Title :
Cognitive Radios: Discriminant Analysis for Automatic Signal Detection in Measured Power Spectra
Author :
Gonzales-Fuentes, Lee ; Barbe, K. ; Van Moer, Wendy ; Bjorsell, Niclas
Author_Institution :
Dept. of Fundamental Electr. & Instrum., Vrije Univ. Brussel, Brussels, Belgium
Abstract :
Signal detection of primary users for cognitive radios enables spectrum use agility. In normal operation conditions, the sensed spectrum is nonflat, i.e., the power spectrum is not constant. A novel method proposes the segmentation of the measured spectra into regions where the flatness condition is approximately valid. As a result, an automatic detection of the significant spectral components together with an estimate of the magnitude of the spectral component and a measure of the quality of classification becomes available. In this paper, we optimize the methodology for signal detection in cognitive radios such that the probability that a spectral component was incorrectly classified is iteratively reduced. Simulation and measurement results show the advantages of the presented technique in different types of spectra.
Keywords :
cognitive radio; iterative methods; probability; radio spectrum management; signal detection; automatic signal detection; classification quality measurement; cognitive radio; discriminant analysis; iterative method; power spectra measurement; power spectrum sensing; primary user; probability; spectral component magnitude estimation; Cognitive radio; Frequency measurement; Polynomials; Signal detection; Signal to noise ratio; Statistics; Cognitive radio; discriminant analysis; power spectrum; rice distribution; signal detection; spectral component; spectrum sensing; statistics;
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
DOI :
10.1109/TIM.2013.2265607