info:eu-repo/semantics/article
Multiple model approach for robust state estimation in presence of model uncertainty and bounded disturbances
Fecha
2019-06Registro en:
Deniz, Nestor Nahuel; Murillo, Marina Hebe; Sanchez, Guido Marcelo; Genzelis, Lucas Manuel; Giovanini, Leonardo Luis; Multiple model approach for robust state estimation in presence of model uncertainty and bounded disturbances; Cornell University; arXiv; 6-2019
2331-8422
CONICET Digital
CONICET
Autor
Deniz, Nestor Nahuel
Murillo, Marina Hebe
Sanchez, Guido Marcelo
Genzelis, Lucas Manuel
Giovanini, Leonardo Luis
Resumen
In the present work, an optimization-based algorithm for state estimation under model uncertainty and bounded disturbances is presented. In order to avoid to solve a non-convex optimization problem, model and state estimation problems are divided into two convex formulations which are solved within a fixed-point iteration scheme with standard available solvers. Guaranty of robust global stability is given for the case of bounded disturbances and uncertainty, and convergence to the true system and vector state are given for the case of vanishing disturbances.