This paper proposes to study the potential of use a three-tank system in laboratory scale to teach how to design a predictive controller (MPC) applied to a system with multiple inputs/multiple outputs (MIMO). An algorithm that predicts the future behavior of the plant characterizes the controllers (MPC). With a representative model of the process, the algorithm calculates the future optimal control actions that will minimize the error between the controlled variables and their respective reference values, then, only the first values calculated for the plant inputs is sent. These controllers have a high popularity in the academy and in the industry because they provide high performance control systems without requiring interventions of opera...
This thesis describes the development of a novel control strategy for a two-stage thermo-mechanical ...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...
This paper proposes a practical tuning of closed loops with model based predictive control. The data...
A three-tank process has difficulty in controller design because of nonlinear flow and interactions ...
Models are used in control systems for more than thirty years ago. Among them, Model Predictive Cont...
The emergence of process industries with its large production volume, high economic and environmenta...
Model Predictive Controller (MPC) technology has been researched and developed to meet varied demand...
A new method of designing predictive controllers for SISO systems is presented. The controller selec...
The paper introduces a controller which integrates a predictive control synthesis based on a multiva...
Model Predictive Control (MPC) is used to solve challenging multivariable-constrained control proble...
The purpose of this Master Thesis concerns further development of ABB´s multivariable prediction c...
This article presents a Model Predictive Control (MPC) algorithm based on integral action. Level con...
Teaching multivariable control usually involves a certain level of mathematical sophistication and h...
Model Predictive Control (MPC) is a control method that deals with the multivariable system with co...
The control of multi-input multi-output (MIMO) systems is a common problem in practical control scen...
This thesis describes the development of a novel control strategy for a two-stage thermo-mechanical ...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...
This paper proposes a practical tuning of closed loops with model based predictive control. The data...
A three-tank process has difficulty in controller design because of nonlinear flow and interactions ...
Models are used in control systems for more than thirty years ago. Among them, Model Predictive Cont...
The emergence of process industries with its large production volume, high economic and environmenta...
Model Predictive Controller (MPC) technology has been researched and developed to meet varied demand...
A new method of designing predictive controllers for SISO systems is presented. The controller selec...
The paper introduces a controller which integrates a predictive control synthesis based on a multiva...
Model Predictive Control (MPC) is used to solve challenging multivariable-constrained control proble...
The purpose of this Master Thesis concerns further development of ABB´s multivariable prediction c...
This article presents a Model Predictive Control (MPC) algorithm based on integral action. Level con...
Teaching multivariable control usually involves a certain level of mathematical sophistication and h...
Model Predictive Control (MPC) is a control method that deals with the multivariable system with co...
The control of multi-input multi-output (MIMO) systems is a common problem in practical control scen...
This thesis describes the development of a novel control strategy for a two-stage thermo-mechanical ...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...
This paper proposes a practical tuning of closed loops with model based predictive control. The data...