Blind identification of time-varying channels using second-order statistics

M. Tsatsanis, G. Giannakis
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引用次数: 8

Abstract

Novel linear algorithms are proposed in this paper for estimating symbol spaced, time-varying FIR communication channels, without resorting to higher-order statistics. The proposed methods are applicable to channels where each time-varying tap coefficient can be described (with respect to time) as a linear combination of a finite number of basis functions. Examples of such channels include periodically varying ones or channels locally modeled by a truncated Taylor series or wavelet expansion. It is shown that the estimation of the basis expansion parameters is equivalent to estimating the parameters of an FIR single-input-many-outputs (SIMO) system. By exploiting this equivalence, a number of different blind subspace methods are applicable, which have been originally developed in the context of SIMO systems. Identifiability issues are investigated and some illustrative simulations are presented.
基于二阶统计量的时变信道盲识别
本文提出了一种新的线性算法来估计符号间隔时变FIR通信信道,而不需要使用高阶统计量。所提出的方法适用于信道,其中每个时变抽头系数可以(相对于时间)描述为有限数量的基函数的线性组合。这种通道的例子包括周期性变化的通道或由截断泰勒级数或小波展开局部建模的通道。结果表明,基展开参数的估计等价于FIR单输入多输出系统参数的估计。通过利用这种等价性,许多不同的盲子空间方法都是适用的,这些方法最初是在SIMO系统的背景下开发的。研究了可识别性问题,并给出了一些说明性仿真。
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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