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Blind identification using channel order estimation: subspace approach based on CGM

机译:基于通道阶估计的盲识别:基于CGM的子空间方法

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Subspace methods (SSM) are an effective approach for blind identification. However, these methods have two major disadvantages: i) they require a large amount of computation for the eigen-value decomposition (EVD) and the singular-value decomposition (SVD), what is more, ii) they require the prior knowledge of accurate channel order. In this paper, we discuss a new algorithm for blind identification using the property of conjugate gradient method (CGM) and using the conception of principal component analysis (PCA), which is based on the orthogonality between the subspaces spanned by the column vectors of the impulse response matrix (the impulse response subspace) and the noise subspace. The new algorithm does not need calculation of both EVD and SVD, and still more the prior knowledge of accurate channel order is unnecessary. Furthermore, the new algorithm has computations O(m2) where m is the data vector length. We show the effectiveness of the proposed method by numerical example.
机译:子空间方法(SSM)是一种有效的盲目识别方法。但是,这些方法有两个主要缺点:i)他们需要进行大量的特征值分解(EVD)和奇异值分解(SVD)计算,并且ii)他们需要先验知识频道顺序。在本文中,我们基于共轭梯度法(CGM)的属性和主成分分析(PCA)的概念,讨论了一种新的盲识别算法,该算法基于子空间之间的正交性,该子空间由列向量的列向量构成脉冲响应矩阵(脉冲响应子空间)和噪声子空间。新算法不需要计算EVD和SVD,并且更不需要精确的信道顺序的先验知识。此外,新算法具有计算O(m 2 ),其中m是数据矢量长度。通过数值算例表明了该方法的有效性。

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