Sparse Bayesian Learning-Based 3D Spectrum Environment Map Construction-Sampling Optimization, Scenario-Dependent Dictionary Construction and Sparse Recovery
The spectrum environment map (SEM), which can visualize the information of invisible electromagnetic spectrum, is vital for monitoring, management, and security of spectrum resources in cognitive radio (CR) networks. In view of a limited number of spectrum sensors and constrained sampling time, this...
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Zusammenfassung: | The spectrum environment map (SEM), which can visualize the information of
invisible electromagnetic spectrum, is vital for monitoring, management, and
security of spectrum resources in cognitive radio (CR) networks. In view of a
limited number of spectrum sensors and constrained sampling time, this paper
presents a new three-dimensional (3D) SEM construction scheme based on sparse
Bayesian learning (SBL). Firstly, we construct a scenario-dependent channel
dictionary matrix by considering the propagation characteristic of the
interested scenario. To improve sampling efficiency, a maximum mutual
information (MMI)-based optimization algorithm is developed for the layout of
sampling sensors. Then, a maximum and minimum distance (MMD) clustering-based
SBL algorithm is proposed to recover the spectrum data at the unsampled
positions and construct the whole 3D SEM. We finally use the simulation data of
the campus scenario to construct the 3D SEMs and compare the proposed method
with the state-of-the-art. The recovery performance and the impact of different
sparsity on the constructed SEMs are also analyzed. Numerical results show that
the proposed scheme can reduce the required spectrum sensor number and has
higher accuracy under the low sampling rate. |
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DOI: | 10.48550/arxiv.2302.13018 |