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9 - Block structure-preserving reduction for RLCK circuits

Published online by Cambridge University Press:  19 January 2010

Sheldon Tan
Affiliation:
University of California, Riverside
Lei He
Affiliation:
University of California, Los Angeles
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Summary

Introduction

In the chapter, we introduce another structure-preserving model order reduction method, which extends the SPRIM method [37] to more general block forms while the 2q moment-matching property is still preserved. The SPRIM method partitions the state matrix in the MNA (modified nodal analysis) form into natural 2 × 2 block matrices, i.e., conductance, capacitance, inductance, and adjacent matrices. Accordingly, the projection matrix is partitioned. As a result, SPRIM matches twice the moments of the models by using the projection matrix given by PRIMA. The reduced models also preserve the structural properties of the original models like symmetry (reciprocity). This idea has been extended to deal with more partitions by block structure-preserving model order reduction (BSMOR) [136], as shown in Chapter 8 to further exploit the regularity of the many parasitic networks. It was shown that by introducing more partitions, more poles are matched and this leads to more accurate order-reduced models [138].

However, the BSMOR method simply introduce more partitions or blocks; it does not truly preserve the circuit structures for general RLCK circuits for different input sources (voltages or currents). The reduced model does not match the 2q moments of the original models, as SPRIM does.

In this chapter, we first show theoretically that structure-preserving model order reduction can be applied to RLCK admittance networks, which are driven by voltage sources and requires partitioning of the original MNA circuit matrix into 2 × 2 block matrices.

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Publisher: Cambridge University Press
Print publication year: 2007

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