Abstract
This paper presents theoretical foundations of global Krylov subspace methods for model order reductions. This method is an extension of the standard Krylov subspace method for multiple-inputs multiple-outputs (MIMO) systems. By employing the congruence transformation with global Krylov subspaces, both one-sided Arnoldi and two-sided Lanczos oblique projection methods are explored for both single expansion point and multiple expansion points. In order to further reduce the computational complexity for multiple expansion points, adaptive-order multiple points moment matching algorithms, or the so-called rational Krylov space method, are also studied. Two algorithms, including the adaptive-order rational global Arnoldi (AORGA) algorithm and the adaptive-order global Lanczos (AOGL) algorithm, are developed in detail. Simulations of practical dynamical systems will be conducted to illustrate the feasibility and the efficiency of proposed methods.
| Original language | English |
|---|---|
| Pages (from-to) | 1153-1164 |
| Number of pages | 12 |
| Journal | Mathematics and Computers in Simulation |
| Volume | 79 |
| Issue number | 4 |
| DOIs | |
| State | Published - 15 12 2008 |
Keywords
- Global Krylov subspace
- Model-order reduction
- Multiple points moment matching
- Padé approximations
- Rational Krylov subspace