Abstract

Since digital communication signals are widely used in radio and underwater acoustic systems, the modulation classification of these signals has become increasingly significant in various military and civilian applications. However, due to the adverse channel transmission characteristics and low signal to noise ratio (SNR), the modulation classification of communication signals is extremely challenging. In this paper, a novel method for automatic modulation classification of digital communication signals using a support vector machine (SVM) based on hybrid features, cyclostationary, and information entropy is proposed. In this proposed method, by combining the theory of the cyclostationary and entropy, based on the existing signal features, we propose three other new features to assist the classification of digital communication signals, which are the maximum value of the normalized cyclic spectrum when the cyclic frequency is not zero, the Shannon entropy of the cyclic spectrum, and Renyi entropy of the cyclic spectrum respectively. Because these new features do not require any prior information and have a strong anti-noise ability, they are very suitable for the identification of communication signals. Finally, a one against one SVM is designed as a classifier. Simulation results show that the proposed method outperforms the existing methods in terms of classification performance and noise tolerance.

Highlights

  • Automatic modulation classification (AMC) of digital communication signals has become an established research area [1]

  • A novel method for automatic modulation classification of digital communication signals, using support vector machine (SVM) based on hybrid features, cyclostationary, and information entropy, is proposed

  • By combining the theory of the cyclostationary and entropy, based on the existing signal features, we propose three other new features to assist the classification of communication signals, which are the maximum value of the normalized cyclic spectrum when the cyclic frequency is not zero, the Shannon entropy of the cyclic spectrum, and Renyi entropy of the cyclic spectrum respectively

Read more

Summary

Introduction

Automatic modulation classification (AMC) of digital communication signals has become an established research area [1]. A novel method for automatic modulation classification of digital communication signals, using SVM based on hybrid features, cyclostationary, and information entropy, is proposed. By combining the theory of the cyclostationary and entropy, based on the existing signal features, we propose three other new features to assist the classification of communication signals, which are the maximum value of the normalized cyclic spectrum when the cyclic frequency is not zero, the Shannon entropy of the cyclic spectrum, and Renyi entropy of the cyclic spectrum respectively Since these new features do not require any prior information and have a strong anti-noise ability, they are very suitable for the identification of communication signals.

Signal Model
Instantaneous Features
The Cyclostationary of Communication Signals
The Feature of the Cyclic Spectrum
The Information Entropy Features of the Cyclic Spectrum
The Proposed SVM Classifier
Simulation Results
Classification in AWGN Channel
Classification in Fading Channel
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call