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Prediction in LMS-type adaptive algorithms for smoothly time varying environments

机译:LMS型自适应算法在平稳时变环境中的预测

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摘要

The aim of this correspondence is to improve the performance of the least mean square (LMS) and normalized-LMS (NLMS) adaptive algorithms in tracking of time-varying models. A new procedure for estimation of weight increments for including in the LMS-type adaptive algorithms is proposed. This procedure applies a simple smoothing on the increment of the estimated weights to estimate the speed of weights. The estimated speeds are then used to predict the weights for the next iteration. The efficiency of the algorithm is confirmed by simulation results. The algorithm has a very low order of arithmetic complexity. Moreover, this procedure could be combined with a wide class of adaptive filters (e.g., RLS, gradient lattice algorithm, etc.) to improve their behaviors. The proposed algorithm is obtained by simplifying a Kalman filter. To this end, a Markov model of second order is considered for the weight vector. This model shows that the estimation of parameter increments inferred from the predicted parameters improves the tracking performance.
机译:该对应关系的目的是在跟踪时变模型中提高最小均方(LMS)和归一化LMS(NLMS)自适应算法的性能。提出了一种新的估计权重增量的方法,以包括在LMS型自适应算法中。此过程对估计的权重的增量进行简单的平滑处理,以估计权重的速度。然后,将估计的速度用于预测下一次迭代的权重。仿真结果证实了该算法的有效性。该算法的算术复杂度非常低。此外,该过程可以与多种自适应滤波器(例如,RLS,梯度晶格算法等)组合以改善其行为。通过简化卡尔曼滤波器获得了所提出的算法。为此,权重向量考虑了二阶马尔可夫模型。该模型表明,从预测参数推断出的参数增量估计可以提高跟踪性能。

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