Title :
Reinforcement learning demonstrator for opportunistic spectrum access on real radio signals
Author :
Christophe Moy;Amor Nafkha;Malek Naoues
Author_Institution :
CentraleSupelec/IETR, Rennes campus, Cesson-S?vign?, France
Abstract :
This demonstration presents a proof-of-concept for opportunistic spectrum access. It particularly focuses on reinforcement learning algorithm called UCB (Upper Confidence Bound) designed by the machine learning community to solve the MAB problem (Multi-Armed Bandit). The demonstrator shows the first worldwide implementation of reinforcement learning algorithms for OSA (opportunistic spectrum access) on real radio environment using USRP N210 platforms.
Keywords :
"Machine learning algorithms","Algorithm design and analysis","Dynamic spectrum access","Learning (artificial intelligence)","Heuristic algorithms","Detectors"
Conference_Titel :
Dynamic Spectrum Access Networks (DySPAN), 2015 IEEE International Symposium on
DOI :
10.1109/DySPAN.2015.7343919