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Variational Bayesian blind and semiblind channel estimation

机译:变分贝叶斯盲和半盲信道估计

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Blind and semiblind channel estimation is a topic that enjoyed explosive developments throughout the nineties, and then came to a standstill, probably because of perceived unsatisfactory performance. Blind channel estimation techniques were developed and usually evaluated for a given channel realization, i.e. with a deterministic channel model. Such blind channel estimates, especially those based on subspaces in the data, are often only partial and ill-conditioned. On the other hand, in wireless communications the channel is typically modeled as Rayleigh fading, i.e. with a Gaussian (prior) distribution expressing variances of and correlations between channel coefficients. In recent years, such prior information on the channel has started to get exploited in pilot-based channel estimation, since often the pure pilot-based (deterministic) channel estimate is of limited quality due to limited pilots. In this paper we explore a Bayesian approach to (semi-)blind channel estimation, exploiting a priori information on fading channels. In the case of deterministic unknown input symbols, it suffices to augment the classical blind (quadratic) channel criterion with a quadratic criterion reflecting the Rayleigh fading prior. In the case of a Gaussian symbol model the blind criterion is more involved. The joint ML/MAP estimation of channels, deterministic unknown symbols, and channel profile parameters can be conveniently carried out using Variational Bayesian techniques. Variational Bayesian techniques correspond to alternating maximization of a likelihood w.r.t. subsets of parameters, but taking into account the estimation errors on the other parameters. To simplify exposition, we elaborate the details for the case of MIMO OFDM systems.
机译:盲和半盲信道估计是一个在整个90年代都经历了爆炸性发展,然后陷入停顿的话题,这可能是因为人们认为性能不理想。开发了盲信道估计技术,并且通常针对给定的信道实现来对盲信道估计技术进行评估,即使用确定性信道模型。这样的盲信道估计,尤其是那些基于数据中子空间的盲信道估计,通常只是局部的和病态的。另一方面,在无线通信中,通常将信道建模为瑞利衰落,即具有表示信道系数的方差和相关性的高斯(先验)分布。近年来,这种基于信道的先验信息已开始在基于导频的信道估计中得到利用,因为由于导频有限,纯基于导频的(确定性)信道估计常常质量有限。在本文中,我们探索了贝叶斯方法(半)盲信道估计,利用了衰落信道上的先验信息。在确定性未知输入符号的情况下,足以用反映瑞利衰落先验的二次标准来扩充经典盲(二次)信道标准。在高斯符号模型的情况下,盲准则更多地被涉及。信道,确定性未知符号和信道配置文件参数的联合ML / MAP估计可以使用变分贝叶斯技术方便地进行。变分贝叶斯技术对应于概率w.r.t的交替最大化。参数的子集,但要考虑其他参数的估计误差。为了简化说明,我们详细介绍了MIMO OFDM系统的情况。

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