Accurate estimation of parameters is paramount in developing high-fidelity models for complex dynamical systems. Model-based optimal experiment design (OED) approaches enable systematic design of experiments to generate input-output data sets with high information content for parameter estimation. Standard OED approaches however face two challenges: (i) experiment design under incomplete system information due to unknown true parameters, which usually requires many iterations of OED; and (ii) incapability of systematically accounting for the inherent uncertainties of complex systems, which can lead to diminished effectiveness of the designed optimal excitation signal as well as violation of system constraints. This paper presents a robust O...
To obtain a systems-level understanding of a biological system, the authors conducted quantitative d...
BACKGROUND:Computational modeling is a key technique for analyzing models in systems biology. There ...
Progress in systems and synthetic biology is driven by mathematical and experimental collaboration. ...
Abstract: Accurate estimation of parameters is paramount in developing high-fidelity models for comp...
<div><p>This model-based design of experiments (MBDOE) method determines the input magnitudes of an ...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Biological Engineering, 2014.Ca...
This model-based design of experiments (MBDOE) method determines the input magni-tudes of an experim...
© 2014 Elsevier Ltd. Dynamic experiments that yield as much information as possible are highly valua...
Optimal experiment design (OED) aims to optimize the information content of experimental observation...
This paper further develops a new approach to optimal experiment design for dynamical systems by int...
Despite the ever-increasing interest in understanding biology at the system level, there are several...
Motivation: Systems biology employs mathematical modelling to fur-ther our understanding of biochemi...
This paper presents a stochastic model predictive control approach for nonlinear systems subject to ...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
To obtain a systems-level understanding of a biological system, the authors conducted quantitative d...
BACKGROUND:Computational modeling is a key technique for analyzing models in systems biology. There ...
Progress in systems and synthetic biology is driven by mathematical and experimental collaboration. ...
Abstract: Accurate estimation of parameters is paramount in developing high-fidelity models for comp...
<div><p>This model-based design of experiments (MBDOE) method determines the input magnitudes of an ...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Biological Engineering, 2014.Ca...
This model-based design of experiments (MBDOE) method determines the input magni-tudes of an experim...
© 2014 Elsevier Ltd. Dynamic experiments that yield as much information as possible are highly valua...
Optimal experiment design (OED) aims to optimize the information content of experimental observation...
This paper further develops a new approach to optimal experiment design for dynamical systems by int...
Despite the ever-increasing interest in understanding biology at the system level, there are several...
Motivation: Systems biology employs mathematical modelling to fur-ther our understanding of biochemi...
This paper presents a stochastic model predictive control approach for nonlinear systems subject to ...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
To obtain a systems-level understanding of a biological system, the authors conducted quantitative d...
BACKGROUND:Computational modeling is a key technique for analyzing models in systems biology. There ...
Progress in systems and synthetic biology is driven by mathematical and experimental collaboration. ...