Authors
Wang Guan
Published in
Scientific reports. Volume 15. Issue 1. Pages 27543. Jul 29, 2025. Epub Jul 29, 2025.
Abstract
In the realm of communication reconnaissance, the accuracy of modulation recognition is of paramount importance. The modulation recognition task mainly encompasses two key aspects: the dataset and the network model. To enhance the recognition rate across diverse signal-to-noise ratio (SNR) conditions, this paper initiates from the current mainstream modulation recognition methods. It endeavors to identify a methodology capable of achieving a higher recognition rate in both low SNR and high SNR scenarios. Feature extraction in the transform domain of the dataset can, to a certain extent, improve the modulation recognition accuracy. However, it significantly prolongs the algorithm's running time. Consequently, from the dataset perspective, this study incorporates data augmentation techniques and amplitude-phase features to enhance the modulation recognition performance. Regarding the network model design, the baseline modulation recognition model is first replicated multiple times. Through numerous comparisons across different datasets, the features among various models are identified. Concentrating on the high-recognition-rate models, the design is ultimately optimized based on the characteristics of two specific models, taking into account different SNRs, datasets, and the number of network layers. This results in the formation of a novel dual-spliced deep-learning modulation recognition model. Deployed separately in the - 20-0 dB and 0-20 dB intervals, the model was tested on six datasets and achieved remarkable results. Simulation results show that the proposed method outperforms the other 11 types of modulation recognition methods in terms of modulation recognition rates on six major datasets. Moreover, it can address the recognition confusion between AM-DSB and AM-SSB, as well as between 16QAM and 64QAM to a certain extent.
PMID:
40730853
Bibliographic data and abstract were imported from PubMed on 30 Jul 2025.
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