A Novel Automatic Modulation Classifier Using Graph-Based Constellation Analysis for M -ary QAM
Document Type
Article
Publication Date
2-1-2019
Abstract
An innovative automatic modulation classification via graph-based constellation analysis for M -ary QAM signals is presented. In our framework, a unified mesh model for the constellation diagrams of the M -QAM signals within the modulation candidate set is first constructed and exploited to transform the received M -QAM signal into graph domain. The concise graph representation of the received M -QAM signal is established from its constellation according to the positions of the recovered symbols in the mesh model. Then, the modulation feature vector is built from the eigenvector(s) corresponding to the maximum eigenvalue of its adjacency matrix. The modulation type can be identified by measuring the angle between the feature vectors resulting from the training data and the test data. Monte Carlo simulation results and theoretical analysis demonstrate that the proposed method with lower computational complexity can provide superior performance to the existing subtractive clustering technique, and is robust to the residual phase and timing offsets.
Publication Source (Journal or Book title)
IEEE Communications Letters
First Page
298
Last Page
301
Recommended Citation
Yan, X., Zhang, G., & Wu, H. (2019). A Novel Automatic Modulation Classifier Using Graph-Based Constellation Analysis for M -ary QAM. IEEE Communications Letters, 23 (2), 298-301. https://doi.org/10.1109/LCOMM.2018.2889084