Antonio Fazzi , Nicola Guglielmi , Ivan Markovsky , Konstantin Usevich
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引用次数: 1
Abstract
We consider the problem of detecting the common dynamic among several observed signals. It has been shown in (Markovsky et al., 2019) that the problem is equivalent to a generalization of the classical Hankel low-rank approximation to the case of multiple rank constraints. We propose an optimization method based on the integration of ordinary differential equations describing a descent dynamic for a suitable functional to be minimized. We show how the proposed algorithm improves the numerical solutions computed by existing subspace methods which solve the same problem.
我们考虑了多个观测信号之间的共同动态检测问题。在(Markovsky et al., 2019)中已经表明,该问题相当于对多秩约束情况下的经典Hankel低秩近似的推广。我们提出了一种基于描述下降动力学的常微分方程的积分的优化方法,用于最小化合适的泛函。我们展示了所提出的算法如何改进现有子空间方法计算的数值解,这些方法解决了相同的问题。
期刊介绍:
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