Title :
Spectral Feature Detection With Sub-Nyquist Sampling for Wideband Spectrum Sensing
Author :
Lagunas, Eva ; Najar, Montse
Author_Institution :
Interdiscipl. Centre for Security, Reliability & Trust (SnT), Univ. of Luxembourg, Luxembourg, Luxembourg
Abstract :
Compressive sensing (CS) has been successfully applied to alleviate the sampling bottleneck in wideband spectrum sensing leveraging the sparsity described by the low spectral occupancy of the licensed radios. However, the existence of interferences emanating from low-regulated transmissions, which cannot be taken into account in the CS model because of their nonregulated nature, greatly degrade the identification of licensed activity. This paper presents a feature-based technique for primary user´s spectrum identification with interference immunity which works with a reduced amount of data. The proposed method not only detects which frequencies are occupied by primary users´ but also identifies the primary users´ transmitted power. The basic strategy is to compare the apriori known spectral shape of the primary user with the power spectral density of the received signal. This comparison is made in terms of autocorrelation by means of a correlation matching, thus avoiding the computation of the power spectral density of the received signal. The essence of the novel interference rejection mechanism lies in preserving the positive semidefinite character of the residual correlation, which is inserted by means of a weighted formulation of the l1-minimization. Simulation results show the effectiveness of the technique for interference suppression and primary user detection.
Keywords :
compressed sensing; radio spectrum management; radiofrequency interference; signal detection; CS model; compressive sensing; correlation matching; feature based technique; interference; interference immunity; interference rejection mechanism; interference suppression; licensed activity; licensed radios; positive semidefinite character; power spectral density; primary user spectrum identification; received signal; sampling bottleneck; spectral feature detection; spectral shape; subnyquist sampling; wideband spectrum sensing; Correlation; Feature extraction; Frequency measurement; Frequency modulation; Interference; Sensors; Vectors; Sub-Nyquist sampling; cognitive radio; compressive sensing; spectrum sensing;
Journal_Title :
Wireless Communications, IEEE Transactions on
DOI :
10.1109/TWC.2015.2415774