Compressive Multispectral Spectrum Sensing for Spectrum Cartography

In the process of spectrum sensing applied to wireless communications, it is possible to build interference maps based on acquired power spectral values. This allows the characterization of spectral occupation, which is crucial to take management spectrum decisions. However, the amount of informatio...

Full description

Bibliographic Details
Main Authors: Jeison Marín Alfonso, Jose Ignacio Martínez Torre, Henry Arguello Fuentes, Leonardo Betancur Agudelo
Format: Article
Language:English
Published: MDPI AG 2018-01-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/18/2/387
id doaj-d4e8d629f80241839bec3759a8a0fe86
record_format Article
spelling doaj-d4e8d629f80241839bec3759a8a0fe862020-11-24T22:50:02ZengMDPI AGSensors1424-82202018-01-0118238710.3390/s18020387s18020387Compressive Multispectral Spectrum Sensing for Spectrum CartographyJeison Marín Alfonso0Jose Ignacio Martínez Torre1Henry Arguello Fuentes2Leonardo Betancur Agudelo3GIDATI Research Group, Universidad Pontificia Bolivariana, 050031 Medellín, ColombiaGHDwSw Research Group, ETSII, Campus Energía Inteligente, Universidad Rey Juan Carlos, 28933 Madrid, EspañaHDSP Research Group, Universidad Industrial de Santander, 680002 Bucaramanga, ColombiaGIDATI Research Group, Universidad Pontificia Bolivariana, 050031 Medellín, ColombiaIn the process of spectrum sensing applied to wireless communications, it is possible to build interference maps based on acquired power spectral values. This allows the characterization of spectral occupation, which is crucial to take management spectrum decisions. However, the amount of information both in the space and frequency domains that needs to be processed generates an enormous amount of data with high transmission delays and high memory requirements. Meanwhile, compressive sensing is a technique that allows the reconstruction of sparse or compressible signals using fewer samples than those required by the Nyquist criterion. This paper presents a new model that uses compressed multispectral sampling for spectrum sensing. The aim is to reduce the number of data required for the storage and the subsequent construction of power spectral maps with geo-referenced information in different frequency bands. This model is based on architectures that use compressive sensing to analyze multispectral images. The operation of a centralized manager is presented in order to select the power data of different sensors by binary patterns. These sensors are located in different geographical positions. The centralized manager reconstructs a data cube with the transmitted power and frequency of operation of all the sensors based on the samples taken and applying multispectral sensing techniques. The results show that this multispectral data cube can be built with 50% of the samples generated by the devices, and the spectrum cartography information can be stored using only 6.25% of the original data.http://www.mdpi.com/1424-8220/18/2/387spectrum cartographycompressive sensing image (CSI)multispectral model
collection DOAJ
language English
format Article
sources DOAJ
author Jeison Marín Alfonso
Jose Ignacio Martínez Torre
Henry Arguello Fuentes
Leonardo Betancur Agudelo
spellingShingle Jeison Marín Alfonso
Jose Ignacio Martínez Torre
Henry Arguello Fuentes
Leonardo Betancur Agudelo
Compressive Multispectral Spectrum Sensing for Spectrum Cartography
Sensors
spectrum cartography
compressive sensing image (CSI)
multispectral model
author_facet Jeison Marín Alfonso
Jose Ignacio Martínez Torre
Henry Arguello Fuentes
Leonardo Betancur Agudelo
author_sort Jeison Marín Alfonso
title Compressive Multispectral Spectrum Sensing for Spectrum Cartography
title_short Compressive Multispectral Spectrum Sensing for Spectrum Cartography
title_full Compressive Multispectral Spectrum Sensing for Spectrum Cartography
title_fullStr Compressive Multispectral Spectrum Sensing for Spectrum Cartography
title_full_unstemmed Compressive Multispectral Spectrum Sensing for Spectrum Cartography
title_sort compressive multispectral spectrum sensing for spectrum cartography
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-01-01
description In the process of spectrum sensing applied to wireless communications, it is possible to build interference maps based on acquired power spectral values. This allows the characterization of spectral occupation, which is crucial to take management spectrum decisions. However, the amount of information both in the space and frequency domains that needs to be processed generates an enormous amount of data with high transmission delays and high memory requirements. Meanwhile, compressive sensing is a technique that allows the reconstruction of sparse or compressible signals using fewer samples than those required by the Nyquist criterion. This paper presents a new model that uses compressed multispectral sampling for spectrum sensing. The aim is to reduce the number of data required for the storage and the subsequent construction of power spectral maps with geo-referenced information in different frequency bands. This model is based on architectures that use compressive sensing to analyze multispectral images. The operation of a centralized manager is presented in order to select the power data of different sensors by binary patterns. These sensors are located in different geographical positions. The centralized manager reconstructs a data cube with the transmitted power and frequency of operation of all the sensors based on the samples taken and applying multispectral sensing techniques. The results show that this multispectral data cube can be built with 50% of the samples generated by the devices, and the spectrum cartography information can be stored using only 6.25% of the original data.
topic spectrum cartography
compressive sensing image (CSI)
multispectral model
url http://www.mdpi.com/1424-8220/18/2/387
work_keys_str_mv AT jeisonmarinalfonso compressivemultispectralspectrumsensingforspectrumcartography
AT joseignaciomartineztorre compressivemultispectralspectrumsensingforspectrumcartography
AT henryarguellofuentes compressivemultispectralspectrumsensingforspectrumcartography
AT leonardobetancuragudelo compressivemultispectralspectrumsensingforspectrumcartography
_version_ 1725673772295389184