Electromagnetic signal modulation recognition technology based on lightweight deep neural network

In response to the trend that in the 6th generation wireless (6G) era,mobile communications and artificial intelligence will be closely integrated,and a huge number of edge intelligent signal processing nodes will be deployed,an efficient and intelligent electromagnetic signal recognition model was...

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Main Authors: Sicheng ZHANG, Yun LIN, Ya TU, Shiwen Mao
Format: Article
Language:zho
Published: Editorial Department of Journal on Communications 2020-11-01
Series:Tongxin xuebao
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Online Access:http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2020237/
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author Sicheng ZHANG
Yun LIN
Ya TU
Shiwen Mao
author_facet Sicheng ZHANG
Yun LIN
Ya TU
Shiwen Mao
author_sort Sicheng ZHANG
collection DOAJ
description In response to the trend that in the 6th generation wireless (6G) era,mobile communications and artificial intelligence will be closely integrated,and a huge number of edge intelligent signal processing nodes will be deployed,an efficient and intelligent electromagnetic signal recognition model was proposed,which could be deployed on resource-constrained edge devices.The constellation diagram of electromagnetic signal was firstly drawn to visualize electromagnetic signal as a two-dimensional image,and color the constellation diagram according to the normalized point density to achieve feature enhancement.Then,a binary deep neural network was adopted to recognize the colored constellation diagrams.It was shown that the approach can guarantee a high recognition accuracy,which significantly reduced the model storage and calculation costs.For verification,the proposed approach was applied to the problem of electromagnetic signal modulation recognition.The experiment uses eight commonly used digital modulation signals and selects additive white Gaussian noise as the channel environment.The experimental results show that the scheme can achieve a comprehensive recognition rate of 96.1% under the noise condition of -6~6 dB,while the size of the network model is only 166 KB.Further,the execution time,when executed on a Raspberry Pi 4B,is only 290 ms.Compared to a full-precision network of the same scale,the accuracy is increased by 0.6%,the model is reduced to <inline-formula><math xmlns="http://www.w3.org/1998/Math/MathML"> <mfrac> <mtext>1</mtext> <mrow> <mtext>26</mtext><mo>.</mo><mtext>16</mtext></mrow> </mfrac> </math></inline-formula>,and the running time is reduced to <inline-formula><math xmlns="http://www.w3.org/1998/Math/MathML"> <mfrac> <mtext>1</mtext> <mrow> <mn>2.37</mn></mrow> </mfrac> </math></inline-formula>.
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series Tongxin xuebao
spelling doaj-art-8810d80d54274d73b4e849d094ec50952025-08-20T02:41:21ZzhoEditorial Department of Journal on CommunicationsTongxin xuebao1000-436X2020-11-0141122159738338Electromagnetic signal modulation recognition technology based on lightweight deep neural networkSicheng ZHANGYun LINYa TUShiwen MaoIn response to the trend that in the 6th generation wireless (6G) era,mobile communications and artificial intelligence will be closely integrated,and a huge number of edge intelligent signal processing nodes will be deployed,an efficient and intelligent electromagnetic signal recognition model was proposed,which could be deployed on resource-constrained edge devices.The constellation diagram of electromagnetic signal was firstly drawn to visualize electromagnetic signal as a two-dimensional image,and color the constellation diagram according to the normalized point density to achieve feature enhancement.Then,a binary deep neural network was adopted to recognize the colored constellation diagrams.It was shown that the approach can guarantee a high recognition accuracy,which significantly reduced the model storage and calculation costs.For verification,the proposed approach was applied to the problem of electromagnetic signal modulation recognition.The experiment uses eight commonly used digital modulation signals and selects additive white Gaussian noise as the channel environment.The experimental results show that the scheme can achieve a comprehensive recognition rate of 96.1% under the noise condition of -6~6 dB,while the size of the network model is only 166 KB.Further,the execution time,when executed on a Raspberry Pi 4B,is only 290 ms.Compared to a full-precision network of the same scale,the accuracy is increased by 0.6%,the model is reduced to <inline-formula><math xmlns="http://www.w3.org/1998/Math/MathML"> <mfrac> <mtext>1</mtext> <mrow> <mtext>26</mtext><mo>.</mo><mtext>16</mtext></mrow> </mfrac> </math></inline-formula>,and the running time is reduced to <inline-formula><math xmlns="http://www.w3.org/1998/Math/MathML"> <mfrac> <mtext>1</mtext> <mrow> <mn>2.37</mn></mrow> </mfrac> </math></inline-formula>.http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2020237/6Gedge intelligenceelectromagnetic signal modulation recognitionimage visualizationbinary deep neur-al network
spellingShingle Sicheng ZHANG
Yun LIN
Ya TU
Shiwen Mao
Electromagnetic signal modulation recognition technology based on lightweight deep neural network
Tongxin xuebao
6G
edge intelligence
electromagnetic signal modulation recognition
image visualization
binary deep neur-al network
title Electromagnetic signal modulation recognition technology based on lightweight deep neural network
title_full Electromagnetic signal modulation recognition technology based on lightweight deep neural network
title_fullStr Electromagnetic signal modulation recognition technology based on lightweight deep neural network
title_full_unstemmed Electromagnetic signal modulation recognition technology based on lightweight deep neural network
title_short Electromagnetic signal modulation recognition technology based on lightweight deep neural network
title_sort electromagnetic signal modulation recognition technology based on lightweight deep neural network
topic 6G
edge intelligence
electromagnetic signal modulation recognition
image visualization
binary deep neur-al network
url http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2020237/
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AT yunlin electromagneticsignalmodulationrecognitiontechnologybasedonlightweightdeepneuralnetwork
AT yatu electromagneticsignalmodulationrecognitiontechnologybasedonlightweightdeepneuralnetwork
AT shiwenmao electromagneticsignalmodulationrecognitiontechnologybasedonlightweightdeepneuralnetwork