We describe an efficiently computed suboptimal control law which is exponentially stabilizing in the presence of constraints and which converges asymptotically to the conditions for constrained optimality with respect to the receding horizon optimization. The free parameters in input predictions are adapted online on the basis of the gradient of the predicted performance index and the boundary of the admissible set for an autonomous prediction system. A differential description of the admissible set boundary enables efficient detection of active constraints
This note describes a model predictive control (MPC) formulation for discrete-time linear systems wi...
We propose adaptation strategies to modify the standard constrained model pre-dictive controller sch...
This article is concerned with the approximation of constrained continuous-time linear quadratic reg...
A computationally inexpensive model predictive control strategy for constrained linear systems is pr...
Efficient algorithms for constrained minimization of infinite horizon predictive control costs are p...
Key words Asymptotic stability, feedback, model predictive control algorithm, performance, receding ...
The paper concerns the receding horizon predictive control of constrained nonlinear systems and pres...
The major drawback of MPC is the computational burden associated with the large number of parameters...
A model predictive control (MPC) strategy based on augmented autonomous predictions enables a highly...
This paper provides a review of computationally efficient approaches to nonlinear model predictive c...
receding horizon control. Abstract: A typical bottleneck of model predictive control algorithms is t...
This thesis develops efficient optimization methods for Model Predictive Control (MPC) to enable its...
For discrete-time linear time-invariant systems with constraints on inputs and states, we develop an...
International audienceThis paper is dealing with the receding horizon optimal control techniques hav...
This note describes a model predictive control (MPC) formulation for discrete-time linear systems wi...
This note describes a model predictive control (MPC) formulation for discrete-time linear systems wi...
We propose adaptation strategies to modify the standard constrained model pre-dictive controller sch...
This article is concerned with the approximation of constrained continuous-time linear quadratic reg...
A computationally inexpensive model predictive control strategy for constrained linear systems is pr...
Efficient algorithms for constrained minimization of infinite horizon predictive control costs are p...
Key words Asymptotic stability, feedback, model predictive control algorithm, performance, receding ...
The paper concerns the receding horizon predictive control of constrained nonlinear systems and pres...
The major drawback of MPC is the computational burden associated with the large number of parameters...
A model predictive control (MPC) strategy based on augmented autonomous predictions enables a highly...
This paper provides a review of computationally efficient approaches to nonlinear model predictive c...
receding horizon control. Abstract: A typical bottleneck of model predictive control algorithms is t...
This thesis develops efficient optimization methods for Model Predictive Control (MPC) to enable its...
For discrete-time linear time-invariant systems with constraints on inputs and states, we develop an...
International audienceThis paper is dealing with the receding horizon optimal control techniques hav...
This note describes a model predictive control (MPC) formulation for discrete-time linear systems wi...
This note describes a model predictive control (MPC) formulation for discrete-time linear systems wi...
We propose adaptation strategies to modify the standard constrained model pre-dictive controller sch...
This article is concerned with the approximation of constrained continuous-time linear quadratic reg...