DocumentCode
87578
Title
Data clustering algorithm for channel segmentation in a radio monitoring system
Author
Weber, Charles ; Peter, Minin ; Felhauer, Tobias ; Christ, Andreas ; Schuessele, Lothar
Author_Institution
Dept. of Electr. Eng., Offenburg Univ. of Appl. Sci., Offenburg, Germany
Volume
8
Issue
18
fYear
2014
fDate
12 18 2014
Firstpage
3308
Lastpage
3317
Abstract
The detection of signals and the estimation of signal bandwidth is a perpetual topic in radio communication systems. Both issues are extremely challenging, since the wireless channel is unreliable in nature. A radio monitoring system faces the most difficult conditions in this task; it normally scans a wide frequency range of several hundred MHz and has to detect a multitude of different signals. Owing to the computational costs, the radio monitoring systems use nowadays mainly energy detectors based on fast Fourier transform spectrum analysers and a static threshold, defined by a previous noise estimation. A refined algorithm based on the self-splitting competitive learning (SSCL) clustering is presented that quantises the power spectral density (PSD) according to the present signal power levels. The quantisation of the PSD results in a promising channel segmentation. In contrast to the traditional threshold evaluation, this approach is independent of a previously assumed noise estimation and therefore more robust against noise level and noise distribution changes. The presented definition of the essential cluster validity criterion is key for a successful channel segmentation. Furthermore, the novel postprocessing of the clustering result introduced in this study evaluates the progression of the PSD data and significantly improves the channel segmentation.
Keywords
cognitive radio; fast Fourier transforms; learning (artificial intelligence); monitoring; pattern clustering; quantisation (signal); signal detection; spectral analysis; wireless channels; PSD quantisation; channel segmentation; cluster validity criterion; cognitive radio device; data clustering algorithm; energy detector; fast Fourier transform spectrum analysers; noise estimation; power spectral density; radio monitoring system; self-splitting competitive learning clustering; signal bandwidth estimation; signal detection; threshold evaluation; wireless channel; wireless communication systems;
fLanguage
English
Journal_Title
Communications, IET
Publisher
iet
ISSN
1751-8628
Type
jour
DOI
10.1049/iet-com.2013.1104
Filename
6982020
Link To Document