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On SVD for estimating generalized eigenvalues of singular matrix pencil in noise

机译:基于SVD的奇异矩阵铅笔广义特征值估计。

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Several algorithms for estimating generalized eigenvalues (GEs) of singular matrix pencils perturbed by noise are reviewed. The singular value decomposition (SVD) is explored as the common structure in the three basic algorithms: direct matrix pencil algorithm, pro-ESPRIT, and TLS-ESPRIT. It is shown that several SVD-based steps inherent in the algorithms are equivalent to the first-order approximation. In particular, the Pro-ESPRIT and its variant TLS-Pro-ESPRIT are shown to be equivalent, and the TLS-ESPRIT and its earlier version LS-ESPRIT are shown to be asymptotically equivalent to the first-order approximation. For the problem of estimating superimposed complex exponential signals, the state-space algorithm is shown to be also equivalent to the previous matrix pencil algorithms to the first-order approximation. The second-order perturbation and the threshold phenomenon are illustrated by simulation results based on a damped sinusoidal signal. An improved state-space algorithm is found to be the most robust to noise.
机译:综述了几种估计被噪声扰动的奇异矩阵铅笔的广义特征值的算法。奇异值分解(SVD)是三种基本算法中的常见结构:直接矩阵铅笔算法,pro-ESPRIT和TLS-ESPRIT。结果表明,算法中固有的几个基于SVD的步骤等效于一阶近似。特别地,Pro-ESPRIT及其变体TLS-Pro-ESPRIT被示为等效,并且TLS-ESPRIT及其早期版本LS-ESPRIT被示为渐近等效于一阶近似。对于估计叠加的复杂指数信号的问题,状态空间算法显示为也等效于先前的矩阵笔算法的一阶逼近。通过基于阻尼正弦信号的仿真结果来说明二阶扰动和阈值现象。发现一种改进的状态空间算法对噪声最鲁棒。

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