info:eu-repo/semantics/article
Discrete-time MPC for switched systems with applications to biomedical problems
Fecha
2020-06Registro en:
Anderson, Alejandro Luis; González, Alejandro Hernán; Ferramosca, Antonio; Hernandez Vargas, Esteban Abelardo; Discrete-time MPC for switched systems with applications to biomedical problems; Cornell University; arXiv; 6-2020; 1-22
2331-8422
CONICET Digital
CONICET
Autor
Anderson, Alejandro Luis
González, Alejandro Hernán
Ferramosca, Antonio
Hernandez Vargas, Esteban Abelardo
Resumen
Switched systems in which the manipulated control action is the time-dependingswitching signal describe many engineering problems, mainly related to biomedical applications. In such a context, to control the system means to select an autonomous system - at each time step - among a given finite family. Even when this selection can be done by solving a Dynamic Programming (DP) problem, such a solution is often difficult to apply, and state/control constraints cannot be explicitly considered. In this work a new set-based Model Predictive Control (MPC) strategy is proposed to handle switched systems in a tractable form. The optimization problem at the core of the MPC formulation consists in an easy-to-solve mixed-integer optimization problem, whose solution is applied in a receding horizon way. Two biomedical applications are simulated to test the controller: (i) the drug schedule to attenuate the effect of viralmutation and drugs resistance on the viral load, and (ii) the drug schedule for Triple Negative breast cancer treatment. The numerical results suggest that the proposed strategy outperform the schedule for available treatments.