The model predictive control (MPC) technique has been widely applied in a large number of industrial plants. Optimal input design should guarantee acceptable model parameter estimates while still providing for low experimental effort. The goal of this work is to investigate an application-oriented identification experiment that satisfies the performance objectives of the implementation of the model. A- and D-optimal input signal design methods for a non-linear liquid two-tank model are presented in this paper. The excitation signal is obtained using a finite impulse response filter (FIR) with respect to the accepted application degradation and the power constraint. The MPC controller is then used to control the liquid levels of the double ...
Model Predictive Controller (MPC) technology has been researched and developed to meet varied demand...
Abstract Presented in this chapter is a tutorial on the design of input signals for system identific...
This paper considers optimal input design when the intended use of the identified model is to constr...
Model predictive control (MPC) makes use of a model of the system, therefore performances are highly...
Abstract — This paper considers a method for optimal input design in system identification for contr...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...
Modern control designs are, with few exceptions, in some way model based. In particular, predictive ...
We present a method of performing optimal input design on a process controlled by MPC. Given a model...
The main goal of estimating models for industrial applications is to guarantee the cheapest system i...
In control engineering, system identification is frequently used to create models from inputoutput d...
Abstract — This contribution considers one central aspect of experiment design in system identificat...
Abstract — Model predictive control has become an increas-ingly popular control strategy thanks to t...
We present a new approach to Model Predictive Control (MPC) oriented experiment design for the ident...
A combined nonlinear model predictive control with extended Kalman filter strategy has been proposed...
Models are used in control systems for more than thirty years ago. Among them, Model Predictive Cont...
Model Predictive Controller (MPC) technology has been researched and developed to meet varied demand...
Abstract Presented in this chapter is a tutorial on the design of input signals for system identific...
This paper considers optimal input design when the intended use of the identified model is to constr...
Model predictive control (MPC) makes use of a model of the system, therefore performances are highly...
Abstract — This paper considers a method for optimal input design in system identification for contr...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...
Modern control designs are, with few exceptions, in some way model based. In particular, predictive ...
We present a method of performing optimal input design on a process controlled by MPC. Given a model...
The main goal of estimating models for industrial applications is to guarantee the cheapest system i...
In control engineering, system identification is frequently used to create models from inputoutput d...
Abstract — This contribution considers one central aspect of experiment design in system identificat...
Abstract — Model predictive control has become an increas-ingly popular control strategy thanks to t...
We present a new approach to Model Predictive Control (MPC) oriented experiment design for the ident...
A combined nonlinear model predictive control with extended Kalman filter strategy has been proposed...
Models are used in control systems for more than thirty years ago. Among them, Model Predictive Cont...
Model Predictive Controller (MPC) technology has been researched and developed to meet varied demand...
Abstract Presented in this chapter is a tutorial on the design of input signals for system identific...
This paper considers optimal input design when the intended use of the identified model is to constr...