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A Novel RSMI based on Regression and Natural Power Method

机译:基于回归和自然功率法的新型RSMI

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In this paper, we propose a new recursive subspace model identification (RSMI) based on regression and natural power method (NP) which is an array signal processing algorithm with excellent convergence properties. We call this new algorithm as 'R-NP'. The basic idea of the algorithm is to utilize an unstructured least squares linear regression approach at the updating observation vector step and the close relationship between RSMI with NP. This algorithm has simpler procedures than other RSMI algorithms. A numerical example illustrates that R-NP method is efficient and have a better performance in terms of transient behavior with respect to EIVPAST. In this paper, we consider the case where the order of system to be identified is a priori known.
机译:在本文中,我们提出了一种基于回归和自然功率方法(NP)的新递归子空间模型识别(RSMI),其是具有出色收敛性的阵列信号处理算法。我们称之为“R-NP”的新算法。算法的基本思想是在更新观察向量步骤中利用非结构化最小二乘线性回归方法,以及NP的RSMI之间的密切关系。该算法具有比其他RSMI算法更简单的过程。数值示例说明R-NP方法是有效的,并且在eVPAST方面具有更好的瞬态行为。在本文中,我们考虑要识别的系统顺序的情况是已知的先验。

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