This thesis considers the problem of selecting robust and optimal experimental designs for accurately estimating the unknown mean parameters of non-linear models in chemical kinetics. The design selection criteria used are local, Bayesian and maximin D-optimality. The thesis focuses on an example provided by GlaxoSmithKline which concerns a chemical reaction where the temperature at which runs of the reaction are conducted and the times at which observations can be made during the reaction are to be varied. Optimal designs for non-linear models are usually dependent on the unknown values of the model parameters. This problem may be overcome by finding designs whose performance is robust to a range of values for each model parameter. Optimal...
Chemical process simulations depend on physical properties, which are usually available through prop...
Data from experiments in steady-state enzyme kinetic studies and radiological binding assays are usu...
In areas such as drug development, clinical diagnosis and biotechnology research, acquiring details ...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
In this paper we show how to obtain efficient designs of experiments for fitting Michaelis-Menten an...
Optimal design is useful in improving the efficiencies of experiments with respect to a specified op...
AbstractSubject of this paper is the design of optimal experiments for chemical processes described ...
6 páginas, 2 figurasThe problem of optimal experimental design (OED) for parameter estimation of non...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
In this work, an optimum experimental design strategy has been developed to increase the reliability...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
Chemical process simulations depend on physical properties, which are usually available through prop...
. Data from experiments in steady state enzyme kinetic studies and radioligand binding assays are us...
© 2018 Royal Statistical Society Many chemical and biological experiments involve multiple treatment...
Chemical process simulations depend on physical properties, which are usually available through prop...
Data from experiments in steady-state enzyme kinetic studies and radiological binding assays are usu...
In areas such as drug development, clinical diagnosis and biotechnology research, acquiring details ...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
In this paper we show how to obtain efficient designs of experiments for fitting Michaelis-Menten an...
Optimal design is useful in improving the efficiencies of experiments with respect to a specified op...
AbstractSubject of this paper is the design of optimal experiments for chemical processes described ...
6 páginas, 2 figurasThe problem of optimal experimental design (OED) for parameter estimation of non...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
In this work, an optimum experimental design strategy has been developed to increase the reliability...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
Chemical process simulations depend on physical properties, which are usually available through prop...
. Data from experiments in steady state enzyme kinetic studies and radioligand binding assays are us...
© 2018 Royal Statistical Society Many chemical and biological experiments involve multiple treatment...
Chemical process simulations depend on physical properties, which are usually available through prop...
Data from experiments in steady-state enzyme kinetic studies and radiological binding assays are usu...
In areas such as drug development, clinical diagnosis and biotechnology research, acquiring details ...