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Deep cascading network architecture for robust automatic modulation classification

机译:深度级联网络架构,适用于鲁棒自动调制分类

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摘要

BACKGROUND: Automatic modulation classification (AMC) plays a crucial role in cognitive radio, such as industrial automation, transmitter identification, and spectrum resource allocation. Recently, deep learning (DL) as a new machine learning (ML) methodology has achieved considerable implementation in AMC missions. However, few studies have examined the robustness of DL models under varying signal-tonoise ratio (SNR) environments. OBJECTIVE: The primary objective of this paper is to design a robust DL-based AMC model to adapt to noise changes. METHODS: The AMC task is divided into two sub-problems: SNR environment perception and modulation classification in sub-environments. A deep cascading network architecture (DCNA) is proposed to solve these two problems. DCNA is composed of an SNR estimator network (SEN) and a modulation recognition cluster network (MRCN). SEN is designed to identify the SNR levels of samples, and MRCN is composed of several subnetworks for further modulation recognition under diverse SNR settings. In addition, a label-smoothing method is proposed to promote the integration between SEN and MRCN. An auxiliary data-segmenting method is also presented to deal with the contrasting data requirements of DCNA. Note that DCNA does not utilize a specific network structure and can be generalized to various deep learning models with advanced improvements. RESULTS: Experimental results on dataset RML2016.10b show that our proposed DCNA can enhance the recognition performance of different network structures on AMC tasks. In particular, a combination of DCNA and convolutional long short-term deep neural network (CLDNN) can achieve a classification accuracy of 91.0%, outperforming the previous research. CONCLUSION: The performance of the cascading network demonstrates the significant performance advantage and application feasibility of DCNA. (c) 2021 Elsevier B.V. All rights reserved.
机译:背景:自动调制分类(AMC)在认知无线电中起着至关重要的作用,例如工业自动化,发射机识别和频谱资源分配。最近,深入学习(DL)作为新机器学习(ML)方法在AMC任务中取得了相当大的实施。然而,很少有研究已经检查了不同信号 - 儿童比(SNR)环境下DL模型的稳健性。目的:本文的主要目标是设计一种基于稳健的DL的AMC模型,可适用噪声变化。方法:AMC任务分为两个子问题:SUR环境感知和调制分类在子环境中。建议深度级联网络架构(DCNA)来解决这两个问题。 DCNA由SNR估计网络(SEN)和调制识别集群网络(MRCN)组成。 SEN旨在识别SNR样本的SNR水平,MRCN由多个子网组成,用于根据不同的SNR设置进一步调制识别。此外,提出了一种标签平滑方法,以促进森和MRCN之间的集成。还提出了一种辅助数据分段方法以处理DCNA的对比度数据要求。请注意,DCNA不利用特定的网络结构,并且可以推广到具有先进改进的各种深度学习模型。结果:DataSet RML2016.10B上的实验结果表明,我们所提出的DCNA可以增强不同网络结构对AMC任务的识别性能。特别地,DCNA和卷积长短短期深神经网络(CLDNN)的组合可以达到91.0%的分类精度,表现出先前的研究。结论:级联网络的性能展示了DCNA的显着性能优势和应用可行性。 (c)2021 elestvier b.v.保留所有权利。

著录项

  • 来源
    《Neurocomputing》 |2021年第30期|308-324|共17页
  • 作者单位

    PLA Strateg Support Force Informat Engn Univ Zhengzhou 450002 Peoples R China;

    Beijing Univ Posts & Telecommun Minist Educ Key Lab Trustworthy Distributed Comp & Serv Beijing 100876 Peoples R China;

    PLA Strateg Support Force Informat Engn Univ Zhengzhou 450002 Peoples R China;

    Acad Mil Sci PLA Natl Innovat Inst Def Technol Beijing 100010 Peoples R China;

    Beijing Univ Posts & Telecommun Minist Educ Key Lab Trustworthy Distributed Comp & Serv Beijing 100876 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Automatic modulation classification; Cascading network architecture; Deep learning; SNR; Wireless communication;

    机译:自动调制分类;级联网络架构;深度学习;SNR;无线通信;

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