TL;DR
The paper introduces LESSA, a learning-based framework for spectrum sensing and access in cognitive radios that models spectrum occupancy with approximate POMDPs, achieving near-optimal performance and extending to multi-agent systems with real-world validation.
Contribution
It proposes a novel LEarning-based Spectrum Sensing and Access framework using approximate POMDPs, with algorithms for learning spectrum models and optimizing access policies, validated through extensive simulations and real-world tests.
Findings
LESSA performs within 5% of a genie-aided upper bound.
Outperforms state-of-the-art algorithms in spectrum sensing accuracy.
MA-LESSA significantly improves throughput in multi-agent scenarios.
Abstract
A novel LEarning-based Spectrum Sensing and Access (LESSA) framework is proposed, wherein a cognitive radio (CR) learns a time-frequency correlation model underlying spectrum occupancy of licensed users (LUs) in a radio ecosystem; concurrently, it devises an approximately optimal spectrum sensing and access policy under sensing constraints. A Baum-Welch algorithm is proposed to learn a parametric Markov transition model of LU spectrum occupancy based on noisy spectrum measurements. Spectrum sensing and access are cast as a Partially-Observable Markov Decision Process, approximately optimized via randomized point-based value iteration. Fragmentation, Hamming-distance state filters and Monte-Carlo methods are proposed to alleviate the inherent computational complexity, and a weighted reward metric to regulate the trade-off between CR throughput and LU interference. Numerical evaluations…
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