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Learn2MAC: Online Learning Multiple Access for URLLC Applications

Authors :
Destounis, Apostolos
Tsilimantos, Dimitrios
Debbah, Mérouane
Paschos, Georgios S.
Publication Year :
2019

Abstract

This paper addresses a fundamental limitation of previous random access protocols, their lack of latency performance guarantees. We consider $K$ IoT transmitters competing for uplink resources and we design a fully distributed protocol for deciding how they access the medium. Specifically, each transmitter restricts decisions to a locally-generated dictionary of transmission patterns. At the beginning of a frame, pattern $i$ is chosen with probability $p^i$, and an online exponentiated gradient algorithm is used to adjust this probability distribution. The performance of the proposed scheme is showcased in simulations, where it is compared with a baseline random access protocol. Simulation results show that (a) the proposed scheme achieves good latent throughput performance and low energy consumption, while (b) it outperforms by a big margin random transmissions.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1904.00665
Document Type :
Working Paper