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Accuracy Analysis of Feature-Based Automatic Modulation Classification via Deep Neural Network

A feature-based automatic modulation classification (FB-AMC) algorithm has been widely investigated because of its better performance and lower complexity. In this study, a deep learning model was designed to analyze the classification performance of FB-AMC among the most commonly used features, inc...

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Autores principales: Ge, Zhan, Jiang, Hongyu, Guo, Youwei, Zhou, Jie
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8706053/
https://www.ncbi.nlm.nih.gov/pubmed/34960346
http://dx.doi.org/10.3390/s21248252
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author Ge, Zhan
Jiang, Hongyu
Guo, Youwei
Zhou, Jie
author_facet Ge, Zhan
Jiang, Hongyu
Guo, Youwei
Zhou, Jie
author_sort Ge, Zhan
collection PubMed
description A feature-based automatic modulation classification (FB-AMC) algorithm has been widely investigated because of its better performance and lower complexity. In this study, a deep learning model was designed to analyze the classification performance of FB-AMC among the most commonly used features, including higher-order cumulants (HOC), features-based fuzzy c-means clustering (FCM), grid-like constellation diagram (GCD), cumulative distribution function (CDF), and raw IQ data. A novel end-to-end modulation classifier based on deep learning, named CCT classifier, which can automatically identify unknown modulation schemes from extracted features using a general architecture, was proposed. Features except GCD are first converted into two-dimensional representations. Then, each feature is fed into the CCT classifier for modulation classification. In addition, Gaussian channel, phase offset, frequency offset, non-Gaussian channel, and flat-fading channel are also introduced to compare the performance of different features. Additionally, transfer learning is introduced to reduce training time. Experimental results showed that the features HOC, raw IQ data, and GCD obtained better classification performance than CDF and FCM under Gaussian channel, while CDF and FCM were less sensitive to the given phase offset and frequency offset. Moreover, CDF was an effective feature for AMC under non-Gaussian and flat-fading channels, and the raw IQ data can be applied to different channels’ conditions. Finally, it showed that compared with the existing CNN and K-S classifiers, the proposed CCT classifier significantly improved the classification performance for MQAM at N = 512, reaching about 3.2% and 2.1% under Gaussian channel, respectively.
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spelling pubmed-87060532021-12-25 Accuracy Analysis of Feature-Based Automatic Modulation Classification via Deep Neural Network Ge, Zhan Jiang, Hongyu Guo, Youwei Zhou, Jie Sensors (Basel) Article A feature-based automatic modulation classification (FB-AMC) algorithm has been widely investigated because of its better performance and lower complexity. In this study, a deep learning model was designed to analyze the classification performance of FB-AMC among the most commonly used features, including higher-order cumulants (HOC), features-based fuzzy c-means clustering (FCM), grid-like constellation diagram (GCD), cumulative distribution function (CDF), and raw IQ data. A novel end-to-end modulation classifier based on deep learning, named CCT classifier, which can automatically identify unknown modulation schemes from extracted features using a general architecture, was proposed. Features except GCD are first converted into two-dimensional representations. Then, each feature is fed into the CCT classifier for modulation classification. In addition, Gaussian channel, phase offset, frequency offset, non-Gaussian channel, and flat-fading channel are also introduced to compare the performance of different features. Additionally, transfer learning is introduced to reduce training time. Experimental results showed that the features HOC, raw IQ data, and GCD obtained better classification performance than CDF and FCM under Gaussian channel, while CDF and FCM were less sensitive to the given phase offset and frequency offset. Moreover, CDF was an effective feature for AMC under non-Gaussian and flat-fading channels, and the raw IQ data can be applied to different channels’ conditions. Finally, it showed that compared with the existing CNN and K-S classifiers, the proposed CCT classifier significantly improved the classification performance for MQAM at N = 512, reaching about 3.2% and 2.1% under Gaussian channel, respectively. MDPI 2021-12-10 /pmc/articles/PMC8706053/ /pubmed/34960346 http://dx.doi.org/10.3390/s21248252 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Ge, Zhan
Jiang, Hongyu
Guo, Youwei
Zhou, Jie
Accuracy Analysis of Feature-Based Automatic Modulation Classification via Deep Neural Network
title Accuracy Analysis of Feature-Based Automatic Modulation Classification via Deep Neural Network
title_full Accuracy Analysis of Feature-Based Automatic Modulation Classification via Deep Neural Network
title_fullStr Accuracy Analysis of Feature-Based Automatic Modulation Classification via Deep Neural Network
title_full_unstemmed Accuracy Analysis of Feature-Based Automatic Modulation Classification via Deep Neural Network
title_short Accuracy Analysis of Feature-Based Automatic Modulation Classification via Deep Neural Network
title_sort accuracy analysis of feature-based automatic modulation classification via deep neural network
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8706053/
https://www.ncbi.nlm.nih.gov/pubmed/34960346
http://dx.doi.org/10.3390/s21248252
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