This paper proposes a new algorithm for solving Mixed-Integer Quadratic Programming (MIQP) problems. The algorithm is particularly tailored to solving small-scale MIQPs such as those that arise in embedded hybrid Model Predictive Control (MPC) applications. The approach combines branch and bound (B&B) with nonnegative least squares (NNLS), that are used to solve Quadratic Programming (QP) relaxations. The QP algorithm extends a method recently proposed by the author for solving strictly convex QP's, by (i) handling equality and bilateral inequality constraints, (ii) warm starting, and (iii) exploiting easy-to-compute lower bounds on the optimal cost to reduce the number of QP iterations required to solve the relaxed problems. The proposed M...
In this paper a preprocessing algorithm for unconstrained mixed integer quadratic programming proble...
International audienceQuadratic programming problems have received an increasing amount of attention...
In this paper we propose a fast optimization algorithm for approximately minimizing convex quadratic...
This paper proposes an active set method based on nonnegative least squares (NNLS) to solve strictly...
One o. The most widespread modern control strategies i. The discrete-time Model Predictive Control (...
This paper presents a method to certify the computational complexity of a standard Branch and Bound ...
Abstract The objective with this work is to derive an MIQP solver tailored for MPC. The MIQP solver ...
Let (MQP) be a general mixed-integer quadratic program that consists of minimizing a quadratic funct...
The objective of this work is to derive an MIQP solver tailored for MPC. The MIQP solver is built on...
We study mixed-integer programming (MIP) relaxation techniques for the solution of non-convex mixed-...
The main topic of this thesis is integer quadratic programming with applications to problems arising...
Model Predictive Control (MPC) is one of the most successful techniques adopted in industry to contr...
We propose methods for improving the relaxations obtained by the normalized multiparametric disaggre...
The objective of this work is to derive a Mixed Integer Quadratic Programming algorithm tailored for...
Let (MQP) be a MIQP that consists in minimizing a quadratic function subject to linear constraints. ...
In this paper a preprocessing algorithm for unconstrained mixed integer quadratic programming proble...
International audienceQuadratic programming problems have received an increasing amount of attention...
In this paper we propose a fast optimization algorithm for approximately minimizing convex quadratic...
This paper proposes an active set method based on nonnegative least squares (NNLS) to solve strictly...
One o. The most widespread modern control strategies i. The discrete-time Model Predictive Control (...
This paper presents a method to certify the computational complexity of a standard Branch and Bound ...
Abstract The objective with this work is to derive an MIQP solver tailored for MPC. The MIQP solver ...
Let (MQP) be a general mixed-integer quadratic program that consists of minimizing a quadratic funct...
The objective of this work is to derive an MIQP solver tailored for MPC. The MIQP solver is built on...
We study mixed-integer programming (MIP) relaxation techniques for the solution of non-convex mixed-...
The main topic of this thesis is integer quadratic programming with applications to problems arising...
Model Predictive Control (MPC) is one of the most successful techniques adopted in industry to contr...
We propose methods for improving the relaxations obtained by the normalized multiparametric disaggre...
The objective of this work is to derive a Mixed Integer Quadratic Programming algorithm tailored for...
Let (MQP) be a MIQP that consists in minimizing a quadratic function subject to linear constraints. ...
In this paper a preprocessing algorithm for unconstrained mixed integer quadratic programming proble...
International audienceQuadratic programming problems have received an increasing amount of attention...
In this paper we propose a fast optimization algorithm for approximately minimizing convex quadratic...