Distributions of soft-decision symbols using channel-estimation based equalizers

S. H. Huang, T. C. Yang, J. Tsao
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引用次数: 2

Abstract

For communications, the estimated symbols (the output of a channel equalizer) is sometimes referred to as soft-estimate of the (transmitted) symbols. The mean squared Euclidian distribution between the soft symbol and true symbols yields the mean squared symbol estimation error, sometimes referred to as the soft-decision error. The soft symbol distribution is a key measure of the equalizer performance and is used for calculating the probability of bit errors. In this paper, we apply a channel estimation (CE) based decision feedback equalizer (DFE) to at sea data. For CE-DFE, we assume channel estimation in the training mode to avoid the error feedback problem that often occurs in real data processing. The reason is to study the relationship between equalizer performance and channel estimation performance without the error feedback problem. Specifically, we investigate the relation between the soft-decision error and signal prediction error; the latter is used as a measure for the channel estimation error. For channel estimation, we used various algorithms based on signal subspace tracking as well as conventional full space tracking. For each channel estimation algorithm, we estimate the symbol distribution. We find the distributions of the soft-estimate symbols are well fitted by a Gaussian normal distribution, with a variance predictable by the signal prediction error.
使用基于信道估计的均衡器的软判决符号分布
对于通信,估计的符号(信道均衡器的输出)有时被称为(传输)符号的软估计。软符号和真符号之间的均方欧几里德分布产生均方符号估计误差,有时称为软决策误差。软符号分布是衡量均衡器性能的关键指标,用于计算误码概率。本文将基于信道估计(CE)的决策反馈均衡器(DFE)应用于海上数据。对于CE-DFE,我们在训练模式下假设信道估计,以避免在实际数据处理中经常出现的误差反馈问题。目的是研究在不存在误差反馈问题的情况下均衡器性能与信道估计性能之间的关系。具体来说,我们研究了软判决误差与信号预测误差之间的关系;后者被用作信道估计误差的度量。对于信道估计,我们使用了基于信号子空间跟踪和传统全空间跟踪的各种算法。对于每种信道估计算法,我们估计了符号分布。我们发现软估计符号的分布很好地拟合为高斯正态分布,方差可由信号预测误差预测。
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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