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机场终端区RF信号深度调制识别方法
引用本文:陈林,唐文波,丁学科,樊荣. 机场终端区RF信号深度调制识别方法[J]. 计算机与数字工程, 2022, 50(2): 424-430. DOI: 10.3969/j.issn.1672-9722.2022.02.038
作者姓名:陈林  唐文波  丁学科  樊荣
作者单位:同方电子科技有限公司 九江 332000,中国民用航空飞行学院航空电子电气学院 广汉 618307
基金项目:国家自然科学基金;四川省科技计划重点研发项目;中国民用航空飞行学院年度科研面上项目
摘    要:论文构建了24种不同信号调制类型的数据集,并提出一款端到端的信号调制识别神经网络.研究了网络卷积层数、卷积核以及训练数据集大小对信号调制识别性能的影响.所提方法避免了基于特征提取的信号调制识别方法中所需的特征选择、信号同步、载波跟踪、信噪比估计等繁杂的处理流程.最后,引入迁移学习技术解决因信道环境变化导致网络识别性能下...

关 键 词:深度调制识别  机场终端区  数据驱动  卷积神经网络  迁移学习

Deep Modulation Identification Approach of RF Signal in Airport Terminal Area
CHEN Lin,TANG Wenbo,DING Xueke,FAN Rong. Deep Modulation Identification Approach of RF Signal in Airport Terminal Area[J]. Computer and Digital Engineering, 2022, 50(2): 424-430. DOI: 10.3969/j.issn.1672-9722.2022.02.038
Authors:CHEN Lin  TANG Wenbo  DING Xueke  FAN Rong
Affiliation:(TongFang Electronic Science and Technology Co.,Ltd.,Jiujiang 332000;Institute of Electronic and Electrical Engineering,Civil Aviation Flight University of China,Guanghan 618307)
Abstract:In the paper,a data set containing 24 kinds of signal modulation waveforms is constructed and an end-to-end signal modulation recognition neural network is developed. The modulation identification accuracy of the proposed neural network versus the convolution layer number,convolution kernel size and training data set size is analyzed,respectively. With the proposed approach,the tedious signal processing procedure including feature selection,signal synchronization,carrier tracking,and SNR estimation which must be done in the baseline approaches are no longer needed. Besides,in order to improve the performance of the neural network when the wireless channel response changed,the transfer learning trick is adopted. Even though the channel response is changed,by virtue of transfer learning in the proposed approach,just using about 40% of data set samples to train the neural network is enough,but the network training time is 1/3 of that when using the whole training samples.
Keywords:deep modulation identification  airport terminal area  data-driven  convolutional neural networks(CNN)  transfer learning(TL)
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