A Robust Signal Recognition Method for Communication System under Time-Varying SNR Environment

As a consequence of recent developments in communications, the parameters of communication signals, such as the modulation parameter values, are becoming unstable because of time-varying SNR under electromagnetic conditions. In general, it is difficult to classify target signals that have time-varying parameters using traditional signal recognition methods. To overcome this problem, this study proposes a novel recognition method that works well even for such time-dependent communication signals. This method is mainly composed of feature extraction and classification processes. In the feature extraction stage, we adopt Shannon entropy and index entropy to obtain the stable features of modulated signals. In the classification stage, the interval gray relation theory is employed as suitable for signals with time-varying parameter spaces. The advantage of our method is that it can deal with time-varying SNR situations, which cannot be handled by existing methods. The results from numerical simulation show that the proposed feature extraction algorithm, based on entropy characteristics in time-varying SNR situations,offers accurate clustering performance, and the classifier, based on interval gray relation theory, can achieve a recognition rate of up to 82.9%, even when the SNR varies from −10 to −6 dB. key words: recognition method for communication signals, entropy characteristic, interval gray relation theory, time-varying SNR environment

[1]  Sridhar Krishnan,et al.  Time–Frequency Matrix Feature Extraction and Classification of Environmental Audio Signals , 2011, IEEE Transactions on Audio, Speech, and Language Processing.

[2]  Zhou Ruo-lin Application of improved grey correlation algorithm on radiation source recognition , 2010 .

[3]  Lin Yun,et al.  Radar signal recognition algorithms based on neural network and grey relation theory , 2011, Proceedings of 2011 Cross Strait Quad-Regional Radio Science and Wireless Technology Conference.

[4]  Lin Yun The Application of Entropy Analysis in Radiation Source Feature Extraction , 2011 .

[5]  Hong Xue,et al.  Multi-decision-tree classifier in Master Data Management System , 2011, 2011 International Conference on Business Management and Electronic Information.

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

[7]  S. Gunasekaran,et al.  Fractal dimension analysis of audio signals for Indian musical instrument recognition , 2008, 2008 International Conference on Audio, Language and Image Processing.

[8]  Jeffrey H. Reed,et al.  A new approach to signal classification using spectral correlation and neural networks , 2005, First IEEE International Symposium on New Frontiers in Dynamic Spectrum Access Networks, 2005. DySPAN 2005..

[9]  Nandita,et al.  Blind modulation classification based on MLP and PNN , 2012, 2012 Students Conference on Engineering and Systems.

[10]  Lin Yun,et al.  The Identification of Communication Signals Based on Fractal Box Dimension and Index Entropy , 2011 .

[11]  Kang Jian,et al.  Classifier Design Algorithms Aimed at Overlapping Characteristics , 2012 .

[12]  Ma Shuang Research on communication signal modulation recognition based on the generalized second-order cyclic statistics , 2011 .