Automatic recognition of analog and digital modulation signals using DoE filter

An algorithm for recognition of analogue and digital modulation types, utilizing the decision-theoretic approach, is developed with the novel key features. The proposed 3 novel key features, the each peak number of the phase and the amplitude component obtained by the DoE (Difference of Estimator) filter and the phase gamma max, has robust properties of sensitive with modulation types and insensitive with SNR variation. This paper describes the algorithm which automatically identifies the modulation types of received signals without prior information with these some new and some old key features. The computer simulation is performed. We investigate the performance of the proposed classifier for classifying 9 modulated signals, and compare with that of the conventional decision tree classifier. Results indicated good performance (i.e. the average probability of correct classification (Pcc) of 99.5 %) at the SNR of 10 dB. Comparing with that of the conventional decision tree classifier (i.e. the average Pcc of 95.4 %), we proved that the performance of the proposed classifier is superior to that of the conventional algorithm. Specially, at the SNR as low as 7 dB, the recognition performance of digital signals shows a noticeable improvement.

[1]  Y. Chan,et al.  Identification of the modulation type of a signal , 1989 .

[2]  Zhilu Wu,et al.  Automatic Digital Modulation Recognition Based on Support Vector Machines , 2005, 2005 International Conference on Neural Networks and Brain.

[3]  Yiu-Tong Chan,et al.  Identification of the modulation type of a signal , 1985, ICASSP '85. IEEE International Conference on Acoustics, Speech, and Signal Processing.

[4]  Stefan C. Kremer,et al.  A testbed for automatic modulation recognition using artificial neural networks , 1997, CCECE '97. Canadian Conference on Electrical and Computer Engineering. Engineering Innovation: Voyage of Discovery. Conference Proceedings.

[5]  이경훈,et al.  Method and apparatus for identifying analog signal or digital signal using doe filter , 2005 .

[6]  Ali Abdi,et al.  Survey of automatic modulation classification techniques: classical approaches and new trends , 2007, IET Commun..

[7]  Elsayed Elsayed Azzouz,et al.  Algorithms for automatic modulation recognition of communication signals , 1998, IEEE Trans. Commun..

[8]  Jiang Yuan,et al.  Modulation classification of communication signals , 2004, IEEE MILCOM 2004. Military Communications Conference, 2004..

[9]  Cheol-Sun Park,et al.  Automatic Modulation Recognition of Digital Signals using Wavelet Features and SVM , 2008, 2008 10th International Conference on Advanced Communication Technology.

[10]  Cheol-sun Park,et al.  A novel robust feature of modulation classification for reconfigurable software radio , 2006, IEEE Transactions on Consumer Electronics.

[11]  K. C. Ho,et al.  Modulation identification by the wavelet transform , 1995, Proceedings of MILCOM '95.

[12]  A. K. Nandi,et al.  Procedure for automatic recognition of analogue and digital modulations , 1996 .

[13]  M.N.S. Swamy,et al.  Automatic modulation type recognition , 1998, Conference Proceedings. IEEE Canadian Conference on Electrical and Computer Engineering (Cat. No.98TH8341).

[14]  Cheol-Sun Park,et al.  Automatic Modulation Recognition using Support Vector Machine in Software Radio Applications , 2007, The 9th International Conference on Advanced Communication Technology.