Pareto analysis is a broadly applicable method to model and analyze tradeoffs in multi-objective optimization problems. The set of Pareto optimal solutions is guaranteed to contain the best solution for any arbitrary cost function or selection procedure. This work introduces a method to explicitly take uncertainty into account during Pareto analysis. A solution is not modeled by a single point in the solution space, but rather by a set of such points. This is useful in settings with much uncertainty, such as during model-based design space exploration for embedded systems. A bounding-box abstraction is introduced as a finite representation of Pareto optimal solutions under uncertainty. It is shown that the set of Pareto optimal solutions in...
Most methods in simulation-optimization assume known environments, whereas this research accounts fo...
Taking account of uncertain model parameters in simulation-based flowsheet optimization is crucial i...
In this paper, we propose non-parametric estimations of robustness and reliability measures approxim...
Pareto analysis is a broadly applicable method to model and analyze tradeoffs in multi-objective opt...
Many engineering problems have multiple conflicting objectives, and they are also stochastic due to ...
Abstract: Real-world optimization problems are often sub-ject to uncertainties caused by, e.g., miss...
International audienceThis paper is devoted to tackling constrained multi-objective optimisation und...
Abstract In this paper we address an innovative approach to determine the mean and a confidence inte...
For multi-objective optimization problems, a common solution methodology is to determine a Pareto op...
Real-world optimization problems are often subject to uncertainties, which can arise regarding stoch...
Multi-objective formulations are realistic models for many complex engineering optimization problems...
Real-world optimization problems are often subject to uncertainties caused by, e.g., missing informa...
The impact of multiple levels of uncertainty in design parameters and uncertainty correlations on th...
Multi-objective spatial optimization problems require spatial data input that can contain uncertaint...
AbstractMost methods in simulation-optimization assume known environments, whereas this research acc...
Most methods in simulation-optimization assume known environments, whereas this research accounts fo...
Taking account of uncertain model parameters in simulation-based flowsheet optimization is crucial i...
In this paper, we propose non-parametric estimations of robustness and reliability measures approxim...
Pareto analysis is a broadly applicable method to model and analyze tradeoffs in multi-objective opt...
Many engineering problems have multiple conflicting objectives, and they are also stochastic due to ...
Abstract: Real-world optimization problems are often sub-ject to uncertainties caused by, e.g., miss...
International audienceThis paper is devoted to tackling constrained multi-objective optimisation und...
Abstract In this paper we address an innovative approach to determine the mean and a confidence inte...
For multi-objective optimization problems, a common solution methodology is to determine a Pareto op...
Real-world optimization problems are often subject to uncertainties, which can arise regarding stoch...
Multi-objective formulations are realistic models for many complex engineering optimization problems...
Real-world optimization problems are often subject to uncertainties caused by, e.g., missing informa...
The impact of multiple levels of uncertainty in design parameters and uncertainty correlations on th...
Multi-objective spatial optimization problems require spatial data input that can contain uncertaint...
AbstractMost methods in simulation-optimization assume known environments, whereas this research acc...
Most methods in simulation-optimization assume known environments, whereas this research accounts fo...
Taking account of uncertain model parameters in simulation-based flowsheet optimization is crucial i...
In this paper, we propose non-parametric estimations of robustness and reliability measures approxim...