bachelorThesis
Asignación dinámica de recursos en redes VANET mediante aprendizaje por refuerzo
Fecha
2021-05Autor
Caiza Chafla, Oscar Eduardo
Jami Herrera, Christian Alexander
Institución
Resumen
In this paper we propose the deployment of
the RSU infrastructure through a reinforcement
learning algorithm to optimally distribute the resources
in the vehicular network. The main objective of our study
is to use the Q-Learning algorithm to allocate channels
from a controller to the RSUs in the planning scenario.
With this initial deployment and its mobility, an analysis
will be performed through an optimization model to
obtain a minimum number of devices in the simulated
VANET infrastructure. The learning of the algorithm on
the scenario is dynamically established in relation to the
vehicular demand and its coverage restrictions for a V2I
communication.