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A moment-matching scheme for the passivity-preserving model order reduction of indefinite descriptor systems with possible polynomial parts

机译:具有不定多项式部分的不确定描述符系统的无源保持模型阶约的矩匹配方案

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Passivity-preserving model order reduction (MOR) of descriptor systems (DSs) is highly desired in the simulation of VLSI interconnects and on-chip passives. One popular method is PRIMA, a Krylov-subspace projection approach which preserves the passivity of positive semidefinite (PSD) structured DSs. However, system passivity is not guaranteed by PRIMA when the system is indefinite. Furthermore, the possible polynomial parts of singular systems are normally not captured. For indefinite DSs, positive-real balanced truncation (PRBT) can generate passive reduced-order models (ROMs), whose main bottleneck lies in solving the dual expensive generalized algebraic Riccati equations (GAREs). This paper presents a novel moment-matching MOR for indefinite DSs, which preserves both the system passivity and, if present, also the improper polynomial part. This method only requires solving one GARE, therefore it is cheaper than existing PRBT schemes. On the other hand, the proposed algorithm is capable of preserving the passivity of indefinite DSs, which is not guaranteed by traditional moment-matching MORs. Examples are finally presented showing that our method is superior to PRIMA in terms of accuracy.
机译:在VLSI互连和片上无源器件的仿真中,非常需要描述符系统(DS)的保持钝性的模型降阶(MOR)。一种流行的方法是PRIMA,它是一种Krylov子空间投影方法,可以保留正半定(PSD)结构DS的无源性。但是,当系统不确定时,PRIMA不能保证系统的无源性。此外,通常不捕获奇异系统的可能多项式部分。对于不确定的DS,正实平衡截断(PRBT)可以生成被动降阶模型(ROM),其主要瓶颈在于求解对偶昂贵的广义代数Riccati方程(GARE)。本文提出了一种适用于不确定DS的新型矩量匹配MOR,它既保留了系统的无源性,又保留了不适当的多项式部分。该方法只需要求解一个GARE,因此比现有的PRBT方案便宜。另一方面,提出的算法能够保留不确定DS的无源性,而传统的矩匹配MOR不能保证这种无源性。最后给出的例子表明,我们的方法在准确性方面优于PRIMA。

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