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Enforcing Eigenvector Smoothness for a Compact DFT-Based Polynomial Eigenvalue Decomposition

机译:强制执行基于Compact DFT的多项式特征值分解的特征向量平滑度

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A variety of algorithms have been developed to compute an approximate polynomial matrix eigenvalue decomposition (PEVD). As an extension of the ordinary EVD to polynomial matrices, the PEVD will generate paraunitary matrices that diagonalise a parahermitian matrix. While iterative PEVD algorithms that compute a decomposition in the time domain have received a great deal of focus and algorithmic improvements in recent years, there has been less research in the field of frequency-based PEVD algorithms. Such algorithms have shown promise for the decomposition of problems of finite order, but the state-of-the-art requires a priori knowledge of the length of the polynomial matrices required in the decomposition. This paper presents a novel frequency-based PEVD algorithm which can compute an accurate decomposition without requiring this information. Also presented is a new metric for measuring a function's smoothness on the unit circle, which is utilised within the algorithm to maximise eigenvector smoothness for a compact decomposition, such that the polynomial eigenvectors have low order. We demonstrate through the use of simulations that the algorithm can achieve superior levels of decomposition accuracy to a state-of-the-art frequency-based method.
机译:已经开发了各种算法来计算近似多项式矩阵特征值分解(PEVD)。作为普通EVD对多项式矩阵的延伸,PEVD将产生垂直矩阵,该矩阵对角度呈现球丸矩阵。虽然在时域计算分解的迭代PEVD算法已经获得了近年来的大量焦点和算法改进,但在基于频率的PEVD算法领域已经较少。这样的算法已经显示了有限顺序问题的分解的希望,但是最先进的算法需要先验的经验知识的分解中所需的多项式矩阵的长度。本文提出了一种新的基于频率的PEVD算法,可以计算精确的分解而不需要这些信息。还提出了一种用于测量单位圆上的功能的光滑度的新度量,该函数在算法内使用,以使特征传感器平滑度最大化,使多项式特征向量具有低阶。我们通过使用仿真来证明算法可以实现卓越的分解精度,以实现最先进的基于频率的方法。

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