基于核范数最小化的子空间频谱估计

H. Akçay, S. Türkay
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引用次数: 3

摘要

基于子空间的方法已被有效地用于从噪声频谱样本中估计多输入/多输出线性时不变系统。在这些方法中,一个关键步骤是通过奇异值分解将一些由频谱测量建立的结构化矩阵的因果特征值和非因果特征值相关联的两个不变子空间分裂,以确定模型顺序。这些算法所要求的相对于不变空间的特征值集之间的单位圆的镜像对称性,由于低信噪比、未建模的动态和数据量不足而丢失。因此,模型顺序的选择不是直截了当的。在本文中,我们提出了一种基于正则化核范数优化的鲁棒模型阶数选择方案,并结合最近的子空间算法,该算法使用非均匀间隔的频率和频谱测量。仿真实例表明了该方法对短数据记录下的大振幅噪声的有效性。然后,利用该方法设计了随机道路激励下的线性滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subspace-based spectrum estimation by nuclear norm minimization
Subspace-based methods have been effectively used to estimate multi-input/multi-output, linear-time-invariant systems from noisy spectrum samples. In these methods, a critical step is splitting of two invariant subspaces associated with causal and non-causal eigenvalues of some structured matrices built from spectrum measurements via singular-value decomposition in order to determine model order. Mirror image symmetry with respect to the unit circle between the eigenvalue sets of the invariant spaces, required by these algorithms, is lost due to low signal-to-noise ratio, unmodelled dynamics, and insufficient amount of data. Consequently, the choice of model order is not straightforward. In this paper, we propose a robust model order selection scheme based on regularized nuclear norm optimization in combination with a recent subspace algorithm, which uses non-uniformly spaced, in frequencies, spectrum measurements. A simulation example shows the effectiveness of the proposed scheme to large amplitude noise over short data records. Then, the proposed scheme is used to design a linear-shape filter for random road excitations.
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