Automatic Modulation Classification: Convolutional Deep Learning Neural Networks Approaches

被引:3
|
作者
Hussein, Hany S. [1 ,2 ]
Essai Ali, Mohamed Hassan [3 ]
Ismeil, Mohammed [1 ,4 ]
Shaaban, Mohamed N. [3 ]
Mohamed, Mona Lotfy [5 ]
Atallah, Hany A. [4 ]
机构
[1] King Khalid Univ, Fac Engn, Elect Engn Dept, Abha 61411, Saudi Arabia
[2] Aswan Univ, Fac Engn, Elect Engn Dept, Aswan 81528, Egypt
[3] Al Azhar Univ, Fac Engn, Elect Engn Dept, Qena 83523, Egypt
[4] South Valley Univ, Fac Engn, Elect Engn Dept, Qena 83523, Egypt
[5] Int Maritime Sci Acad, Elect Engn Dept, Hurghada 1971307, Egypt
关键词
Modulation; Convolutional neural networks; Convolution; Feature extraction; Deep learning; Neural networks; Signal to noise ratio; Modulation classification; deep learning; convolutional neural network; wireless signal; IDENTIFICATION; SIGNALS; MODEL;
D O I
10.1109/ACCESS.2023.3313393
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This study proposes robust convolutional neural network (CNN)-based automatic modulation classification (AMC) techniques. Traditional AMCs may be classified into two types: those that rely on ML (maximum likelihood-based AMCs) and those that rely on features. Numerous studies have been conducted on feature-based automatic modulation classification techniques. The current feature-based AMCs lack generalization capability and frequently target a small group of modulation techniques. The current paper develops three different CNN-based AMCs, each with a different classification layer (CL). The adopted classification layers are mean absolute error-based CL, a sum of squared errors-based CL, and crossentropy-based CL. The developed techniques can classify the received signals without feature extraction, where they can learn the features from the transmitted signals automatically during the offline training process, thus eliminating the necessity for feature extraction. A comparison study was done for the proposed CNN-based AMCs with three optimization algorithms at two signal-to-noise ratios. The proposed AMCs attain a true classification accuracy of up to 100% depending on the optimizer and loss function-base CL.
引用
收藏
页码:98695 / 98705
页数:11
相关论文
共 50 条
  • [21] Deep geometric convolutional network for automatic modulation classification
    Rundong Li
    Chengtian Song
    Yuxuan Song
    Xiaojun Hao
    Shuyuan Yang
    Xiyu Song
    Signal, Image and Video Processing, 2020, 14 : 1199 - 1205
  • [22] Autocorrelation Convolution Networks Based on Deep Learning for Automatic Modulation Classification
    Zhang, Duona
    Ding, Wenrui
    Wang, Hongyu
    Zhang, Baochang
    PROCEEDINGS OF THE 15TH IEEE CONFERENCE ON INDUSTRIAL ELECTRONICS AND APPLICATIONS (ICIEA 2020), 2020, : 1561 - 1565
  • [23] Multiscale Correlation Networks Based on Deep Learning for Automatic Modulation Classification
    Xiao, Jing
    Wang, Yufeng
    Zhang, Duona
    Ma, Qinyan
    Ding, Wenrui
    IEEE SIGNAL PROCESSING LETTERS, 2023, 30 : 633 - 637
  • [24] Modulation Classification Using Convolutional Neural Network Based Deep Learning Model
    Peng, Shengliang
    Jiang, Hanyu
    Wang, Huaxia
    Alwageed, Hathal
    Yao, Yu-Dong
    2017 26TH WIRELESS AND OPTICAL COMMUNICATION CONFERENCE (WOCC), 2017,
  • [25] Convolutional Neural Networks, Big Data and Deep Learning in Automatic Image Analysis
    Vrejoiu, Mihnea Horia
    ROMANIAN JOURNAL OF INFORMATION TECHNOLOGY AND AUTOMATIC CONTROL-REVISTA ROMANA DE INFORMATICA SI AUTOMATICA, 2019, 29 (01): : 91 - 114
  • [26] A Deep Learning Approach for Automatic Ionogram Parameters Recognition With Convolutional Neural Networks
    Sherstyukov, Ruslan
    Moges, Samson
    Kozlovsky, Alexander
    Ulich, Thomas
    EARTH AND SPACE SCIENCE, 2024, 11 (10)
  • [27] ImageNet Classification with Deep Convolutional Neural Networks
    Krizhevsky, Alex
    Sutskever, Ilya
    Hinton, Geoffrey E.
    COMMUNICATIONS OF THE ACM, 2017, 60 (06) : 84 - 90
  • [28] WEATHER CLASSIFICATION WITH DEEP CONVOLUTIONAL NEURAL NETWORKS
    Elhoseiny, Mohamed
    Huang, Sheng
    Elgammal, Ahmed
    2015 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP), 2015, : 3349 - 3353
  • [29] Plankton Classification with Deep Convolutional Neural Networks
    Ouyang Py
    Hu Hong
    Shi Zhongzhi
    2016 IEEE INFORMATION TECHNOLOGY, NETWORKING, ELECTRONIC AND AUTOMATION CONTROL CONFERENCE (ITNEC), 2016, : 132 - 136
  • [30] Malware Classification with Deep Convolutional Neural Networks
    Kalash, Mahmoud
    Rochan, Mrigank
    Mohammed, Noman
    Bruce, Neil D. B.
    Wang, Yang
    Iqbal, Farkhund
    2018 9TH IFIP INTERNATIONAL CONFERENCE ON NEW TECHNOLOGIES, MOBILITY AND SECURITY (NTMS), 2018,