Abstract
Automatic modulation classification (AMC) is a vital process in wireless communication systems that is fundamentally a classification problem. It is employed to automatically determine the type of modulation of a received signal. Deep learning (DL) methods have gained popularity in addressing the problem of modulation classification, as they automatically learn the features without needing technical expertise. However, their efficacy depends on the complexity of the algorithm, which can be characterized by the number of parameters. In this research, we presented a deep learning algorithm for AMC, inspired by residual learning, which has remarkable accuracy and great representational ability. We also employed a squeeze-and-excitation network that is capable of exploiting modeling interconnections between channels and adaptively re-calibrates the channel-wise feature response to improve performance. The proposed network was designed to meet the accuracy requirements with a reduced number of parameters for efficiency. The proposed model was evaluated on two benchmark datasets and compared with existing methods. The results show that the proposed model outperforms existing methods in terms of accuracy and has up to (Formula presented.) fewer parameters than convolutional neural network designs.
| Original language | English |
|---|---|
| Article number | 5145 |
| Journal | Applied Sciences (Switzerland) |
| Volume | 13 |
| Issue number | 8 |
| DOIs | |
| State | Published - Apr 2023 |
| Externally published | Yes |
Bibliographical note
Publisher Copyright:© 2023 by the authors.
Keywords
- automatic modulation classification
- deep neural network
- residual learning
- squeeze and excitation
ASJC Scopus subject areas
- General Materials Science
- Instrumentation
- General Engineering
- Process Chemistry and Technology
- Computer Science Applications
- Fluid Flow and Transfer Processes
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