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CDKF approach for estimating a static parameter of carrier frequency offset based on nonlinear measurement equations in OFDM systems

机译:基于OFDM系统非线性测量方程的载波频偏静态参数估计的CDKF方法。

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摘要

"Central difference Kalman filtering (CDKF)" is proposed as a new state of the art approach for carrier frequency offset estimation in orthogonal frequency division multiplexing systems. The parameter of interest to be estimated in this problem is a static value rather than a dynamically varying parameter. Therefore, classical approaches (e.g., maximum likelihood method or best linear unbiased estimator) might be more pertinent than Bayesian approaches if it is assumed to be a deterministic value. Nonetheless, it is shown and justified that a recently developed extended Kalman variant, i.e., CDKF, outperforms previously proposed methods in terms of mean squared error with efficient processing speed. Particularly, it is shown that CDKF outperforms recently proposed Gaussian particle filter for this one-dimensional static parameter estimation problem.
机译:提出“中心差卡尔曼滤波(CDKF)”作为正交频分复用系统中载波频率偏移估计的最新技术。在此问题中要估计的感兴趣参数是静态值,而不是动态变化的参数。因此,如果假定经典方法(例如,最大似然方法或最佳线性无偏估计量)是确定性值,那么它可能比贝叶斯方法更相关。然而,已经证明并证明最近开发的扩展卡尔曼变体,即CDKF,在均方误差和有效处理速度方面优于先前提出的方法。特别是,对于该一维静态参数估计问题,CDKF的性能优于最近提出的高斯粒子滤波器。

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