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On the use of first-order autoregressive modeling for Rayleigh flat fading channel estimation with Kalman filter

机译:一阶自回归模型在卡尔曼滤波器瑞利平坦衰落信道估计中的应用

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摘要

This letter deals with the estimation of a flat fading Rayleigh channel with Jakes's spectrum. The channel is approximated by a first-order autoregressive (AR(1)) model and tracked by a Kalman filter (KF). The common method used in the literature to estimate the parameter of the AR(1) model is based on a correlation matching (CM) criterion. However, for slow fading variations, another criterion based on the mini mization of the asymptotic variance (MAV) of the KF is more appropriate, as already observed in few works (Barbieri et al., 2009 [1]). This letter gives analytic justification by providing approximated closed-form expressions of the estimation variance for the CM and MAV criteria, and of the optimal AR(1) parameter.
机译:这封信涉及利用Jakes频谱估算平坦衰落瑞利信道的情况。该通道由一阶自回归(AR(1))模型近似,并由卡尔曼滤波器(KF)跟踪。文献中用于估计AR(1)模型参数的常用方法是基于相关匹配(CM)准则的。然而,对于缓慢的衰落变化,基于KF渐近方差(MAV)最小化的另一条准则更为合适,正如在少数工作中已经观察到的那样(Barbieri等,2009 [1])。这封信通过提供CM和MAV标准的估计方差以及最佳AR(1)参数的近似闭合形式表达式,给出了分析理由。

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