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Recursive identification of time-varying systems: Self-tuning and matrix RLS algorithms

机译:时变系统的递归识别:自整定和矩阵RLS算法

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摘要

In this paper, a new parallel adaptive self-tuning recursive least squares (RLS) algorithm for time-varying system identification is first developed. Regularization of the estimation covariance matrix is included to mitigate the effect of non-persisting excitation. The desirable forgetting factor can be self-tuning estimated in both non-regularization and regularization cases. We then propose a new matrix forgetting factor RLS algorithm as an extension of the conventional RLS algorithm and derive the optimal matrix forgetting factor under some reasonable assumptions. Simulations are given which demonstrate that the performance of the proposed self-tuning and matrix RLS algorithms compare favorably with two improved RLS algorithms recently proposed in the literature.
机译:本文首先提出了一种用于时变系统识别的并行自适应自调整递归最小二乘算法。包括估计协方差矩阵的正则化以减轻非持续激励的影响。在非正则化和正则化情况下,理想的遗忘因子可以是自我调整。然后,我们提出了一种新的矩阵遗忘因子RLS算法,作为对传统RLS算法的扩展,并在合理的假设下得出了最佳的矩阵遗忘因子。仿真结果表明,所提出的自整定算法和矩阵RLS算法的性能可以与文献中最近提出的两种改进的RLS算法相比。

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