In particular in the last decade, optimization under uncertainty has engaged attention in the mathematical community and beyond. When trying to model the behavior of real-world processes mathematically, this behavior is often not fully understood. Uncertainty may concern the involved species of biological or chemical reactions, the kind of reactions taking place, and the numerical values of model coefficients. But also experimental measurements, which form the basis for the determination of the model parameters, contain unavoidable errors. In order to judge the validity and reliability of the numerical results of simulations and model predictions, the inherent uncertainties have at least to be quantified. But it would be even better to inco...
Biological processes are often modelled using ordinary differential equations. The unknown parameter...
Optimization formulations to handle decision-making under uncertainty often contain parameters neede...
This paper provides a brief review of some aspects of optimization in the presence of uncertainty
In particular in the last decade, optimization under uncertainty has engaged attention in the mathem...
This expository article discusses approaches for modeling optimization problems that involve uncerta...
! In practice: Large amount of uncertainty possible " model mismatch " variable initial co...
Process models are always associated with uncertainty, due to either inaccurate model structure or i...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
While mimicking a physical phenomenon in a computational framework, there are tuning parameters quit...
This report will look at optimization under parameters of uncertainties. It will describe the subjec...
• Optimization models for real-world applications are expected to generate “robust ” decisions in th...
Obtaining accurate models that can predict the behaviour of dynamic systems is important for a varie...
Engineers agree with the fact that uncertainty is an important issue to get a better model of real b...
It is fair to say that in many real world decision problems the underlying models cannot be accurate...
Biological processes are often modelled using ordinary differential equations. The unknown parameter...
Optimization formulations to handle decision-making under uncertainty often contain parameters neede...
This paper provides a brief review of some aspects of optimization in the presence of uncertainty
In particular in the last decade, optimization under uncertainty has engaged attention in the mathem...
This expository article discusses approaches for modeling optimization problems that involve uncerta...
! In practice: Large amount of uncertainty possible " model mismatch " variable initial co...
Process models are always associated with uncertainty, due to either inaccurate model structure or i...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Recent advances in computer hardware and computationally efficient algorithmic developments in proce...
While mimicking a physical phenomenon in a computational framework, there are tuning parameters quit...
This report will look at optimization under parameters of uncertainties. It will describe the subjec...
• Optimization models for real-world applications are expected to generate “robust ” decisions in th...
Obtaining accurate models that can predict the behaviour of dynamic systems is important for a varie...
Engineers agree with the fact that uncertainty is an important issue to get a better model of real b...
It is fair to say that in many real world decision problems the underlying models cannot be accurate...
Biological processes are often modelled using ordinary differential equations. The unknown parameter...
Optimization formulations to handle decision-making under uncertainty often contain parameters neede...
This paper provides a brief review of some aspects of optimization in the presence of uncertainty