International audience—Several optimization-based control design techniques can be cast in the form of parametric optimization problems. The multi-parametric quadratic programming (mpQP) represents a popular class often related to the control of constrained linear systems. The complete solution to mpQP takes the form of explicit feedback functions with a piecewise affine structure, valid in polyhedral partitions of the feasible parameter space known as critical regions. The recently proposed combinatorial approach for solving mpQP has shown better efficiency than geometric approaches in finding the complete solution to problems with high dimensions of the parameter vectors. The drawback of this method, on the other hand, is that it tends to...
In this paper we derive formulas for computing graphical derivatives of the (possibly multivalued) s...
Abstract: Multi parametric quadratic programming is an alternative means of implementing conventiona...
One of the fundamental problems in the area of large-scale optimization is to study locality feature...
International audience—Several optimization-based control design techniques can be cast in the form ...
Several optimization-based control design techniques can be cast in the form of parametric optimizat...
The goal of multi-parametric quadratic programming (mpQP) is to compute analytic solutions to parame...
International audience— A combinatorial approach has been recently proposed for multi-parametric qua...
International audienceThe recently proposed combinatorial approach for multi-parametric quadratic pr...
International audienceThe goal of multi-parametric quadratic programming (mpQP) is to compute analyt...
Multiparametric (mp) programming pre-computes optimal solutions offline which are functions of param...
Explicit solutions to constrained linear model predictive control problems can be obtained by solvin...
Algorithms for solving multiparametric quadratic programming (MPQP) were recently proposed in Refs. ...
When solving a quadratic program (QP), one can improve the numerical stability of any QP solver by p...
This thesis discusses recent advances in a variety of areas in multi-parametric programming and exp...
An algorithm is described for determining the optimal solution of parametric linear and quadratic pr...
In this paper we derive formulas for computing graphical derivatives of the (possibly multivalued) s...
Abstract: Multi parametric quadratic programming is an alternative means of implementing conventiona...
One of the fundamental problems in the area of large-scale optimization is to study locality feature...
International audience—Several optimization-based control design techniques can be cast in the form ...
Several optimization-based control design techniques can be cast in the form of parametric optimizat...
The goal of multi-parametric quadratic programming (mpQP) is to compute analytic solutions to parame...
International audience— A combinatorial approach has been recently proposed for multi-parametric qua...
International audienceThe recently proposed combinatorial approach for multi-parametric quadratic pr...
International audienceThe goal of multi-parametric quadratic programming (mpQP) is to compute analyt...
Multiparametric (mp) programming pre-computes optimal solutions offline which are functions of param...
Explicit solutions to constrained linear model predictive control problems can be obtained by solvin...
Algorithms for solving multiparametric quadratic programming (MPQP) were recently proposed in Refs. ...
When solving a quadratic program (QP), one can improve the numerical stability of any QP solver by p...
This thesis discusses recent advances in a variety of areas in multi-parametric programming and exp...
An algorithm is described for determining the optimal solution of parametric linear and quadratic pr...
In this paper we derive formulas for computing graphical derivatives of the (possibly multivalued) s...
Abstract: Multi parametric quadratic programming is an alternative means of implementing conventiona...
One of the fundamental problems in the area of large-scale optimization is to study locality feature...