LGSPJan 12, 2021

Blind Modulation Classification via Combined Machine Learning and Signal Feature Extraction

arXiv:2101.04337v14 citations
Originality Incremental advance
AI Analysis

This addresses the problem of automatic signal recognition for communication systems, though it appears incremental as it builds on existing methods with specific improvements.

The paper tackles blind modulation classification in low SNR conditions by combining machine learning with signal feature extraction, achieving 99% success rates for specific modulations at challenging SNR levels like -4.2 dB for 4-QAM and 2.1 dB for 4-FSK.

In this study, an algorithm to blind and automatic modulation classification has been proposed. It well benefits combined machine leaning and signal feature extraction to recognize diverse range of modulation in low signal power to noise ratio (SNR). The presented algorithm contains four. First, it advantages spectrum analyzing to branching modulated signal based on regular and irregular spectrum character. Seconds, a nonlinear soft margin support vector (NS SVM) problem is applied to received signal, and its symbols are classified to correct and incorrect (support vectors) symbols. The NS SVM employment leads to discounting in physical layer noise effect on modulated signal. After that, a k-center clustering can find center of each class. finally, in correlation function estimation of scatter diagram is correlated with pre-saved ideal scatter diagram of modulations. The correlation outcome is classification result. For more evaluation, success rate, performance, and complexity in compare to many published methods are provided. The simulation prove that the proposed algorithm can classified the modulated signal in less SNR. For example, it can recognize 4-QAM in SNR=-4.2 dB, and 4-FSK in SNR=2.1 dB with %99 success rate. Moreover, due to using of kernel function in dual problem of NS SVM and feature base function, the proposed algorithm has low complexity and simple implementation in practical issues.

Foundations

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