Computers (Nov 2022)

Robust Automatic Modulation Classification Using Convolutional Deep Neural Network Based on Scalogram Information

  • Ahmed Mohammed Abdulkarem,
  • Firas Abedi,
  • Hayder M. A. Ghanimi,
  • Sachin Kumar,
  • Waleed Khalid Al-Azzawi,
  • Ali Hashim Abbas,
  • Ali S. Abosinnee,
  • Ihab Mahdi Almaameri,
  • Ahmed Alkhayyat

DOI
https://doi.org/10.3390/computers11110162
Journal volume & issue
Vol. 11, no. 11
p. 162

Abstract

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This study proposed a two-stage method, which combines a convolutional neural network (CNN) with the continuous wavelet transform (CWT) for multiclass modulation classification. The modulation signals’ time-frequency information was first extracted using CWT as a data source. The convolutional neural network was fed input from 2D pictures. The second step included feeding the proposed algorithm the 2D time-frequency information it had obtained in order to classify the different kinds of modulations. Six different types of modulations, including amplitude-shift keying (ASK), phase-shift keying (PSK), frequency-shift keying (FSK), quadrature amplitude-shift keying (QASK), quadrature phase-shift keying (QPSK), and quadrature frequency-shift keying (QFSK), are automatically recognized using a new digital modulation classification model between 0 and 25 dB SNRs. Modulation types are used in satellite communication, underwater communication, and military communication. In comparison with earlier research, the recommended convolutional neural network learning model performs better in the presence of varying noise levels.

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