An Adaptive Pole-Matching Method for Interpolating Reduced-Order Models

08/02/2019
by   Yao Yue, et al.
0

An adaptive parametric reduced-order modeling method based on interpolating poles of reduced-order models is proposed in this paper. To guarantee correct interpolation, a pole-matching process is conducted to determine which poles of two reduced-order models correspond to the same parametric pole. First, the pole-matching in the scenario of parameter perturbation is discussed. It is formulated as a combinatorial optimization problem and solved by a branch and bound algorithm. Then, an adaptive framework is proposed to build repository ROMs at adaptively chosen parameter values, which well represent the parameter domain of interest. To achieve this, we propose techniques including a predictor-corrector strategy and an adaptive refinement strategy, which enable us to use larger steps to explore the parameter domain of interest with good accuracy. The framework also consists of regression as an optional post-processing phase to further reduce the data storage. The advantages over other parametric reduced-order modeling approaches are, e.g., compatibility with any model order reduction method, constant size of the parametric reduced-order model with respect to the number of parameters, and capability to deal with complicated parameter dependency.

READ FULL TEXT

page 1

page 8

research
03/05/2020

Adaptive Interpolatory MOR by Learning the Error Estimator in the Parameter Domain

Interpolatory methods offer a powerful framework for generating reduced-...
research
03/10/2020

Balanced truncation for parametric linear systems using interpolation of Gramians: a comparison of algebraic and geometric approaches

When balanced truncation is used for model order reduction, one has to s...
research
09/12/2022

Structured Optimization-Based Model Order Reduction for Parametric Systems

We develop an optimization-based algorithm for parametric model order re...
research
09/08/2022

emgr – EMpirical GRamian Framework Version 5.99

Version 5.99 of the empirical Gramian framework – "emgr" – completes a d...
research
05/28/2019

Parametric context adaptive Laplace distribution for multimedia compression

Data compression often subtracts predictor and encodes the difference (r...
research
06/17/2022

Towards computing complete parameter ranges in parametric modeling

In parametric design, the geometric model is edited by changing relevant...

Please sign up or login with your details

Forgot password? Click here to reset