Solving matrix nearness problems via Hamiltonian systems, matrix factorization, and optimization

02/05/2022
by   Nicolas Gillis, et al.
0

In these lectures notes, we review our recent works addressing various problems of finding the nearest stable system to an unstable one. After the introduction, we provide some preliminary background, namely, defining Port-Hamiltonian systems and dissipative Hamiltonian systems and their properties, briefly discussing matrix factorizations, and describing the optimization methods that we will use in these notes. In the third chapter, we present our approach to tackle the distance to stability for standard continuous linear time invariant (LTI) systems. The main idea is to rely on the characterization of stable systems as dissipative Hamiltonian systems. We show how this idea can be generalized to compute the nearest Ω-stable matrix, where the eigenvalues of the sought system matrix A are required to belong a rather general set Ω. We also show how these ideas can be used to compute minimal-norm static feedbacks, that is, stabilize a system by choosing a proper input u(t) that linearly depends on x(t) (static-state feedback), or on y(t) (static-output feedback). In the fourth chapter, we present our approach to tackle the distance to passivity. The main idea is to rely on the characterization of stable systems as port-Hamiltonian systems. We also discuss in more details the special case of computing the nearest stable matrix pairs. In the last chapter, we focus on discrete-time LTI systems. Similarly as for the continuous case, we propose a parametrization that allows efficiently compute the nearest stable system (for matrices and matrix pairs), allowing to compute the distance to stability. We show how this idea can be used in data-driven system identification, that is, given a set of input-output pairs, identify the system A.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/13/2022

Characterizing matrices with eigenvalues in an LMI region: A dissipative-Hamiltonian approach

In this paper, we provide a dissipative Hamiltonian (DH) characterizatio...
research
01/24/2020

Distance problems for dissipative Hamiltonian systems and related matrix polynomials

We study the characterization of several distance problems for linear di...
research
07/16/2019

Minimal-norm static feedbacks using dissipative Hamiltonian matrices

In this paper, we characterize the set of static-state feedbacks that st...
research
09/13/2021

Computation of the nearest structured matrix triplet with common null space

We study computational methods for computing the distance to singularity...
research
02/17/2020

Nearest Ω-stable matrix via Riemannian optimization

We study the problem of finding the nearest Ω-stable matrix to a certain...
research
10/29/2020

A passivation algorithm for linear time-invariant systems

We propose and study an algorithm for computing a nearest passive system...
research
03/08/2018

Applicability and interpretation of the deterministic weighted cepstral distance

Quantifying similarity between data objects is an important part of mode...

Please sign up or login with your details

Forgot password? Click here to reset