Explicit solutions to constrained linear model predictive control problems can be obtained by solving multi-parametric quadratic programs (mp-QP) where the parameters are the components of the state vector. We study the properties of the polyhedral partition of the state space induced by the multi-parametric piecewise affine solution and propose a new mp-QP solver. Compared to existing algorithms, our approach adopts a different exploration strategy for subdividing the parameter space, avoiding unnecessary partitioning and QP problem solving, with a significant improvement of efficiency
We propose an algorithm for the effective solution of quadratic programming (QP) problems arising fr...
We analyze properties of closed-loop systems based on explicit model predictive control (MPC) when p...
Motivated by explicit model predictive control, we address infeasibility in multi-parametric quadrat...
Explicit solutions to constrained linear model-predictive control (MPC) problems can be obtained by ...
Algorithms for solving multiparametric quadratic programming (mp-QP) were proposed in Bemporad et al...
In this paper, linear model predictive control problems are formulated as multi-parametric quadratic...
This thesis discusses recent advances in a variety of areas in multi-parametric programming and exp...
Abstract: Multi parametric quadratic programming is an alternative means of implementing conventiona...
Model Predictive Control (MPC) is one of the most successful techniques adopted in industry to contr...
Abstract: Explicit piecewise linear (PWL) state feedback laws solving constrained linear model predi...
Algorithms for solving multiparametric quadratic programming (MPQP) were recently proposed in Refs. ...
International audience—Several optimization-based control design techniques can be cast in the form ...
The control based on online optimization, popularly known as model predictive control (MPC), has lon...
The goal of multi-parametric quadratic programming (mpQP) is to compute analytic solutions to parame...
Several optimization-based control design techniques can be cast in the form of parametric optimizat...
We propose an algorithm for the effective solution of quadratic programming (QP) problems arising fr...
We analyze properties of closed-loop systems based on explicit model predictive control (MPC) when p...
Motivated by explicit model predictive control, we address infeasibility in multi-parametric quadrat...
Explicit solutions to constrained linear model-predictive control (MPC) problems can be obtained by ...
Algorithms for solving multiparametric quadratic programming (mp-QP) were proposed in Bemporad et al...
In this paper, linear model predictive control problems are formulated as multi-parametric quadratic...
This thesis discusses recent advances in a variety of areas in multi-parametric programming and exp...
Abstract: Multi parametric quadratic programming is an alternative means of implementing conventiona...
Model Predictive Control (MPC) is one of the most successful techniques adopted in industry to contr...
Abstract: Explicit piecewise linear (PWL) state feedback laws solving constrained linear model predi...
Algorithms for solving multiparametric quadratic programming (MPQP) were recently proposed in Refs. ...
International audience—Several optimization-based control design techniques can be cast in the form ...
The control based on online optimization, popularly known as model predictive control (MPC), has lon...
The goal of multi-parametric quadratic programming (mpQP) is to compute analytic solutions to parame...
Several optimization-based control design techniques can be cast in the form of parametric optimizat...
We propose an algorithm for the effective solution of quadratic programming (QP) problems arising fr...
We analyze properties of closed-loop systems based on explicit model predictive control (MPC) when p...
Motivated by explicit model predictive control, we address infeasibility in multi-parametric quadrat...