Abstract — This contribution considers one central aspect of experiment design in system identification. When a con-trol design is based on an estimated model, the achievable performance is related to the quality of the estimate. The degradation in control performance due to errors in the estimated model is measured by an application cost function. In order to use an optimization based input design method, a convex approximation of the set of models that satisfies the control specification is required. The standard approach is to use a quadratic approximation of the application cost function, where the main computational effort is to find the corresponding Hessian matrix. Our main contribution is an alternative approach for this problem, wh...
Parameter identification experiments deliver an identified model together with an ellipsoidal uncert...
A combined nonlinear model predictive control with extended Kalman filter strategy has been proposed...
International audienceIt is well known that the quality of the parameters identified during an ident...
Abstract — This contribution considers one central aspect of experiment design in system identificat...
Modern control designs are, with few exceptions, in some way model based. In particular, predictive ...
Abstract — This paper considers a method for optimal input design in system identification for contr...
There are many aspects to consider when designing system identification experiments in control appli...
Model predictive control (MPC) makes use of a model of the system, therefore performances are highly...
The model predictive control (MPC) technique has been widely applied in a large number of industrial...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...
We present a method of performing optimal input design on a process controlled by MPC. Given a model...
Model-based control design plays a key role in today's industrial practice, and industry demands cut...
This thesis is divided into two main parts. The first part considers application-oriented input desi...
The main part of this thesis focuses on optimal experiment design for system identification within t...
Mathematical models are an essential part of analysis of autonomous systemsas they ease the formulat...
Parameter identification experiments deliver an identified model together with an ellipsoidal uncert...
A combined nonlinear model predictive control with extended Kalman filter strategy has been proposed...
International audienceIt is well known that the quality of the parameters identified during an ident...
Abstract — This contribution considers one central aspect of experiment design in system identificat...
Modern control designs are, with few exceptions, in some way model based. In particular, predictive ...
Abstract — This paper considers a method for optimal input design in system identification for contr...
There are many aspects to consider when designing system identification experiments in control appli...
Model predictive control (MPC) makes use of a model of the system, therefore performances are highly...
The model predictive control (MPC) technique has been widely applied in a large number of industrial...
Model predictive control (MPC) has become an increasingly popular control strategy thanks to its abi...
We present a method of performing optimal input design on a process controlled by MPC. Given a model...
Model-based control design plays a key role in today's industrial practice, and industry demands cut...
This thesis is divided into two main parts. The first part considers application-oriented input desi...
The main part of this thesis focuses on optimal experiment design for system identification within t...
Mathematical models are an essential part of analysis of autonomous systemsas they ease the formulat...
Parameter identification experiments deliver an identified model together with an ellipsoidal uncert...
A combined nonlinear model predictive control with extended Kalman filter strategy has been proposed...
International audienceIt is well known that the quality of the parameters identified during an ident...