Co-Channel Interference and Colored Noise Mitigation: An Iterative Structure with Convolutional Neural Network

Jun Lu, Jialiang Gong, Xiaodong Xu, Yihua Hu
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Abstract

Reliable information transmission in complex electromagnetic interference environments is an essential proposition for wireless communication systems. This paper proposes an iterative structure for single antenna receiver, which combines both blind signal extraction (BSE) and convolutional neural network (CNN) to mitigate potential co-channel interference (CCI) as well as colored noise. Firstly, the single channel received signal is transformed into a multi-channel observations so that the proposed structure can use BSE to extract the target signal. Then, the belief propagation (BP) algorithm is employed to decode low-density parity-check (LDPC) codes. After that, the residual interferences and colored noise are iteratively learned by a one-dimensional CNN model and fed back to be gradually canceled out from the original input. Finally, a valid estimation of the desired sequence is obtained from the output of the BP decoder. The simulation results show that, in contrast, the proposed structure can effectively reduce the bit error rate (BER) of the system, which indicates that it has a strong ability to mitigate the co-channel interference and colored noise simultaneously.
同信道干扰与彩色噪声抑制:基于卷积神经网络的迭代结构
在复杂电磁干扰环境下可靠地传输信息是无线通信系统的一个基本命题。本文提出了一种单天线接收机的迭代结构,该结构将盲信号提取(BSE)和卷积神经网络(CNN)相结合,以减轻潜在的同信道干扰(CCI)和彩色噪声。首先,将单通道接收信号转换成多通道观测信号,使该结构能够利用BSE提取目标信号。然后,采用信念传播(BP)算法对低密度奇偶校验码进行译码。之后,通过一维CNN模型迭代学习残余干扰和彩色噪声,并反馈从原始输入中逐渐消除。最后,从BP解码器的输出中得到期望序列的有效估计。仿真结果表明,该结构能有效降低系统的误码率,具有较强的同时抑制同信道干扰和彩色噪声的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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