Robust Modulation Classification over α-Stable Noise Using Graph-Based Fractional Lower-Order Cyclic Spectrum Analysis
Document Type
Article
Publication Date
3-1-2020
Abstract
This paper introduces a novel automatic modulation classification (AMC) method using the graph-based fractional lower-order cyclic-spectrum analysis in the α-stable noise environment. The noise in the practical communication scenario usually exhibits impulse characteristics in the statistical sense, which could be modeled as the α-stable distribution. This would make the second- or higher-order statistics of the received signal vanish, and thus the performances of the conventional AMC algorithms designed for Gaussian noise significantly deteriorate when directly employed in the α-stable noise. In our proposed framework, the fractional lower-order cyclic spectrum (FLOCS) analysis is first invoked to acquire the polyspectra of the signal corrupted by the α-stable noise. Then, the graph-based AMC mechanism is systematically established upon the graph representation of the FLOCS to identify the modulation type according to the discrepancies between the graph features derived from the training and test data. The performance of our proposed new algorithm is theoretically analyzed, and the correct classification probability Pcc over the modulation candidate set is formulated analytically. The remarkable scalability and efficiency of our proposed approach for the modulation candidate set variation are also theoretically investigated in detail. Monte Carlo simulation results demonstrate the effectiveness and superiority of the proposed AMC scheme.
Publication Source (Journal or Book title)
IEEE Transactions on Vehicular Technology
First Page
2836
Last Page
2849
Recommended Citation
Yan, X., Liu, G., Wu, H., Zhang, G., Wang, Q., & Wu, Y. (2020). Robust Modulation Classification over α-Stable Noise Using Graph-Based Fractional Lower-Order Cyclic Spectrum Analysis. IEEE Transactions on Vehicular Technology, 69 (3), 2836-2849. https://doi.org/10.1109/TVT.2020.2965137