Skip navigation
  •  Inicio
  • UDC 
    • Cómo depositar
    • Políticas del RUC
    • FAQ
    • Derechos de autor
    • Más información en INFOguías UDC
  • Listar 
    • Comunidades
    • Buscar por:
    • Fecha de publicación
    • Autor
    • Título
    • Materia
  • Ayuda
    • español
    • Gallegan
    • English
  • Acceder
  •  Español 
    • Español
    • Galego
    • English
  
Ver ítem 
  •   RUC
  • Facultade de Informática
  • Investigación (FIC)
  • Ver ítem
  •   RUC
  • Facultade de Informática
  • Investigación (FIC)
  • Ver ítem
JavaScript is disabled for your browser. Some features of this site may not work without it.

UAV Swarm Path Planning With Reinforcement Learning for Field Prospecting

Thumbnail
Ver/Abrir
PuenteCastro_UAV.pdf (2.227Mb)
Use este enlace para citar
http://hdl.handle.net/2183/29921
Atribución 4.0 Internacional
Excepto si se señala otra cosa, la licencia del ítem se describe como Atribución 4.0 Internacional
Colecciones
  • Investigación (FIC) [1678]
Metadatos
Mostrar el registro completo del ítem
Título
UAV Swarm Path Planning With Reinforcement Learning for Field Prospecting
Autor(es)
Puente-Castro, Alejandro
Rivero, Daniel
Pazos, A.
Fernández-Blanco, Enrique
Fecha
2022-03-03
Cita bibliográfica
Puente-Castro, A., Rivero, D., Pazos, A. et al. UAV swarm path planning with reinforcement learning for field prospecting. Appl Intell (2022). https://doi.org/10.1007/s10489-022-03254-4
Resumen
[Abstract] There has been steady growth in the adoption of Unmanned Aerial Vehicle (UAV) swarms by operators due to their time and cost benefits. However, this kind of system faces an important problem, which is the calculation of many optimal paths for each UAV. Solving this problem would allow control of many UAVs without human intervention while saving battery between recharges and performing several tasks simultaneously. The main aim is to develop a Reinforcement Learning based system capable of calculating the optimal flight path for a UAV swarm. This method stands out for its ability to learn through trial and error, allowing the model to adjust itself. The aim of these paths is to achieve full coverage of an overflight area for tasks such as field prospection, regardless of map size and the number of UAVs in the swarm. It is not necessary to establish targets or to have any previous knowledge other than the given map. Experiments have been conducted to determine whether it is optimal to establish a single control for all UAVs in the swarm or a control for each UAV. The results show that it is better to use one control for all UAVs because of the shorter flight time. In addition, the flight time is greatly affected by the size of the map. The results give starting points for future research, such as finding the optimal map size for each situation.
Palabras clave
UAV swarm
Path planning
Reinforcement learning
Q-Learning
Artificial neural network
Agriculture
 
Descripción
Financiado para publicación en acceso aberto: Universidade da Coruña/CISUG
Versión del editor
https://doi.org/10.1007/s10489-022-03254-4
Derechos
Atribución 4.0 Internacional
ISSN
0924-669X

Listar

Todo RUCComunidades & ColeccionesPor fecha de publicaciónAutoresTítulosMateriasGrupo de InvestigaciónTitulaciónEsta colecciónPor fecha de publicaciónAutoresTítulosMateriasGrupo de InvestigaciónTitulación

Mi cuenta

AccederRegistro

Estadísticas

Ver Estadísticas de uso
Sherpa
OpenArchives
OAIster
Scholar Google
UNIVERSIDADE DA CORUÑA. Servizo de Biblioteca.    DSpace Software Copyright © 2002-2013 Duraspace - Sugerencias