The Future of mm-wave Wireless Communication Systems for Unmanned Aircraft Vehicles in the Era of Artificial Intelligence and Quantum Computing

Karthik Kakaraparty, Edgard Muñoz-Coreas, I. Mahbub
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引用次数: 1

Abstract

As wireless networks are getting increasingly complex, there is a strong need to develop novel approaches and capabilities for high throughput communication and processing of wireless data. This need is more pressing as unmanned aircraft vehicles (UAVs) are applied in new areas and innovations such as UAV (Unmanned Aerial Vehicle) swarms are developed. Millimeter-wave helps to meet the throughput demand as it provides the higher bandwidth that is needed for 5G wireless communication and beyond. But these higher frequencies also come with their own challenges, such as low signal penetration depth. The main challenge in modern wireless networks is to be able to accurately predict the dynamically changing radio environment. With the introduction of narrow beams in the mm-wave frequency, tracking of the beams is a great challenge. Artificial Intelligence (AI) and Quantum computing (QC) could be employed to resolve this problem of beam tracking. In this talk, the challenges in mm-wave wireless networks for vehicle-to-vehicle communication will be highlighted and the ideas involving recent developments in phased-array antenna, beam-steering, beam-alignment, and tracking will be discussed. We shall then critically evaluate the need for Artificial Intelligence (AI) and Quantum computing (QC) within the network architecture to provide the required capability for tasks such as beam-control, data-feed processing, resource, and interference management. The next-generation wireless networks need to be self-predictive and proactive to handle futuristic applications like holographic communication, haptic feedback, or any latency-dependent application. Especially in the context of rapidly changing environment where the UAVs are moving fast, AI and/or QC would play a crucial role to achieve a dynamically adaptive network. Next-generation wireless networks offer more capacity for the conveyance of relevant information from onboard instruments such as cameras or thermal sensors. Thus, there shall be a need for the efficient processing of potentially copious amounts of raw data for relevant information. For example, to deploy a drone swarm in a search and rescue operation, the use of QC or AI could improve the processing of received visual information with respect to processing speed. The application of AI and QC for mm Wave-UAV communications is a promising research direction to break through the traditional communication paradigm and integrate communication, computing, and storage resources.
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人工智能和量子计算时代无人机毫米波无线通信系统的未来
随着无线网络变得越来越复杂,迫切需要开发新的方法和能力来实现高吞吐量的无线数据通信和处理。随着无人驾驶飞行器(UAV)在新领域的应用以及无人机(UAV)群等创新的发展,这一需求更加迫切。毫米波有助于满足吞吐量需求,因为它提供了5G及以后无线通信所需的更高带宽。但是这些更高的频率也带来了自己的挑战,比如低信号穿透深度。现代无线网络面临的主要挑战是如何准确预测动态变化的无线电环境。随着毫米波频率中窄波束的引入,波束的跟踪成为一个巨大的挑战。人工智能(AI)和量子计算(QC)可用于解决光束跟踪问题。在本次演讲中,将重点讨论毫米波无线网络在车对车通信中的挑战,并讨论相控阵天线、波束转向、波束对准和跟踪方面的最新发展。然后,我们将批判性地评估网络架构内对人工智能(AI)和量子计算(QC)的需求,以提供诸如波束控制、数据馈送处理、资源和干扰管理等任务所需的能力。下一代无线网络需要自我预测和主动处理未来的应用,如全息通信、触觉反馈或任何依赖延迟的应用。特别是在无人机快速移动的快速变化环境中,人工智能和/或QC将在实现动态自适应网络方面发挥关键作用。下一代无线网络为机载仪器(如摄像头或热传感器)的相关信息传输提供了更大的容量。因此,有必要对可能大量的原始数据进行有效处理,以获得有关信息。例如,在搜救行动中部署无人机群,使用QC或AI可以在处理速度方面提高对接收到的视觉信息的处理。将AI和QC应用于毫米波-无人机通信是突破传统通信范式,实现通信、计算和存储资源集成的一个很有前途的研究方向。
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