Data-driven and low-rank implementations of Balanced Singular Perturbation Approximation

03/09/2023
by   Björn Liljegren-Sailer, et al.
0

Balanced Singular Perturbation Approximation (SPA) is a model order reduction method for linear time-invariant systems that guarantees asymptotic stability and for which there exists an a priori error bound. In that respect, it is similar to Balanced Truncation (BT). However, the reduced models obtained by SPA generally introduce better approximation in the lower frequency range and near steady-states, whereas BT is better suited for the higher frequency range. Even so, independently of the frequency range of interest, BT and its variants are more often applied in practice, since there exist more efficient algorithmic realizations thereof. In this paper, we aim at closing this practically-relevant gap for SPA. We propose two novel and efficient algorithms that are adapted for different settings. Firstly, we derive a low-rank implementation of SPA that is applicable in the large-scale setting. Secondly, a data-driven reinterpretation of the method is proposed that only requires input-output data, and thus, is realization-free. A main tool for our derivations is the reciprocal transformation, which induces a distinct view on implementing the method. While the reciprocal transformation and the characterization of SPA is not new, its significance for the practical algorithmic realization has been overlooked in the literature. Our proposed algorithms have well-established counterparts for BT, and as such, also a comparable computational complexity. The numerical performance of the two novel implementations is tested for several numerical benchmarks, and comparisons to their counterparts for BT as well as the existing implementations of SPA are made.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/03/2023

A time domain a posteriori error bound for balancing-related model order reduction

The aim in model order reduction is to approximate an input-output map d...
research
06/16/2020

Balanced truncation model reduction for symmetric second order systems – A passivity-based approach

We introduce a model reduction approach for linear time-invariant second...
research
06/14/2018

Non-asymptotic Identification of LTI Systems from a Single Trajectory

We consider the problem of learning a realization for a linear time-inva...
research
02/19/2022

Data-driven approximation and reduction from noisy data in matrix pencil frameworks

This work aims at tackling the problem of learning surrogate models from...
research
01/17/2022

Effective error estimation for model reduction with inhomogeneous initial conditions

A priori error bounds have been derived for different balancing-related ...
research
09/29/2022

On the Input-Output Behavior of a Geothermal Energy Storage: Approximations by Model Order Reduction

In this paper we consider a geothermal energy storage in which the spati...

Please sign up or login with your details

Forgot password? Click here to reset