| Literature DB >> 36081150 |
Maria Trigka1, Elias Dritsas1.
Abstract
The rapid growth in wireless communications, coupled with insufficient utilization of the spectrum, led to the development of new wireless services and the promising technology of cognitive radio (CR) networks, which facilitate periodic access to the unoccupied spectrum bands and thus increases spectral efficiency. A fundamental task in CR networks is spectrum sensing, through which unauthorized secondary users (SUs) detect unoccupied bands in the spectrum. To achieve this, an accurate estimate of the power spectrum is necessary. From this perspective, and given that many other factors can affect individual detection, such as pathloss and receiver uncertainty, we aim to improve its estimate by exploiting the spatial diversity in the SUs' observations. Spectrum sensing is treated as a parameters estimation problem, assuming that the parameters' vector of each SU consists of some global and partially common parameters. To exploit this modeling, distributed and cooperative spectrum sensing is the subject of interest in this study. Diffusion techniques, and especially the Adapt-Then-Combine (ATC) method will be exploited, where each SU cooperates with a group of nodes in its neighborhood that share the same parameters of interest. We consider a network of three static PUs with overlapping power spectrums, and thus, frequency bands. The performance of the employed method will be evaluated under two scenarios: (i) when the PUs spectrum varies, since some frequency bands are not yet utilized, and (ii) when the frequency bands of the PUs are fixed, but there is a mobile SU in the network, changing regions and parameters of interest. Experimental results and performance analysis reveal the ATC algorithm robustness and efficiency.Entities:
Keywords: adapt-then-combine; cognitive radio; cooperation; diffusion strategies; spectrum sensing
Mesh:
Year: 2022 PMID: 36081150 PMCID: PMC9459710 DOI: 10.3390/s22176692
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Processing steps involved in the system model.
Figure 2Illustration of Adapt-Then-Combine method at SU node k.
List of designations.
| Notation | Description |
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| Number of SU nodes |
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| Number of PU nodes |
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| Set of SU nodes for common interest |
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| Adjacent matrix |
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| Identity matrix of size |
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| Number of global |
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| Number of common |
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| Maximum number |
Figure 3Cognitive radio network of three PUs with overlapping spectrum.
Figure 4An overview of the adjacent matrix.
Figure 5Noise variance per node.
Figure 6Network MSD (dB) for the w (global) and commons .
Rules to determine the frequency zone of a mobile node.
| Rules | Frequency Zone |
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Mobile CR node positions and frequency zones.
| Time Interval | Position | Frequency Zone |
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| 1–19 | (−40,170) |
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| 20–39 | (120,150) |
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| 40–59 | (280,160) |
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| 60–79 | (100,270) |
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| 80–99 | (110,300) |
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| 100–119 | (190,320) |
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| 120–139 | (220,390) |
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| 140–159 | (130,390) |
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| 160–500 | (10,310) |
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Figure 7Network MSD (dB) for the common interest vectors .
Figure 8Mean Weight Error from the true parameters for the common vectors .