Title :
Identification and data-driven reduced-order modeling for linear conservative port- and self-adjoint Hamiltonian systems
Author :
Rapisarda, P. ; van der Schaft, Arjan
Author_Institution :
CSPC Group, Univ. of Southampton, Southampton, UK
Abstract :
Given a sufficiently numerous set of vector-exponential trajectories of a conservative port-Hamiltonian system and the supply rate, we compute a corresponding set of state trajectories by factorizing a constant Pick-like matrix. State equations are then obtained by solving a system of linear equations involving the system trajectories and the computed state ones. If a factorization of only a principal submatrix of the Pick matrix is performed, our procedure yields a lower-order conservative port-Hamiltonian model obtained by projection of the full-order one. We also describe a similar approach to identification and model-order reduction for self-adjoint Hamiltonian systems.
Keywords :
identification; linear systems; matrix decomposition; reduced order systems; constant Pick-like matrix factorization; data-driven reduced order modeling; identification; linear conservative port-Hamiltonian system; linear equations; lower-order conservative port-Hamiltonian model; model-order reduction; self-adjoint Hamiltonian systems; state equations; state trajectories; system trajectories; vector exponential trajectories; Mathematical model; Polynomials; Standards; Symmetric matrices; Trajectory; Vectors; behaviors; conservative port-Hamiltonian systems; quadratic differential forms; rank-revealing factorization; self-adjoint Hamiltonian systems;
Conference_Titel :
Decision and Control (CDC), 2013 IEEE 52nd Annual Conference on
Conference_Location :
Firenze
Print_ISBN :
978-1-4673-5714-2
DOI :
10.1109/CDC.2013.6759873