
Spectrum map construction optimisation schemes: Sampling and prediction
- 1 University of Electronic Science and Technology of China
* Author to whom correspondence should be addressed.
Abstract
The proliferation of electromagnetic devices presents a significant challenge in developing effective techniques for spectrum monitoring, management, and security. The utilization of spectrum cartography has been acknowledged as a viable approach to address the aforementioned difficulties. This latter presents a variety of techniques aimed at enhancing the efficiency of the current spectrum mapping methodology. The subject matter can be categorized into two primary components, namely sampling and spectrum prediction. Sampling part includes methods to find the most valuable sampling points and methods of sampling hardware optimization. Spectrum prediction includes algorithms utilizing frequency-spatial reasoning techniques to estimate the target spectrum map by data from the nearby area, and algorithms utilizing ROSMP framework to estimate the spectrum map from past data. The introduction of techniques is divided into the 2 types, together with key algorithms and devices used in each method. Additionally, the letter lists some drawbacks of certain methods and discuss their development prospects.
Keywords
spectrum mapping, compressed sensing, QR block pivoting
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Cite this article
Ji,X. (2024). Spectrum map construction optimisation schemes: Sampling and prediction. Applied and Computational Engineering,36,34-42.
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