Control of Software-Defined Networks of Unmanned Aerial Vehicles using Distributed Deep Learning

Syed Hauider Abbas, M. Guru Vimal Kumar, Lekha D, Geethamahalakshmi G, S. S, A. Deepak
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Abstract

There are a variety of civilian, public, and military applications that might be developed for drones. Because they come equipped with their own communications infrastructure, they may be remotely controlled from a distance. Unmanned Aerial Vehicles (UAVs) are gaining popularity for its utilization in a range of activities due to their low cost, versatility, ease of deployment, and the ability to replace manually-operated aircraft in many situations. These vehicles are capable of performing a wide range of activities, such as monitoring, managing crowds, providing wireless coverage, and surveillance. Unmanned Aerial Vehicles (UAVs), often known as drones have the ability to offer solutions that are not only trustworthy but also economical for addressing a wide range of real-time challenges. With the inherent characteristics such as mobility, flexibility, and compatibility in terms of communications, UAVs are able to provide a wide range of services. The ability to monitor a particular area and the flexibility to react to changing demands for services proves the effectiveness of deploying Unmanned Aerial Vehicles (UAVs). As a result, deep learning, also known as DL, is utilized in an increasingly broad manner to overcome the challenges that UAVs face in terms of connectivity and resource utilization.
基于分布式深度学习的无人机软件定义网络控制
无人机有各种各样的民用、公共和军事应用。因为它们配备了自己的通信基础设施,它们可以从远处远程控制。无人机(uav)由于其低成本、多功能性、易于部署以及在许多情况下取代人工操作飞机的能力,在一系列活动中越来越受欢迎。这些车辆能够执行广泛的活动,例如监视、管理人群、提供无线覆盖和监视。无人驾驶飞行器(uav),通常被称为无人机,能够提供不仅值得信赖而且经济的解决方案,以应对各种实时挑战。无人机具有通信方面的机动性、灵活性和兼容性等固有特性,能够提供广泛的服务。监控特定区域的能力以及对不断变化的服务需求做出反应的灵活性证明了部署无人机(uav)的有效性。因此,深度学习(也称为DL)被越来越广泛地用于克服无人机在连通性和资源利用方面面临的挑战。
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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