Logo do repositório
 
Miniatura indisponível
Publicação

Machine learning for the dynamic positioning of UAVs for extended connectivity

Utilize este identificador para referenciar este registo.
Nome:Descrição:Tamanho:Formato: 
Machine_MLuis.pdf5.94 MBAdobe PDF Ver/Abrir

Orientador(es)

Resumo(s)

Unmanned Aerial Vehicle (UAV) networks are an emerging technology, useful not only for the military, but also for public and civil purposes. Their versatility provides advantages in situations where an existing network cannot support all requirements of its users, either because of an exceptionally big number of users, or because of the failure of one or more ground base stations. Networks of UAVs can reinforce these cellular networks where needed, redirecting the traffic to available ground stations. Using machine learning algorithms to predict overloaded traffic areas, we propose a UAV positioning algorithm responsible for determining suitable positions for the UAVs, with the objective of a more balanced redistribution of traffic, to avoid saturated base stations and decrease the number of users without a connection. The tests performed with real data of user connections through base stations show that, in less restrictive network conditions, the algorithm to dynamically place the UAVs performs significantly better than in more restrictive conditions, reducing significantly the number of users without a connection. We also conclude that the accuracy of the prediction is a very important factor, not only in the reduction of users without a connection, but also on the number of UAVs deployed.

Descrição

Palavras-chave

Unmanned aerial vehicle UAV positioning Machine learning Wireless communications

Contexto Educativo

Citação

OLIVEIRA, Francisco; LUÍS, Miguel; SARGENTO, Susana – Machine learning for the dynamic positioning of UAVs for extended connectivity. Sensors. eISSN 1424-8220. Vol. 21, N.º 13 (2021), pp. 1-22

Projetos de investigação

Unidades organizacionais

Fascículo

Editora

MDPI

Licença CC

Métricas Alternativas