WIRELESS SIGNAL IDENTIFICATION/CLASSIFICATION USING DEEP LEARNING
Date
2023-12
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Stevens Institute of Technology
Abstract
We exploit deep learning convolutional neural networks (CNN) on a constellation diagram
to identify QAM modulation of different orders in static, slow, and frequency
selective fading channels. Although constellation diagrams have been studied and
classified in literature, most of the work focused on noise. Little has been done to
study the effect of multipath fading channels. We develop a highly accurate modulation
classification method by exploiting deep learning with the constellation diagram.
Based on the experimental results, our CNN model achieves a classification accuracy
of 100% at -10 dB signal-to-noise ratio (SNR) under a multipath Rayleigh fading
channel.
Then, we use CNN on joint image representation and propose an automatic
modulation classification algorithm to classify the communication signals. The combined
representations include a constellation diagram, an ambiguity function (AF),
and an eye diagram. Experimentation results show that combining constellation and
eye diagrams achieves superior classification performance compared to having these
representations separately. Combining AF and an eye diagram results in improvement
at low SNR.
Finally, we extract features from each of the three datasets (Constellation, Eye
diagram, AF) using transfer learning with pre-trained model and then train the new
classifier on top of these features. We compare the results of the feature extraction
to the results of the joint image representation.
Description
Keywords
Machine Learning, convolutional neural networks