Robust optimization determines how the input variables dispersion is propagated on the output variables. This is of great practical relevance: For example, the quality of a product is influenced decisively by production tolerances. In industrial applications it is important to characterize the range of variation with appropriate measures. The industry is particularly interested in accurate limits of the output distribution or its centered part. In this article the mathematical characterization of robustness is discussed under the viewpoint of its practical applicability. It is shown, that the usually used robustness measures mean for central tendency and standard deviation for dispersion produce inaccurate limits. Instead several measures b...
Robust optimization is an emerging area in research that allows addressing different optimization pr...
Whereas Operations Research has always paid much attention to optimization, practitioners judge the ...
Real-world optimization scenarios under uncertainty and noise are typically handled with robust opti...
Robust optimization integrates the input variables' uncertainty in the optimization process and dete...
Optimization of simulated systems is the goal of many techniques, but most of them assume known envi...
In the real world of engineering problems, in order to reduce optimization costs in ph...
During metamodel-based optimization three types of implicit errors are typically made.The first erro...
The subject of uncertainty is a prevalent factor in engineering and design. Real-world engineering s...
This research investigates the potential of using meta-modeling techniques in the context of robust ...
Optimization of simulated systems is the goal of many methods, but most methods assume known environ...
Robust optimization is a methodology for dealing with uncertainty in optimization problems. In this ...
A robustness criterion that employs skewness of output is presented for a metamodel-based robust opt...
In this paper we survey the primary research, both theoretical and applied, in the area of robust op...
Robust optimization is a young and active research field that has been mainly developed in the last ...
In this paper we survey the primary research, both theoretical and applied, in the area of Robust Op...
Robust optimization is an emerging area in research that allows addressing different optimization pr...
Whereas Operations Research has always paid much attention to optimization, practitioners judge the ...
Real-world optimization scenarios under uncertainty and noise are typically handled with robust opti...
Robust optimization integrates the input variables' uncertainty in the optimization process and dete...
Optimization of simulated systems is the goal of many techniques, but most of them assume known envi...
In the real world of engineering problems, in order to reduce optimization costs in ph...
During metamodel-based optimization three types of implicit errors are typically made.The first erro...
The subject of uncertainty is a prevalent factor in engineering and design. Real-world engineering s...
This research investigates the potential of using meta-modeling techniques in the context of robust ...
Optimization of simulated systems is the goal of many methods, but most methods assume known environ...
Robust optimization is a methodology for dealing with uncertainty in optimization problems. In this ...
A robustness criterion that employs skewness of output is presented for a metamodel-based robust opt...
In this paper we survey the primary research, both theoretical and applied, in the area of robust op...
Robust optimization is a young and active research field that has been mainly developed in the last ...
In this paper we survey the primary research, both theoretical and applied, in the area of Robust Op...
Robust optimization is an emerging area in research that allows addressing different optimization pr...
Whereas Operations Research has always paid much attention to optimization, practitioners judge the ...
Real-world optimization scenarios under uncertainty and noise are typically handled with robust opti...