Stochastic maximum likelihood methods for semi-blind channel equalization

H. A. Çırpan, M. Tsatsanis
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引用次数: 14

Abstract

A blind stochastic maximum likelihood channel equalization algorithm is adapted to incorporate a known training sequence as part of the transmitted frame. A hidden Markov model formulation of the problem is introduced and the Baum-Welch (1970) algorithm is modified to provide a computationally efficient solution to the resulting optimization problem. The proposed method provides a unified framework for semi-blind channel estimation, which exploits information from both the training and the blind part of the received data record. The performance of the maximum likelihood estimator is studied, based on the evaluation of Cramer-Rao bounds. Finally, some simulation results are presented.
半盲信道均衡的随机极大似然方法
采用盲随机最大似然信道均衡算法,将已知的训练序列作为传输帧的一部分。引入了该问题的隐马尔可夫模型公式,并修改了Baum-Welch(1970)算法,以提供计算效率高的解决方案。该方法为半盲信道估计提供了一个统一的框架,同时利用了接收数据记录的训练部分和盲部分的信息。基于Cramer-Rao界的估计,研究了极大似然估计的性能。最后给出了仿真结果。
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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