In this Thesis, numerical implementation of optimization algorithms for convex quadratic problems that appear in model predictive control for embedded linear systems, are examined. Different versions of dual first order methods are introduced and their complexity estimates are presented. The methods are implemented in the efficient programming language C, and optimized for low iteration complexity and low memory footprint. Extensive numerical simulations are conducted to test their performance and robustness, both against each other and against a commercial solver. Furthermore, a toolbox called \textit{DuQuad} \citep{web_duquad}, that contains the implemented algorithms, is developed. The toolbox has a dynamic MATLAB interface which make th...
In this paper we investigate the use of the Model Predictive Control (MPC) technique on a low power ...
In model-predictive control (MPC), an optimization problem has to be solved at each time step, which...
The flexibility and simplicity of recently published first-order methods (often first proposed for i...
In this paper we review a dual fast gradient-projection approach to solving quadratic programming (Q...
The objective of this work is to derive a Mixed Integer Quadratic Programming algorithm tailored for...
In this paper a preprocessing algorithm for unconstrained mixed integer quadratic programming proble...
This paper describes a model predictive control (MPC) approach for discrete-time linear systems with...
In recent years, the number of applications of model predictive control (MPC) is rapidly increasing ...
Abstract — This paper proposes a novel approach for the efficient implementation of solvers for line...
Fast and efficient numerical methods for solving Quadratic Programming problems (QPs) in the area of...
We propose a primal-dual interior-point (PDIP) method for solving quadratic programming problems wit...
This paper proposes a dual fast gradient-projection method for solving quadratic programming problem...
International audienceThis article addresses the fast on-line solution of a sequence of quadratic pr...
Abstract The objective with this work is to derive an MIQP solver tailored for MPC. The MIQP solver ...
This paper proposes a dual fast gradient-projection method for solving quadratic programming problem...
In this paper we investigate the use of the Model Predictive Control (MPC) technique on a low power ...
In model-predictive control (MPC), an optimization problem has to be solved at each time step, which...
The flexibility and simplicity of recently published first-order methods (often first proposed for i...
In this paper we review a dual fast gradient-projection approach to solving quadratic programming (Q...
The objective of this work is to derive a Mixed Integer Quadratic Programming algorithm tailored for...
In this paper a preprocessing algorithm for unconstrained mixed integer quadratic programming proble...
This paper describes a model predictive control (MPC) approach for discrete-time linear systems with...
In recent years, the number of applications of model predictive control (MPC) is rapidly increasing ...
Abstract — This paper proposes a novel approach for the efficient implementation of solvers for line...
Fast and efficient numerical methods for solving Quadratic Programming problems (QPs) in the area of...
We propose a primal-dual interior-point (PDIP) method for solving quadratic programming problems wit...
This paper proposes a dual fast gradient-projection method for solving quadratic programming problem...
International audienceThis article addresses the fast on-line solution of a sequence of quadratic pr...
Abstract The objective with this work is to derive an MIQP solver tailored for MPC. The MIQP solver ...
This paper proposes a dual fast gradient-projection method for solving quadratic programming problem...
In this paper we investigate the use of the Model Predictive Control (MPC) technique on a low power ...
In model-predictive control (MPC), an optimization problem has to be solved at each time step, which...
The flexibility and simplicity of recently published first-order methods (often first proposed for i...