一种抑制盲调制分类中信道失真的算法

Gaurav Jyoti Phukan, P. Bora
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引用次数: 2

摘要

本文提出了一种异步接收场景下数字调制方案的分类方法。提出的分类是基于似然原则和没有先验知识的渠道响应。提出了在非合作场景下,当信号存在信道失真和增益未知时,采用传统的决策定向最小均方算法进行盲信道估计。LMS算法的收敛特性与调制相关,在选择最佳均衡器后,根据似然原理对调制分类进行最终决策。实验结果与最优分类器的性能进行了比较。概述了进一步改进的范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An algorithm to mitigate channel distortion in blind modulation classification
This paper presents a method for classification of digital modulation schemes in an asynchronous reception scenario. The proposed classification is based on likelihood principles and without prior knowledge of channel response. We propose blind channel estimation in non-cooperative scenario using conventional Decision Directed Least Mean Square algorithm while the signal is subjected to channel distortion and unknown gain. Convergence characteristics of the LMS algorithm is modulation dependent and after choosing the best equalizer, the final decision for Modulation Classification is made by likelihood principles. Experimental results are presented to compare the performance with the optimal classifier. The scope for further improvement is outlined.
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