状态空间递推最小二乘的收敛性分析

M.B. Malik, E. Mohammad, M. A. Maud
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引用次数: 2

摘要

状态空间递归最小二乘(SSRLS)是递归最小二乘自适应滤波器家族的新成员。从回顾SSRLS开始,我们证明了这种时变滤波器收敛为线性时不变滤波器。以观测噪声为输入,讨论了估计器的BIBO(有界输入,有界输出)稳定性。我们对SSRLS及其稳态对应物进行了收敛性分析。我们的讨论包括均值收敛、均方误差、均方偏差和学习曲线。这一发展对于完全理解SSRLS是必要的,以帮助设计人员在高级应用和分析中充分利用滤波器。
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Convergence analysis of state-space recursive least-squares
State-space recursive least-squares (SSRLS) is a new addition to the family of RLS adaptive filters. Beginning with a review of SSRLS, we show that this time-varying filter converges to an LTI (linear time invariant) filter. With observation noise as the input, BIBO (bounded input, bounded output) stability of the estimator is discussed next. We carry out the convergence analysis of SSRLS and its steady-state counterpart. Our discussion includes convergence in mean, mean-square error, mean-square deviation and learning curves. This development is imperative for a complete understanding of SSRLS to aid a designer to make the best use of the filter in advanced applications and analysis.
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