全球范围内的快速发展和部署,使用智能交通系统(its)提高交通效率和道路安全变得至关重要。计算机系统和无线通信的最新进展为道路交通安全、减少拥堵、便利和整体效率的智能解决方案带来了更多的可能性。5G的发展和部署开辟了新的技术和功能,可以为新兴的车联网(IoV)提供急需的高移动性无线网络。由深度学习(DL)、机器学习(ML)和群体智能(SI)技术组成的人工智能的应用已经出现在传统和车载无线网络中,并有望增强传统的以数据为中心的方法。特别是在车联网的应用领域,在车载通信环境中,经常会产生各种来源的大数据。收集到的大数据通常被处理和用于安全和信息娱乐服务,包括路由,拓宽驾驶员意识,交通移动预测以避免危险情况,以提高整体安全性和乘客舒适度,以及道路体验的总体质量。应用数据驱动的方法使人工智能能够解决网络优化技术和传统控制回路设计等传统解决方案和方法所面临的高移动性和动态车辆通信和网络问题。本研究简要回顾了目前在汽车网络应用领域中不同的研究工作正在探索的DL、ML和SI技术和应用。本文进一步讨论了所提出的基于人工智能的车联网解决方案的优缺点。
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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