基于神经网络的一比特量化信道预测

N. Turan, M. Koller, W. Utschick
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引用次数: 0

摘要

我们研究了在移动用户向基站发送飞行员的环境下,从一比特量化观测预测信道系数的问题。首先,我们提出了一个由两个阶段组成的预测算法。第一阶段的目的是重建高分辨率(预量化)接收信号。第二阶段,然后预测通道系数从这个重建的信号。该算法的一个缺点是需要信道统计的某些秒矩。在高分辨率(无量化)观测的情况下,最近引入的一种基于神经网络的方法即使不使用二阶统计量也能够预测通道。所提出的两阶段算法的低信噪比公式促使我们在位量化的情况下也采用基于神经网络的方法。数值仿真验证了该方法的有效性。我们观察到获得的信道预测器可以与使用二阶统计量的算法竞争。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One-Bit Quantized Channel Prediction with Neural Networks
We study the problem of predicting channel coefficients from one-bit quantized observations in an environment of a moving user who sends pilots to a base station. To start with, we propose a prediction algorithm which consists of two stages. The first stage aims at reconstructing the high-resolution (pre-quantization) receive signal. The second stage then predicts channel coefficients from this reconstructed signal. A drawback of this algorithm is that certain second moments of the channel statistics are required. In case of high-resolution (no quantization) observations, a recently introduced neural network based approach was able to predict channels even without the use of second order statistics. A low-SNR formulation of the proposed two stage algorithm motivates us to employ the neural network based method also in the case of one-bit quantization. Numerical simulations demonstrate the validity of this approach. We observe that the obtained channel predictor can compete with the algorithm that makes use of the second order statistics.
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