Spectrum Sensing Framework based on Blind Source Separation for Cognitive Radio Environments
DOI:
https://doi.org/10.22395/rium.v15n29a8Keywords:
Spectrum sensing, Blind source separation, Cognitive Radio, ICA, SSAAbstract
The efficient use of spectrum has become an active research area, due to its scarcity and underutilization. In a spectrum sharing scenario as Cognitive Radio (CR), the vacancy of licensed frequency bands could be detected by a secondary user through spectrum sensing techniques. Usually, this sensing approaches are performed with a priori knowledge of the channel features. In the present work, a blind spectrum sensing approach based on Independent Component Analysis and Singular Spectrum Analysis is proposed. The approach is tested and compared with other outcomes. Results show that the proposed scheme is capable of detect most of the sources with low time consumption, which is a remarkable aspect for online applications with demanding time issues.
Downloads
References
2. Y. Hassan, M. El-Tarhuni & K. Assaleh, “Learning-based spectrum sensing for cognitive radio systemsâ€, Journal of Computer Networks and Communications, vol. 2012, pp. 1-14, 2012. Available: https://www.hindawi.com/journals/jcnc/2012/259824/
3. A. Mate, K. H. Lee & I. T. Lu, “Spectrum sensing based on time covariance matrix using gnu radio and usrp for cognitive radioâ€, in: 2011 ieee Long Island Systems, Applications and Technology Conference (lisat), Farmingdale, NY, USA, May 6, 2011, pp. 1-6.
4. G. Nautiyal & R. Kumar, “Spectrum sensing in cognitive radio using matlabâ€, International Journal of Engineering and Advanced Technology (IJEAT), vol. 2, no. 5, pp. 529-532, Jun. 2013.
5. Z. Xuping & P. Jianguo, “Energy-detection based spectrum sensing for cognitive radioâ€, in iet Conference on Wireless, Mobile and Sensor Networks (ccwmsn07), Shangai, China, Dec. 12-14, 2007, pp. 944-947.
6. H. Arslan, Cognitive Radio, Software Defined Radio, and Adaptive Wireless Systems (Signals and Communication Technology). New York: Springer-Verlag, 2007.
7. M. Rahman, A. Haniz, S. Khadka, S., Iswandi, Gahadza, M., Kim, M., ichi Takada, J. “Development of spectrum sensing system with gnu radio and usrp to detect emergency radiosâ€, ieice, The Institute of Electronics, Information and Communication Engineers, Sendai, Japan, Technical Report SR2009-57, Oct. 2009.
8. A. Fehske, J. Gaeddert & J. Reed, “A new approach to signal classification using spectral correlation and neural networksâ€, in DySPAN 2005. First IEEE International Symposium on New Frontiers in Dynamic Spectrum Access Networks, Baltimore, USA, Nov. 8-11, 2005. pp. 144-150.
9. S. Chaudhari, “Spectrum sensing for cognitive radios: Algorithms, performance, and limitationsâ€, Ph. D. thesis, Aalto University, Greater Helsinki, Finland, 2012.
10. S. Da, G. Xiaoying, C. Hsiao-hwa & Q. Liang, “Fast cycle frequency domain feature detection for cognitive radio systemsâ€, Arxiv, p. 4, Ar. 6, 2009. Available: https://archive.org/details/arxiv-0903.1183
11. M. Calabro, “A Cooperative Spectrum Sensing Network with Signal Classification Capabilitiesâ€. Ph. D. thesis, Worcester Polytechnic Institute, Worcester, Massachusetts, 2010.
12. A. G. Ferrer, E.G. Prieto & D. Peña, “Exploring ica for time series decompositionâ€, Working Paper 11-16, Statistics and Econometrics Series 11, May 2011. Available: http://orff.uc3m.es/bitstream/handle/10016/11285/ws111611.pdf?sequence=1
13. L. Molgedey & H. G. Schuster, “Separation of a mixture of independent signals using time delayed correlationsâ€, Physical Review Letters, vol. 72, 3634-3637, 1994.
14. V. Krishnaveni, S. Jayaraman, P. M. Kumar, K. Shivakumar & K. Ramadoss, “Comparison of independent component analysis algorithms for removal of ocular artifacts from electroencephalogramâ€, Meas. Sci. Rev. J, vol. 5, no. 2, pp. 67-78, 2005.
15. Hongli, Sun, Y.: “The study and test of ica algorithmsâ€, in 2005 Proceedings International Conference on Wireless Communications, Networking and Mobile Computing, vol. 1, Wuhan, China, Sept. 23-26, 2005, pp. 602-605.
16. T. Kolenda, L. K. Hansen & J. Larsen, “Signal detection using ica: Application to chat room topic spottingâ€, in 3rd International Conference on Independent Component Analysis and Blind Source Separation, ica’2001, San Diego, USA, Dec. 9-13, 2001, pp. 540-545. Available: http://cogsys.imm.dtu.dk/publications/2001/kolenda.ica2001.pdf
17. H. G. Ma, Q. B. Jiang, Z. Q. Liu, G. Liu & Z. Y. Ma, “A novel blind source separation method for single-channel signalâ€, Signal Processing, vol. 90, no. 12, pp. 3232-3241, 2010.
18. S. S. Kalamkar & A. Banerjee, “On the performance of generalized energy detector under noise uncertainty in cognitive radioâ€, in National Conference on Communications (ncc), Delhi, India, Feb. 15-17, 2013. pp. 1–5.
Additional Files
Published
How to Cite
Issue
Section
License
The total or partial reproduction of the contents of the journal for educational, research, or academic purposes is authorized as long as the source is cited. For reproduction for other purposes, express authorization from the Sello Editorial Universidad de MedellÃn is required.