A combined nonlinear model predictive control with extended Kalman filter strategy has been proposed for optimal input design. As the designed controller depend on the identified parameters, the achievable performance highly depends on the quality of the identified information. The degradation in achieving the desired control performance is quantified b y introducing an optimality criteria which minimize the error covariance matrix of the identified parameters. The major contribution is using the information of the system parameter at every sample time to improve the control performance at next time step. The the performance of the proposed algorithm is verified by numerical simulations for a example system
International audienceIt is well known that the quality of the parameters identified during an ident...
There are many aspects to consider when designing system identification experiments in control appli...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...
Abstract — This paper considers a method for optimal input design in system identification for contr...
An optimal feedback input design method for active parameter identification of dynamic nonlinear sys...
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...
Model predictive control (MPC) makes use of a model of the system, therefore performances are highly...
In control engineering, system identification is frequently used to create models from inputoutput d...
The model predictive control (MPC) technique has been widely applied in a large number of industrial...
A new variant of Model Predictive Control and Identification (MPCI) is proposed. The on-line objecti...
International audienceA closed-loop optimal experimental design for online parameter identification ...
There are many important aspects to be considered while designing optimal excitation signal for syst...
Model Predictive Control (MPC) is an optimal control method. At each instant of time, a per-formance...
This paper presents a novel unified approach of controller design and identification for unknown inp...
International audienceIt is well known that the quality of the parameters identified during an ident...
There are many aspects to consider when designing system identification experiments in control appli...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...
Abstract — This paper considers a method for optimal input design in system identification for contr...
An optimal feedback input design method for active parameter identification of dynamic nonlinear sys...
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...
Model predictive control (MPC) makes use of a model of the system, therefore performances are highly...
In control engineering, system identification is frequently used to create models from inputoutput d...
The model predictive control (MPC) technique has been widely applied in a large number of industrial...
A new variant of Model Predictive Control and Identification (MPCI) is proposed. The on-line objecti...
International audienceA closed-loop optimal experimental design for online parameter identification ...
There are many important aspects to be considered while designing optimal excitation signal for syst...
Model Predictive Control (MPC) is an optimal control method. At each instant of time, a per-formance...
This paper presents a novel unified approach of controller design and identification for unknown inp...
International audienceIt is well known that the quality of the parameters identified during an ident...
There are many aspects to consider when designing system identification experiments in control appli...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...