RLS solution for the adaptive recursive filter

E. A. Soliet
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引用次数: 1

Abstract

The recursive least square (RLS) algorithm is insensitive to the dispersions of the correlation matrix. Consequently, the usage of the RLS algorithm to update the adaptive recursive filter coefficients are attractive for the system modeling and identification fields. In this paper, an error function RLS (EFRLS) algorithm is derived for the adaptive recursive filter. Furthermore, a scaled version of the EFRLS algorithm is proposed where the computation complexity is significantly reduced. The scaled EFRLS algorithm can be realized in real time using the available digital signal processors. The convergence to the optimal solution of both the EFRLS algorithm and its scaled version is ensured while the general RLS algorithm fails to converge to the optimal solution for the multimodal performance criterion.
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自适应递归滤波器的RLS解
递推最小二乘(RLS)算法对相关矩阵的色散不敏感。因此,使用RLS算法更新自适应递归滤波器系数在系统建模和识别领域具有很大的吸引力。针对自适应递归滤波器,提出了一种误差函数RLS (EFRLS)算法。在此基础上,提出了缩放后的EFRLS算法,大大降低了算法的计算复杂度。利用现有的数字信号处理器可以实时实现缩放后的EFRLS算法。对于多模态性能准则,一般RLS算法不能收敛到最优解,而EFRLS算法及其缩放版本都能保证收敛到最优解。
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