Enabling a “Use-or-Share” Framework for PAL--GAA Sharing in CBRS Networks via Reinforcement Learning
Chance Tarver, Matthew Tonnemacher, Vikram Chandrasekhar, Hao Chen, Boon Loong Ng, Jianzhong Zhang, Joseph R Cavallaro, Joseph Camp
IEEE Transactions on Cognitive Communications and Networking · 2019
Abstract
By implementing reinforcement learning-aided listen-before-talk (LBT) schemes over a citizens broadband radio service (CBRS) network, we increase the spatial reuse at secondary nodes while minimizing the interference footprint on higher-tier nodes. The federal communications commission encourages “use-or-share” policies in the CBRS band across the priority access license (PAL)-general authorized access (GAA) priority tiers by opportunistically allowing the lower-priority GAA nodes to access unused higher-priority PAL spectrum. However, there is currently no mechanism to enable this cross-tier spectrum sharing. In this paper, we propose and evaluate LBT schemes that allow opportunistic access to PAL spectrum. We find that by allowing LBT in a two-carrier, two eNB scenario, we see upward of 50% user-perceived throughput (UPT) gains for both eNBs. Furthermore, we examine the use of Q -learning to adapt the energy-detection threshold (EDT), combating problematic topologies, such as hidden and exposed nodes. With merely a 4% reduction in primary node UPT, we see up to 350% gains in average secondary node UPT when adapting the EDT of opportunistically transmitting nodes.
BibTeX
@article{tarver2019enabling,
author = {Tarver, Chance and Tonnemacher, Matthew and Chandrasekhar, Vikram and Chen, Hao and Ng, Boon Loong and Zhang, Jianzhong and Cavallaro, Joseph R and Camp, Joseph},
journal = {IEEE Transactions on Cognitive Communications and Networking},
number = {3},
pages = {716--729},
publisher = {IEEE},
title = {Enabling a “Use-or-Share” Framework for PAL--GAA Sharing in CBRS Networks via Reinforcement Learning},
volume = {5},
year = {2019}
}
- #CBRS
- #MachineLearning
- #SharedSpectrum