Deep Learning-Based Cell-Level and Beam-Level Mobility Management System
Archivos
Fecha
2020
Profesor Guía
Formato del documento
Articulo
ORCID Autor
Título de la revista
ISSN de la revista
Título del volumen
Editor
Sensors (Basel)
Ubicación
https://doi.org/10.3390/s20247124
ISBN
ISSN
1424-8220
item.page.issne
item.page.doiurl
Facultad
Departamento o Escuela
Determinador
Recolector
Especie
Nota general
Resumen
The deployment with beamforming-capable base stations in 5G New Radio (NR) requires an efficient mobility management system to reliably operate with minimum effort and interruption. In this work, we propose two artificial neural network models to optimize the cell-level and beam-level mobility management. Both models consist of convolutional, as well as dense, layer blocks. Based on current and past received power measurements, as well as positioning information, they choose the optimum serving cell and serving beam, respectively. The obtained results show that the proposed cell-level mobility model is able to sustain a strong serving cell and reduce the number of handovers by up to 94.4% compared to the benchmark solution when the uncertainty (representing shadowing, interference, etc.) is introduced to the received signal strength measurements. The proposed beam-level mobility management model is able to proactively choose and sustain the strongest serving beam, even when high uncertainty is introduced to the measurements.
Descripción
Lugar de Publicación
Auspiciador
Palabras clave
5G, NEW RADIO, ARTIFICIAL NEURAL NETWORK, BEAM-LEVEL MOBILITY, HANDOVER MOBILITY, MANAGEMENT SUPERVISED LEARNING