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Artificial intelligence aided next-generation networks relying on UAVs

Artificial intelligence aided next-generation networks relying on UAVs
Artificial intelligence aided next-generation networks relying on UAVs
In this article, we propose artificial intelligence (AI) enabled unmanned aerial vehicle (UAV) aided wireless networks (UAWN) for overcoming the challenges imposed by the random fluctuation of wireless channels, blocking and user mobility effects. In UAWN, multiple UAVs are employed as aerial base stations, which are capable of promptly adapting to the randomly fluctuating environment by collecting information about the users’ position and tele-traffic demands, learning from the environment and acting upon the satisfaction level feedback received from the users. Moreover, AI enables the interaction amongst a swarm of UAVs for cooperative optimization of the system. As a benefit of the AI framework, several challenges of conventional UAWN may be circumvented, leading to enhanced network performance, improved reliability and agile adaptivity. As a further benefit, dynamic trajectory design and resource allocation are demonstrated. Finally, potential research challenges and opportunities are discussed.
1536-1284
120-127
Liu, Xiao
c13dae17-cc9e-4805-adbe-eca60aa4ed27
Chen, Mingzhe
2cc5f35a-36ad-4ed4-8abc-2e4649b318b4
Liu, Yuanwei
edcf36fa-2653-46c0-8e36-e8144010498e
Chen, Yue
9b646fd4-7826-4d0b-b81a-c4bc5eae1be1
Cui, Shuguang
1593ac14-32ab-4522-bf03-90c27db5d622
Hanzo, Lajos
66e7266f-3066-4fc0-8391-e000acce71a1
Liu, Xiao
c13dae17-cc9e-4805-adbe-eca60aa4ed27
Chen, Mingzhe
2cc5f35a-36ad-4ed4-8abc-2e4649b318b4
Liu, Yuanwei
edcf36fa-2653-46c0-8e36-e8144010498e
Chen, Yue
9b646fd4-7826-4d0b-b81a-c4bc5eae1be1
Cui, Shuguang
1593ac14-32ab-4522-bf03-90c27db5d622
Hanzo, Lajos
66e7266f-3066-4fc0-8391-e000acce71a1

Liu, Xiao, Chen, Mingzhe, Liu, Yuanwei, Chen, Yue, Cui, Shuguang and Hanzo, Lajos (2021) Artificial intelligence aided next-generation networks relying on UAVs. IEEE Wireless Communications, 28 (1), 120-127, [9267780]. (doi:10.1109/MWC.001.2000174).

Record type: Article

Abstract

In this article, we propose artificial intelligence (AI) enabled unmanned aerial vehicle (UAV) aided wireless networks (UAWN) for overcoming the challenges imposed by the random fluctuation of wireless channels, blocking and user mobility effects. In UAWN, multiple UAVs are employed as aerial base stations, which are capable of promptly adapting to the randomly fluctuating environment by collecting information about the users’ position and tele-traffic demands, learning from the environment and acting upon the satisfaction level feedback received from the users. Moreover, AI enables the interaction amongst a swarm of UAVs for cooperative optimization of the system. As a benefit of the AI framework, several challenges of conventional UAWN may be circumvented, leading to enhanced network performance, improved reliability and agile adaptivity. As a further benefit, dynamic trajectory design and resource allocation are demonstrated. Finally, potential research challenges and opportunities are discussed.

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Artificial Intelligence Aided Next-Generation Networks Relying on UAVs - Accepted Manuscript
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Accepted/In Press date: 26 October 2020
Published date: February 2021
Additional Information: Publisher Copyright: © 2002-2012 IEEE. Copyright: Copyright 2021 Elsevier B.V., All rights reserved.

Identifiers

Local EPrints ID: 444896
URI: http://eprints.soton.ac.uk/id/eprint/444896
ISSN: 1536-1284
PURE UUID: 1ec4d847-55e8-4435-a3d9-3b0c9c3b644c
ORCID for Lajos Hanzo: ORCID iD orcid.org/0000-0002-2636-5214

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Date deposited: 10 Nov 2020 17:31
Last modified: 18 Mar 2024 02:36

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Contributors

Author: Xiao Liu
Author: Mingzhe Chen
Author: Yuanwei Liu
Author: Yue Chen
Author: Shuguang Cui
Author: Lajos Hanzo ORCID iD

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