TLN-LSTM:基于双层嵌套结构 LSTM 网络的超长信号序列自动调制识别分类器

IF 2.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Feng Qian, Yongsheng Tu, Chenyu Hou, Bin Cao
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引用次数: 0

摘要

目的自动调制识别(AMR)是智能通信系统中的一个挑战性问题,具有广泛的应用前景。目前,虽然已经提出了很多基于深度学习的 AMR 方法,但由于在识别真实调制信号时通常存在长序列和噪声两种困境,因此这些著作提出的方法无法直接应用于实际的无线通信场景。本文旨在有效处理受噪声干扰的超长信号同相正交(IQ)序列。设计/方法/途径本文提出了一种基于双层嵌套长短期记忆(LSTM)网络结构的调制分类器通用模型,称为双层嵌套结构(TLN)-LSTM,利用 LSTM 的时间敏感性和嵌套网络结构提取更多特征的能力,可以实现对从真实无线通信场景中采集到的受噪声干扰的超长信号 IQ 序列的有效处理。实验结果实验结果表明,我们提出的模型对于从真实无线通信场景中采集到的五种调制信号(包括幅度调制、频率调制、高斯最小位移键控、正交相移键控和差分正交相移键控)具有较高的识别准确率。与基线模型的 40.84% 相比,拟议模型对这些信号的总体分类准确率可达 73.11%。目前,虽然已经提出了很多基于深度学习的 AMR 方法,但这些工作都是基于模型对 AMR 公共数据集中各种调制信号的分类结果来评估所提出方法的信号识别性能,而不是收集实际无线通信场景中的真实调制信号进行识别。这些著作中提出的方法无法直接应用于实际无线通信场景。因此,本文提出了一种新的 AMR 方法,专门用于有效处理收集到的受噪声干扰的超长信号 IQ 序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TLN-LSTM: an automatic modulation recognition classifier based on a two-layer nested structure of LSTM network for extremely long signal sequences
Purpose Automatic modulation recognition (AMR) is a challenging problem in intelligent communication systems and has wide application prospects. At present, although many AMR methods based on deep learning have been proposed, the methods proposed by these works cannot be directly applied to the actual wireless communication scenario, because there are usually two kinds of dilemmas when recognizing the real modulated signal, namely, long sequence and noise. This paper aims to effectively process in-phase quadrature (IQ) sequences of very long signals interfered by noise. Design/methodology/approach This paper proposes a general model for a modulation classifier based on a two-layer nested structure of long short-term memory (LSTM) networks, called a two-layer nested structure (TLN)-LSTM, which exploits the time sensitivity of LSTM and the ability of the nested network structure to extract more features, and can achieve effective processing of ultra-long signal IQ sequences collected from real wireless communication scenarios that are interfered by noise. Findings Experimental results show that our proposed model has higher recognition accuracy for five types of modulation signals, including amplitude modulation, frequency modulation, gaussian minimum shift keying, quadrature phase shift keying and differential quadrature phase shift keying, collected from real wireless communication scenarios. The overall classification accuracy of the proposed model for these signals can reach 73.11%, compared with 40.84% for the baseline model. Moreover, this model can also achieve high classification performance for analog signals with the same modulation method in the public data set HKDD_AMC36. Originality/value At present, although many AMR methods based on deep learning have been proposed, these works are based on the model’s classification results of various modulated signals in the AMR public data set to evaluate the signal recognition performance of the proposed method rather than collecting real modulated signals for identification in actual wireless communication scenarios. The methods proposed in these works cannot be directly applied to actual wireless communication scenarios. Therefore, this paper proposes a new AMR method, dedicated to the effective processing of the collected ultra-long signal IQ sequences that are interfered by noise.
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来源期刊
International Journal of Web Information Systems
International Journal of Web Information Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.60
自引率
0.00%
发文量
19
期刊介绍: The Global Information Infrastructure is a daily reality. In spite of the many applications in all domains of our societies: e-business, e-commerce, e-learning, e-science, and e-government, for instance, and in spite of the tremendous advances by engineers and scientists, the seamless development of Web information systems and services remains a major challenge. The journal examines how current shared vision for the future is one of semantically-rich information and service oriented architecture for global information systems. This vision is at the convergence of progress in technologies such as XML, Web services, RDF, OWL, of multimedia, multimodal, and multilingual information retrieval, and of distributed, mobile and ubiquitous computing. Topicality While the International Journal of Web Information Systems covers a broad range of topics, the journal welcomes papers that provide a perspective on all aspects of Web information systems: Web semantics and Web dynamics, Web mining and searching, Web databases and Web data integration, Web-based commerce and e-business, Web collaboration and distributed computing, Internet computing and networks, performance of Web applications, and Web multimedia services and Web-based education.
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