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

Larisa I. Averina, Oleg K. Kamentsev
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Abstract

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.
复值卷积神经网络在 SEFDM 系统均衡和检测中的应用
背景。采用频率复用技术的高效频谱信号的缺点是会出现符号间干扰,而当这些信号在频率选择性信道中传播时,符号间干扰会进一步加剧。研究目的评估在使用 SEFDM 信号的通信系统中使用神经网络方法进行信道均衡和信号检测的可能性和有效性。方法。提出了一种基于深度复值卷积神经网络的 SEFDM 系统接收器结构,它可以从信号的时间表示中恢复比特,而无需使用分数傅里叶变换和频率子载波之间的交叉相关矩阵反演。还开发了一种两阶段网络训练方案。在仿真建模的基础上,使用经典接收器和神经网络接收器,对 SEFDM 系统在白高斯噪声信道和瑞利衰落信道中的抗噪能力进行了比较分析。结果显示结果表明,在加性白高斯噪声信道中,系统的抗噪能力没有损失,而在扩展汽车模型(3GPP-EVA)指定的信道中,系统的抗噪能力提高了 2 分贝。结论使用深度神经复值卷积网络作为频谱高效通信系统的接收器的有效性,以及与经典接收器相比的优势得到了证明。
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