Most industrial model predictive controllers (MPC) use the traditional two-layer structure developed in the early 1980’s, where the upper layer defines optimal steady-state targets for inputs and outputs, while the lower layer calculates the control moves that drive the system towards these steady-state targets. As a rule, both layers use continuous quadratic programming (QP) formulations to derive the optimal solutions. On the other hand, the advances in mixed-integer programming (MIP) algorithms and their successful utilization to solve large scheduling problems in reasonable time show that MIP formulations have the potential of being advantageously applied to the multivariable model predictive control problem. In this paper we present a ...
In this work a new approach to address multivariable control structure (MCS) design for medium/large...
Many applications in engineering, computer science and economics involve mixed-integer optimal contr...
A significantly important part of model predictive control (MPC) with constraints are algorithms of ...
Since their inception in the early 1980s industrial model predictive controllers (MPC) rely on conti...
The benefits of applying the range of technologies generally known as Model Predictive Control (MPC)...
In this paper a preprocessing algorithm for unconstrained mixed integer quadratic programming proble...
This paper presents two applications of an alternative formulation for one-layer real time structure...
The control based on online optimization, popularly known as model predictive control (MPC), has lon...
Abstract The objective with this work is to derive an MIQP solver tailored for MPC. The MIQP solver ...
We propose an algorithm for the effective solution of quadratic programming (QP) problems arising fr...
A significantly important part of model predictive control (MPC) with constraints is a solution of a...
A method of solving the online optimization in model predictive control (MPC) of input-constrained l...
Abstract: Multi parametric quadratic programming is an alternative means of implementing conventiona...
General Predictive Control (GPC) is a modern method for process control which is appropriate for man...
It is a well known fact that finite time optimal controllers, such as MPC do not necessarily result ...
In this work a new approach to address multivariable control structure (MCS) design for medium/large...
Many applications in engineering, computer science and economics involve mixed-integer optimal contr...
A significantly important part of model predictive control (MPC) with constraints are algorithms of ...
Since their inception in the early 1980s industrial model predictive controllers (MPC) rely on conti...
The benefits of applying the range of technologies generally known as Model Predictive Control (MPC)...
In this paper a preprocessing algorithm for unconstrained mixed integer quadratic programming proble...
This paper presents two applications of an alternative formulation for one-layer real time structure...
The control based on online optimization, popularly known as model predictive control (MPC), has lon...
Abstract The objective with this work is to derive an MIQP solver tailored for MPC. The MIQP solver ...
We propose an algorithm for the effective solution of quadratic programming (QP) problems arising fr...
A significantly important part of model predictive control (MPC) with constraints is a solution of a...
A method of solving the online optimization in model predictive control (MPC) of input-constrained l...
Abstract: Multi parametric quadratic programming is an alternative means of implementing conventiona...
General Predictive Control (GPC) is a modern method for process control which is appropriate for man...
It is a well known fact that finite time optimal controllers, such as MPC do not necessarily result ...
In this work a new approach to address multivariable control structure (MCS) design for medium/large...
Many applications in engineering, computer science and economics involve mixed-integer optimal contr...
A significantly important part of model predictive control (MPC) with constraints are algorithms of ...