Artículos de revistas
Probabilistic invariant sets for Closed-Loop re-identification
Fecha
2016-06Registro en:
Anderson, Alejandro Luis; Ferramosca, Antonio; González, Alejandro Hernán; Kofman, Ernesto Javier; Probabilistic invariant sets for Closed-Loop re-identification; Institute of Electrical and Electronics Engineers; IEEE Latin America Transactions; 14; 6; 6-2016; 2744-2751
1548-0992
CONICET Digital
CONICET
Autor
Anderson, Alejandro Luis
Ferramosca, Antonio
González, Alejandro Hernán
Kofman, Ernesto Javier
Resumen
Recently, a Model Predictive Control (MPC) suitable for closed-loop re-identification was proposed, which solves the potential conflict between the persistent excitation of the system and the stabilization of the closed-loop by extending the equilibrium-point-stability to the invariant-set-stability. The proposed objective set, however, derives in large regions that contain conservatively the excited system evolution. In this work, based on the concept of probabilistic invariant sets, the controller target sets are substantially reduced ensuring the invariance with a sufficiently large probability (instead of deterministically), giving the resulting MPC controller the necessary flexibility to be applied in a wide range of systems.