An adaptive-order rational Arnoldi method for model-order reductions of linear time-invariant systems

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Abstract

This work proposes a model reduction method, the adaptive-order rational Arnoldi (AORA) method, to be applied to large-scale linear systems. It is based on an extension of the classical multi-point Padé approximation (or the so-called multi-point moment matching), using the rational Arnoldi iteration approach. Given a set of predetermined expansion points, an exact expression for the error between the output moment of the original system and that of the reduced-order system, related to each expansion point, is derived first. In each iteration of the proposed adaptive-order rational Arnoldi algorithm, the expansion frequency corresponding to the maximum output moment error will be chosen. Hence, the corresponding reduced-order model yields the greatest improvement in output moments among all reduced-order models of the same order. A detailed theoretical study is described. The proposed method is very appropriate for large-scale electronic systems, including VLSI interconnect models and digital filter designs. Several examples are considered to demonstrate the effectiveness and efficiency of the proposed method.

Keywords

Padé approximations
Rational Arnoldi method
Krylov subspace
Congruence transformation
VLSI interconnects
Digital filter designs

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This work was supported by the National Science Council, Republic of China, under Grants NSC90-2215-E-182-001, NSC90-2213-E-182-017, NSC91-2218-E-182-001, NSC91-2213-E-182-016, and NSC92-2213-E-182-001.