The connections between optimization and control theory have been explored by many researchers, and optimization algorithms have been applied with success to optimal control. The rapid pace of developments in model predictive control has given rise to a host of new problems to which optimization has yet to be applied. Concurrently, developments in optimization, and especially in interior-point methods, have produced a new set of algorithms that may be especially helpful in this context. In this paper, we reexamine the relatively simple problem of control of linear processes subject to quadratic objectives and general linear constraints. We show how new algorithms for quadratic programming can be applied efficiently to this problem. The appr...
In this paper, linear model predictive control problems are formulated as multi-parametric quadratic...
In this contribution we present two interior-point path-following algorithms that solve the convex o...
In this thesis sensitivity analysis for quadratic optimization problems is stud-ied. In sensitivity ...
The connections between optimization and control theory have been explored by many researchers and o...
We present a structured interior-point method for the efficient solution of the optimal control prob...
In this paper it is shown how to efficiently solve an optimal control problem with applications to m...
The model predictive control problem of linear systems with integer inputs results in an integer opt...
Optimization problems with many more inequality constraints than variables arise in support-vector m...
Non-linear optimization, particularly quadratic programming (QP), is a mathematical method which is ...
Various kinds of processes can be controlled using predictive control. In certain cases of predictiv...
This paper presents robust linear model predictive control (MPC) technique for small scale linear MP...
This paper investigates application of SQP optimization algorithms to nonlinear model pre-dictive co...
This article is concerned with the approximation of constrained continuous-time linear quadratic reg...
In Model Predictive Control (MPC) an optimal control problem has to be solved at each sampling insta...
A key component in enabling the application of model predictive control (MPC) in fields such as auto...
In this paper, linear model predictive control problems are formulated as multi-parametric quadratic...
In this contribution we present two interior-point path-following algorithms that solve the convex o...
In this thesis sensitivity analysis for quadratic optimization problems is stud-ied. In sensitivity ...
The connections between optimization and control theory have been explored by many researchers and o...
We present a structured interior-point method for the efficient solution of the optimal control prob...
In this paper it is shown how to efficiently solve an optimal control problem with applications to m...
The model predictive control problem of linear systems with integer inputs results in an integer opt...
Optimization problems with many more inequality constraints than variables arise in support-vector m...
Non-linear optimization, particularly quadratic programming (QP), is a mathematical method which is ...
Various kinds of processes can be controlled using predictive control. In certain cases of predictiv...
This paper presents robust linear model predictive control (MPC) technique for small scale linear MP...
This paper investigates application of SQP optimization algorithms to nonlinear model pre-dictive co...
This article is concerned with the approximation of constrained continuous-time linear quadratic reg...
In Model Predictive Control (MPC) an optimal control problem has to be solved at each sampling insta...
A key component in enabling the application of model predictive control (MPC) in fields such as auto...
In this paper, linear model predictive control problems are formulated as multi-parametric quadratic...
In this contribution we present two interior-point path-following algorithms that solve the convex o...
In this thesis sensitivity analysis for quadratic optimization problems is stud-ied. In sensitivity ...