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Spectrum Sensing and AM-FM Decomposition through Synchrosqueezing

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DOI: 10.4236/wet.2013.43020    3,650 Downloads   5,686 Views  

ABSTRACT

In this paper we have accomplished one of the tasks of cognitive radio i.e. dynamic spectrum sensing by using wavelet based Synchrosqueezing transform [1], a novel technique, which was proposed to analyze a signal in time-frequency plane. The distinctive feature of this transform compared to other techniques is that it enables us to decompose amplitude and frequency modulated signals and allows individual reconstruction of these components. The objective is also to separate the occupied band into amplitude modulated and frequency modulated bands.

Conflicts of Interest

The authors declare no conflicts of interest.

Cite this paper

K. Vandhana, P. Sowmya, P. Roshni, K. Divya, S. Ashwin and K. Narayanankutty, "Spectrum Sensing and AM-FM Decomposition through Synchrosqueezing," Wireless Engineering and Technology, Vol. 4 No. 3, 2013, pp. 134-138. doi: 10.4236/wet.2013.43020.

References

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