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http://dx.doi.org/10.6109/jkiice.2013.17.9.2009

Automatic Modulation Recognition Algorithm Based on Cyclic Moment and New Modified Cumulant for Analog and Digital Modulated Signals  

Kim, Dong-Ho (Electronic Warfare R&D Lab.)
Kim, Jae-Yoon (Electronic Warfare R&D Lab.)
Sim, Kyu-Hong (Electronic Warfare R&D Lab.)
Ahn, Jun-Il (Agency for Defense Development)
Abstract
In this paper, we propose an automatic modulation recognition algorithm based on cyclic moment and new modified cumulant for analog and digital modulation signals. It is noteworthy that each modulated signal has different cycle frequency characteristics according to its order of cyclic moment. By means of this characteristics as classification features, various modulated signals can be efficiently classified. Also, to identify modulated signals having the same cycle frequency characteristics, we take advantage of the additional classification factors such as variations of envelope and phase as well as modified cumulant. The proposed algorithm was evaluated by considering the number of symbols, SNR, and frequency offset. In the simulation condition where the number of gathered symbols was about 819, and SNR and frequency offset were above 10dB and below 25%, respectively, the average accuracy of the proposed algorithm was more than 95%.
Keywords
Automatic Recognition Modualtion; Cyclic Moment; Frequency Offset; Decision Tree;
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