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Sparse and Passive Reduced-Order Interconnect Modeling by Eigenspace Method

机译:基于特征空间法的稀疏和被动降阶互连建模

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摘要

The passive and sparse reduced-order modeling of a RLC network is presented, where eigenvalues and eigenvectors of the original network are used, and thus the obtained macromodel is more accurate than that provided by the Krylov subspace methods or TBR procedures for a class of circuits. Furthermore, the proposed method is applied to low pass filtering of a reduced-order model produced by these methods without breaking the passivity condition. Therefore, the proposed eigenspace method is not only a reduced-order macromodeling method, but also is embedded in other methods enhancing their performances.
机译:该文给出了RLC网络的被动和稀疏降阶建模方法,其中使用了原始网络的特征值和特征向量,因此所得到的宏模型比Krylov子空间方法或TBR程序提供的宏模型更准确。此外,所提方法在不破坏无源性条件的情况下,应用于由这些方法产生的降阶模型的低通滤波。因此,所提出的特征空间方法不仅是一种降阶宏观建模方法,而且嵌入到其他方法中,增强了其性能。

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