6 páginas, 2 figurasThe problem of optimal experimental design (OED) for parameter estimation of non-linear dynamic systems is considered. It is shown how this problem can be formulated as a dynamic optimization (optimal control) problem where the performance index is usually a scalar function of the Fisher information matrix. Numerical solutions can be obtained using direct methods, which transform the original problem into a nonlinear programming (NLP) problem via discretizations. However, due to the frequent non-smoothness of the cost functions, the use of gradient-based methods to solve this NLP might lead to local solutions. Stochastic methods of global optimization are suggested as robust alternatives. A case study considering t...
The problem of optimal input design (OID) for a fed-batch bioreactor case study is solved recursivel...
The problem of optimal input design (OID) for a fed-batch bioreactor case study is solved recursivel...
Parameter estimation is challenging for biological systems modelling since the model is normally of ...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
In this paper optimal experiment design for parameter estimation in nonlinear dynamic (bio)chemical ...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
State-of-the-art formulations of optimal experiment design problems are typically based on a design ...
This thesis considers the problem of selecting robust and optimal experimental designs for accuratel...
State-of-the-art formulations of optimal experiment design problems are typically based on a design ...
© 2014 Elsevier Ltd. Dynamic experiments that yield as much information as possible are highly valua...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
The problem of optimal input design (OID) for a fed-batch bioreactor case study is solved recursivel...
The problem of optimal input design (OID) for a fed-batch bioreactor case study is solved recursivel...
Parameter estimation is challenging for biological systems modelling since the model is normally of ...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
In this paper optimal experiment design for parameter estimation in nonlinear dynamic (bio)chemical ...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
State-of-the-art formulations of optimal experiment design problems are typically based on a design ...
This thesis considers the problem of selecting robust and optimal experimental designs for accuratel...
State-of-the-art formulations of optimal experiment design problems are typically based on a design ...
© 2014 Elsevier Ltd. Dynamic experiments that yield as much information as possible are highly valua...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
An experiment design procedure for parameter estimation in nonlinear dynamical systems is presented ...
The problem of optimal input design (OID) for a fed-batch bioreactor case study is solved recursivel...
The problem of optimal input design (OID) for a fed-batch bioreactor case study is solved recursivel...
Parameter estimation is challenging for biological systems modelling since the model is normally of ...