Abstract: A new method for the design of predictive controllers for SISO systems is presented. The proposed technique allows uncertainties and constraints to be concluded in the design of the control law. The goal is to design, at each sample instant, a predictive feedback control law that minimizes a performance measure and guarantees of constraints are satisfied for a set of models that describes the system to be controlled. The predictive controller consists of a finite horizon parametric-optimization problem with an additional constraint over the manipulated variable behavior. This is an end-constraint based approach that ensures the exponential stability of the closed-loop system. The inclusion of this additional constraint, in the on-...
The focus of the paper is the development and application to experimental equipment of fast constrai...
The presence of constraints in the on-line optimization problem solved by model predictive Control a...
Terminal constraints provide for stable predicted trajectories and thus form the basis of predictive...
A new method for the design of predictive controllers for SISO systems is presented. The proposed te...
Two approaches to control system design for constrained systems are studied. The first involves theo...
Most practical control problems are dominated by constraints. Although a rich theory has been develo...
Most practical control problems are dominated by constraints. Although a rich theory has been develo...
Model Predictive Control algorithms minimize on-line and at every sampling point an appropriate obje...
Controlling a system and state constraints is one of the most important problems in control theory, ...
This paper proposes an approach for the robust stabilization of systems controlled by MPC strategies...
A significant number of Model Predictive Control algorithms solve on-line an appropriate optimizatio...
An approach to design feedback controllers for discrete-time, uncertain, linear time-varying systems...
A new method of designing predictive controllers for SISO systems is presented. The controller selec...
A robust model predictive control scheme for a class of constrained norm-bounded uncertain discrete-...
This thesis presents a novel approach to robust controller design. It describes how linear constrain...
The focus of the paper is the development and application to experimental equipment of fast constrai...
The presence of constraints in the on-line optimization problem solved by model predictive Control a...
Terminal constraints provide for stable predicted trajectories and thus form the basis of predictive...
A new method for the design of predictive controllers for SISO systems is presented. The proposed te...
Two approaches to control system design for constrained systems are studied. The first involves theo...
Most practical control problems are dominated by constraints. Although a rich theory has been develo...
Most practical control problems are dominated by constraints. Although a rich theory has been develo...
Model Predictive Control algorithms minimize on-line and at every sampling point an appropriate obje...
Controlling a system and state constraints is one of the most important problems in control theory, ...
This paper proposes an approach for the robust stabilization of systems controlled by MPC strategies...
A significant number of Model Predictive Control algorithms solve on-line an appropriate optimizatio...
An approach to design feedback controllers for discrete-time, uncertain, linear time-varying systems...
A new method of designing predictive controllers for SISO systems is presented. The controller selec...
A robust model predictive control scheme for a class of constrained norm-bounded uncertain discrete-...
This thesis presents a novel approach to robust controller design. It describes how linear constrain...
The focus of the paper is the development and application to experimental equipment of fast constrai...
The presence of constraints in the on-line optimization problem solved by model predictive Control a...
Terminal constraints provide for stable predicted trajectories and thus form the basis of predictive...