A Review on Machine Learning Techniques Used in VANET and FANET Networks

Sumeyra Muti̇, E. E. Ülkü
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Abstract

The widespread use of the Internet and the increase in the number and variety of devices connected to the internet have led to the emergence of new methods in wireless communication. Dynamic and temporary Ad-Hoc networks, which do not require a fixed infrastructure as in traditional wireless network communication, are one of these new methods. The fact that Ad-Hoc networks do not need a fixed infrastructure has revealed a network structure with a lower cost and less configuration. Mobile Ad-Hoc networks play an important role, especially in the communication of nodes on the move. FANET (Flying Ad-Hoc Networks) networks, which are called flying ad hoc networks, are mobile Ad-Hoc networks used for communication of unmanned aerial vehicles (UAV), and VANET (Vehicular Ad-Hoc Networks) networks, which are called vehicular ad hoc networks, are mobile Ad-Hoc networks used for communication of road vehicles. The development and dissemination of these networks make a significant contribution to the development of autonomous vehicles and UAVs. The increase in the use of FANET and VANET networks, which are specialized subnets of mobile Ad-Hoc networks, and the increase in the number of nodes in these networks have caused problems related to security, efficiency, and sustainability in these networks. Machine learning methods, one of today' s effective and common approaches, are one of the ways that are frequently used in solving the problems specified in FANET and VANET networks. The rapid topology change, which is one of the most important features of these networks, makes it difficult to provide traffic management, trust management, routing, and data transmission. In this direction, machine learning approaches play an active role. In this study, it is presented by examining which machine learning techniques are used in the literature to perform important tasks such as traffic management, trust management, routing, and data transfer. Thus, it is aimed for those who will work in these fields to acquire information about machine learning approaches that can be used. Since the FANET network type is a new approach, it has been observed that there are few studies using machine learning. In VANET systems, studies using machine learning methods are especially intense in 2021. This study was carried out to give the reader an idea about which machine learning methods can be used in which problems in FANET and VANET networks.
机器学习技术在VANET和FANET网络中的应用综述
互联网的广泛使用以及连接到互联网的设备数量和种类的增加导致了无线通信新方法的出现。动态和临时Ad-Hoc网络是这些新方法之一,它不像传统的无线网络通信那样需要固定的基础设施。Ad-Hoc网络不需要固定的基础设施,这一事实揭示了一种成本更低、配置更少的网络结构。移动自组织网络在移动节点的通信中发挥着重要的作用。被称为飞行ad - hoc网络的FANET(飞行ad - hoc网络)网络是用于无人机(UAV)通信的移动ad - hoc网络,而被称为车辆ad - hoc网络的VANET(车辆ad - hoc网络)网络是用于道路车辆通信的移动ad - hoc网络。这些网络的发展和传播为自主车辆和无人机的发展做出了重大贡献。作为移动Ad-Hoc网络的专用子网,FANET和VANET网络的使用增加,以及这些网络中节点数量的增加,导致了这些网络在安全性、效率和可持续性方面的问题。机器学习方法是当今有效和常用的方法之一,是解决FANET和VANET网络中指定问题的常用方法之一。拓扑结构的快速变化是这些网络最重要的特征之一,这给网络提供流量管理、信任管理、路由和数据传输带来了困难。在这个方向上,机器学习方法发挥着积极的作用。在本研究中,通过检查文献中使用哪些机器学习技术来执行重要任务,如流量管理、信任管理、路由和数据传输,来呈现它。因此,它的目标是为那些将在这些领域工作的人获取可以使用的机器学习方法的信息。由于FANET网络类型是一种新的方法,因此观察到使用机器学习的研究很少。在VANET系统中,使用机器学习方法的研究在2021年尤为激烈。本研究的目的是让读者了解在FANET和VANET网络的哪些问题中可以使用哪些机器学习方法。
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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