Application of complex-valued convolutional neural networks for equalization and detection of SEFDM systems

Background. The disadvantage of spectrally efficient signals with frequency multiplexing is the occurrence of intersymbol interference, which is further aggravated when these signals propagate in frequency selective channels. Aim. The possibility and effectiveness of using neural network approach...

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Main Authors: Larisa I. Averina, Oleg K. Kamentsev
Format: Article
Language:English
Published: Povolzhskiy State University of Telecommunications & Informatics 2024-01-01
Series:Физика волновых процессов и радиотехнические системы
Subjects:
Online Access:https://journals.ssau.ru/pwp/article/viewFile/27074/10251
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author Larisa I. Averina
Oleg K. Kamentsev
author_facet Larisa I. Averina
Oleg K. Kamentsev
author_sort Larisa I. Averina
collection DOAJ
description Background. The disadvantage of spectrally efficient signals with frequency multiplexing is the occurrence of intersymbol interference, which is further aggravated when these signals propagate in frequency selective channels. Aim. The possibility and effectiveness of using neural network approaches for channel equalization and signal detection in communication systems using SEFDM signals has been assessed. Methods. A receiver structure for SEFDM systems based on a deep complex-valued convolutional neural network is proposed, which allows recovering bits from the temporal representation of the signal without using the fractional Fourier transform and inverting the cross-correlation matrix between frequency subcarriers. A two-stage network training scheme has been developed. Based on simulation modeling, a comparative analysis of the noise immunity of SEFDM systems was carried out both in a channel with white Gaussian noise and in a channel with Rayleigh fading, using classical and neural network receivers. Results. It is shown that there is no loss of noise immunity in channels with additive white Gaussian noise and an increase in noise immunity of the system up to 2 dB in the channel specified by the extended automotive model (3GPP-EVA). Conclusion. The effectiveness of using deep neural complex-valued convolutional networks as receivers for spectrally efficient communication systems, as well as their advantage over classical ones, is shown. Keywords – SEFDM; deep complex-valued convolutional neural network; turbocoding.
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spelling doaj.art-eac5ced9bd104855abeeb92c71f363b12024-03-15T11:49:17ZengPovolzhskiy State University of Telecommunications & InformaticsФизика волновых процессов и радиотехнические системы1810-31892782-294X2024-01-012649510310.18469/1810-3189.2023.26.4.95-1038858Application of complex-valued convolutional neural networks for equalization and detection of SEFDM systemsLarisa I. Averina0https://orcid.org/0000-0002-5908-5032Oleg K. Kamentsev1https://orcid.org/0000-0003-4475-1757Voronezh State UniversityJSC «Concern “Sozvezdie”»Background. The disadvantage of spectrally efficient signals with frequency multiplexing is the occurrence of intersymbol interference, which is further aggravated when these signals propagate in frequency selective channels. Aim. The possibility and effectiveness of using neural network approaches for channel equalization and signal detection in communication systems using SEFDM signals has been assessed. Methods. A receiver structure for SEFDM systems based on a deep complex-valued convolutional neural network is proposed, which allows recovering bits from the temporal representation of the signal without using the fractional Fourier transform and inverting the cross-correlation matrix between frequency subcarriers. A two-stage network training scheme has been developed. Based on simulation modeling, a comparative analysis of the noise immunity of SEFDM systems was carried out both in a channel with white Gaussian noise and in a channel with Rayleigh fading, using classical and neural network receivers. Results. It is shown that there is no loss of noise immunity in channels with additive white Gaussian noise and an increase in noise immunity of the system up to 2 dB in the channel specified by the extended automotive model (3GPP-EVA). Conclusion. The effectiveness of using deep neural complex-valued convolutional networks as receivers for spectrally efficient communication systems, as well as their advantage over classical ones, is shown. Keywords – SEFDM; deep complex-valued convolutional neural network; turbocoding.https://journals.ssau.ru/pwp/article/viewFile/27074/10251sefdmdeep complex-valued convolutional neural networkturbocoding
spellingShingle Larisa I. Averina
Oleg K. Kamentsev
Application of complex-valued convolutional neural networks for equalization and detection of SEFDM systems
Физика волновых процессов и радиотехнические системы
sefdm
deep complex-valued convolutional neural network
turbocoding
title Application of complex-valued convolutional neural networks for equalization and detection of SEFDM systems
title_full Application of complex-valued convolutional neural networks for equalization and detection of SEFDM systems
title_fullStr Application of complex-valued convolutional neural networks for equalization and detection of SEFDM systems
title_full_unstemmed Application of complex-valued convolutional neural networks for equalization and detection of SEFDM systems
title_short Application of complex-valued convolutional neural networks for equalization and detection of SEFDM systems
title_sort application of complex valued convolutional neural networks for equalization and detection of sefdm systems
topic sefdm
deep complex-valued convolutional neural network
turbocoding
url https://journals.ssau.ru/pwp/article/viewFile/27074/10251
work_keys_str_mv AT larisaiaverina applicationofcomplexvaluedconvolutionalneuralnetworksforequalizationanddetectionofsefdmsystems
AT olegkkamentsev applicationofcomplexvaluedconvolutionalneuralnetworksforequalizationanddetectionofsefdmsystems