Journal of Computer Applications ›› 2025, Vol. 45 ›› Issue (8): 2672-2682.DOI: 10.11772/j.issn.1001-9081.2025010117

• Network and communications • Previous Articles    

Modulation recognition network for complex electromagnetic environments

Jin ZHOU, Yuzhi LI, Xu ZHANG, Shuo GAO, Li ZHANG, Jiachuan SHENG()   

  1. College of Science and Technology,Tianjin University of Finance and Economy,Tianjin 300222,China
  • Received:2025-02-07 Revised:2025-04-14 Accepted:2025-04-14 Online:2025-05-26 Published:2025-08-10
  • Contact: Jiachuan SHENG
  • About author:ZHOU Jin, born in 1981, Ph. D., associate professor. Her research interests include deep learning, intelligent information processing.
    LI Yuzhi, born in 1982, M. S., experimentalist. Her research interests include deep learning, data mining.
    ZHANG Xu, born in 1999, M. S. candidate. His research interests include pattern recognition, modulation recognition, channel modeling.
    GAO Shuo, born in 2001, M. S. candidate. His research interests include pattern recognition, intelligent signal processing.
    ZHANG Li, born in 1982, Ph. D., lecturer. Her research interests include communications signal processing, machine learning.
  • Supported by:
    Tianjin Natural Science Foundation(22JCYBJC01550);Tianjin Municipal Education Commission Research Program(2023SK105)

复杂电磁环境下的调制识别网络

周金, 李玉芝, 张徐, 高硕, 张立, 盛家川()   

  1. 天津财经大学 理工学院,天津 300222
  • 通讯作者: 盛家川
  • 作者简介:周金(1981—),女,天津人,副教授,博士,主要研究方向:深度学习、智能信息处理
    李玉芝(1982—),女,河北安国人,实验师,硕士,CCF会员,主要研究方向:深度学习、数据挖掘
    张徐(1999—),男,重庆人,硕士研究生,主要研究方向:模式识别、调制识别、信道建模
    高硕(2001—),男,河北唐山人,硕士研究生,主要研究方向:模式识别、智能信号处理
    张立(1982—),女,天津人,讲师,博士,主要研究方向:通信信号处理、机器学习。
  • 基金资助:
    天津自然科学基金资助项目(22JCYBJC01550);天津市教委科研计划项目(2023SK105)

Abstract:

Automated Modulation Recognition (AMR) plays a critical role in wireless communications. A Denoising & Dual-modal Attention CNN-Transformer (D-DmACT) was proposed to address problems of poor transfer ability and insufficient abilities to distinguish noise and modulation signal features of AMR networks in complex electromagnetic environments. Firstly, a generator to generate complex electromagnetic interference iteratively and a discriminator to be against interference were proposed to enhance generalization ability of the network when encountering complex electromagnetic environments. Secondly, a complex attention-based Transformer module was designed to capture time-domain features of In-phase and Quadrature (IQ) signals, and a coordination attention module based on time-frequency information was proposed to acquire features of time-frequency images, then the features were crossed and fused. Thirdly, temporal sequence complex signals and time-frequency image obtained by the generator were sent to the dual-modal attention fusion model. Finally, lightweight classification and recognition were implemented. Experiments were conducted on datasets RadioML2016.10A and RadioML2018.01a under white Gaussian noise and complex electromagnetic environment, respectively. Experimental results with impulsive noise show that compared with CLDNN(Convolutional Long short-term Deep Neural Networks), Residual Network (ResNet), and LSTM(Long Short-Term Memory) Network, the proposed network has the average recognition accuracy increased by 53.98%, 28.82%, and 24.64%; compared with Multi-Modal approach toward AMR (MM-Net), Threshold Autoencoder Denoiser Convolutional Neural Network (TADCNN), and Generative Adversarial Network & Multi-modal Attention mechanism CNN-LSTM (GAN-MnACL), the proposed network has the average recognition accuracy enhanced by 19.74%, 13.55% and 11.17%, respectively. In terms of computational complexity, deployability of the proposed network is validated through metrics such as parameters and FLoating point OPerations (FLOPs).

Key words: Automated Modulation Recognition (AMR), Generative Adversarial Network (GAN), coordination attention mechanism, Transformer, complex jamming

摘要:

自动调制识别(AMR)是无线通信系统的关键技术。针对AMR网络在复杂电磁环境下迁移能力较差以及对噪声和调制信号的特征区分能力不足的问题,提出去噪及双模态注意力Transformer及卷积融合网络(Denoising & Dual-modal Attention CNN-Transformer, D-DmACT)。首先,设计一种迭代生成复杂干扰的生成器和对抗干扰的判别器,增强模型在遭遇复杂电磁环境时的泛化能力;其次,设计基于复数注意力的Transformer模块,以捕获同相正交(IQ)信号的时域特征,并设计基于时频位置信息的坐标注意力模块,以获取时频图像的特征,并对两种特征进行交叉融合;再次,将判别器输出的时序复序列和时频图像送至双模态注意力融合模型;最后,实现轻量化的分类识别。在数据集RadioML2016.10a和RadioML2018.01a上分别开展的高斯白噪声以及复杂电磁环境下的识别实验的结果表明:在脉冲噪声的作用下,相较于CLDNN(Convolutional Long short-term Deep Neural Network)、残差网络(ResNet)和长短期记忆(LSTM)网络,所提网络的平均识别准确率分别提高了53.98%、28.82%和24.64%,而相较于多模态自动调制分类网络(MM-Net)、阈值自编码去噪卷积神经网络(TADCNN)和生成式对抗网络联合多模态注意力机制卷积长短期记忆网络(GAN-MnACL),所提网络的平均识别准确率分别提高了19.74%、13.55%和11.17%。在计算复杂度方面,通过参数量和浮点运算数(FLOPs)等指标验证了所提网络在终端的可部署性。

关键词: 自动调制识别, 生成对抗网络, 坐标注意力机制, Transformer, 复杂干扰

CLC Number: