Signal Detection in MIMO Communications System with Non-Gaussian Noises based on Deep Learning and Maximum Correntropy Criterion

M. Pourmir, R. Monsefi, G. Hodtani
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引用次数: 1

Abstract

In this paper, we study signal detection in multi-input-multi output (MIMO) communications system with non-Gaussian noises such as Middleton Class A noise, Gaussian mixtures and alpha stable distributions, using several deep neural network-based detector models such as FULLYCONNECTED and DETNET detector. By applying information theoretic criterion of Maximum Correntropy , SVD analysis on the channel matrix and reducing network complexity, the suggested deep neural network detector performs well in environments with non-Gaussian noises and, compared to the deep neural network-based detector with MSE loss function, achieves better performance.
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基于深度学习和最大相关熵准则的非高斯噪声MIMO通信系统信号检测
本文利用几种基于深度神经网络的检测器模型(FULLYCONNECTED和DETNET检测器),研究了含有米德尔顿A类噪声、高斯混合噪声和α稳定分布等非高斯噪声的多输入多输出(MIMO)通信系统中的信号检测。通过应用最大相关熵的信息论准则、对信道矩阵进行SVD分析和降低网络复杂度,所提出的深度神经网络检测器在非高斯噪声环境下表现良好,与基于MSE损失函数的深度神经网络检测器相比,具有更好的性能。
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