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Spectrum estimation in frequency-domain by subspace and regularization-based algorithms: A survey

机译:子空间和基于正则化的算法在频域中的频谱估计:一项调查

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In this survey article, we study methods to identify multi-input/multi-output, discrete-time, linear time-invariant systems from power spectrum measurements. First, we examine subspace-based identification algorithms. A hindrance to these methods is splitting of two invariant spaces generated by causal and anti-causal eigenvalues in order to determine model order. Next, we study model order selection criteria based on the regularized nuclear norm and the regularized and reweighted nuclear norm heuristics. The latter heuristic, formulated in a different way, is used to ensure positivity of the spectrum estimate delivered by subspace identification algorithms. A numerical example illustrates properties of the regularized and reweighted nuclear norm heuristic.
机译:在这篇调查文章中,我们研究了从功率谱测量中识别多输入/多输出,离散时间,线性时不变系统的方法。首先,我们研究基于子空间的识别算法。这些方法的一个障碍是将因果特征值和反因果特征值生成的两个不变空间分开,以确定模型顺序。接下来,我们基于正则化核规范以及正则化和加权核规范启发式方法研究模型订单选择标准。后者的启发式方法以不同的方式制定,用于确保子空间识别算法传递的频谱估计值的正性。一个数值示例说明了正则化和重新加权的核规范启发式的性质。

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