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Fast singular-value decomposition of Loewner matrices for state-space macromodeling

机译:状态空间宏观型宽矩阵矩阵的快速奇异值分解

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摘要

Computation of a singular-value decomposition (SVD) of a Loewner matrix is an essential step in several frequency-domain macromodeling algorithms. When the data set is large, the computational cost of this step is prohibitive. We describe a fast algorithm that avoids explicitly forming the Loewner matrix. Instead, it exploits the matrix's structure and rapid decay of singular values in typical applications to compute only the dominant singular values and corresponding singular vectors. A robust stopping criterion ensures accurate results up to a given tolerance. Computation times of less than two minutes are reported for matrices with as many as 10 rows and columns.
机译:Loewner矩阵的奇异值分解(SVD)的计算是若干频域Macromodeling算法中的基本步骤。当数据集很大时,该步骤的计算成本是禁止的。我们描述了一种快速算法,避免了显式形成Loewner矩阵。相反,它利用矩阵的结构和典型应用中的奇异值衰减,仅计算主导奇异值和相应的奇异矢量。强大的停止标准确保准确的结果达到给定的公差。报告具有多达10行和列的矩阵的计算时间。

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