masterThesis
Análisis del rendimiento de un sistema cooperativo de acceso múltiple ortogonal / no-ortogonal (OMA/NOMA) gestionado mediante una red neuronal artificial
Fecha
2021-03-17Autor
Belesaca Mendieta, Juan Diego
Institución
Resumen
Next-generation wireless technologies face considerable challenges in terms of providing the
required latency and connectivity for new heterogeneous mobile networks. Driven by these
problems, this study focuses on increasing user connectivity together with the system general throughput. For doing so, we propose and evaluate a hybrid machine learning-driven
orthogonal/non-orthogonal multiple access (OMA/NOMA) system. Specifically, in this work,
we use an artificial neural network (ANN) to assign an OMA or NOMA access method to each
user equipment (UE). As part of this research we also evaluate the accuracy and training time of
the three most relevant learning algorithms of ANN (L-M, BFGS, and OSS). The main objective
is to increase the sum-rate of the next generation mobile network in the current beamforming
and millimeter-Wave (mm-Wave) channel environment.
Simulation results show up to a 20 % sum-rate average performance increase of the system
using the ANN management in contrast to a random non-ANN managed system. The LevebergMarquard (L-M) training algorithm is the best overall algorithm for this proposed application
as it presents the highest accuracy of around 77 % despite 37 minutes of training, and lower
accuracy of 73 % with approximately 28 seconds of training time.