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Optimal tracking of time-varying channels: a frequency domain approach for known and new algorithms

机译:时变信道的最佳跟踪:已知算法和新算法的频域方法

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In this paper, we developed a systematic frequency domain approach to analyze adaptive tracking algorithms for fast time-varying channels. The analysis is performed with the help of two new concepts, a tracking filter and a tracking error filter, which are used to calculate the mean square identification error (MSIE). First, we analyze existing algorithms, the least mean squares (LMS) algorithm, the exponential windowed recursive least squares (EW-RLS) algorithm and the rectangular windowed recursive least squares (RW-RLS) algorithm. The equivalence of the three algorithms is demonstrated by employing the frequency domain method. A unified expression for the MSIE of all three algorithms is derived. Secondly, we use the frequency domain analysis method to develop an optimal windowed recursive least squares (OW-RLS) algorithm. We derive the expression for the MSIE of an arbitrary windowed RLS algorithm and optimize the window shape to minimize the MSIE. Compared with an exponential window having an optimized forgetting factor, an optimal window results in a significant improvement in the h MSIE. Thirdly, we propose two types of robust windows, the average robust window and the minimax robust window. The RLS algorithms designed with these windows have near-optimal performance, but do not require detailed statistics of the channel.
机译:在本文中,我们开发了一种系统的频域方法来分析快速时变信道的自适应跟踪算法。该分析是在两个新概念的帮助下进行的,即跟踪滤波器和跟踪误差滤波器,用于计算均方差识别误差(MSIE)。首先,我们分析现有算法,最小均方(LMS)算法,指数窗递归最小二乘(EW-RLS)算法和矩形窗递归最小二乘(RW-RLS)算法。通过采用频域方法证明了这三种算法的等效性。推导了所有三种算法的MSIE统一表达式。其次,我们使用频域分析方法来开发一种最优的窗口递归最小二乘(OW-RLS)算法。我们推导了任意窗口RLS算法的MSIE表达式,并优化了窗口形状以最小化MSIE。与具有最佳遗忘因子的指数窗口相比,最佳窗口可以显着改善h MSIE。第三,我们提出两种类型的鲁棒窗口,平均鲁棒窗口和最小最大鲁棒窗口。使用这些窗口设计的RLS算法具有接近最佳的性能,但不需要详细的通道统计信息。

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