Optimization problems are considered for which objective function and constraints are defined as expected values of stochastic functions that can only be evaluated at integer design variable levels via a computationally expensive computer simulation. Design sensitivities are assumed not to be available. An optimization approach is proposed based on a sequence of linear approximate optimization subproblems. Within each search subregion a linear approximate optimization subproblem is built using response surface model building. To this end, N simulation experiments are carried out in the search subregion according to a D-optimal experimental design. The linear approximate optimization problem is solved by integer linear programming using corr...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
International audienceThis technical note addresses the discrete optimization of stochastic discrete...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
Optimization problems are considered for which objective function and constraints are defined as exp...
A sequential approximate optimization approach is proposed for simulation models with discrete desig...
Discrete event simulation is widely used to analyse and improve the performance of manufacturing sys...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
This dissertation introduces a new class of stochastic programming algorithms that find solutions fo...
Systems whose performance can only be evaluated through expensive numerical or physical simulation a...
We develop four algorithms for simulation-based optimization under multiple inequality constraints. ...
Many systems in logistics can be adequately modeled using stochastic discrete event simulation model...
A number of researchers have successfully integrated stochastic computer simulation models with comb...
We present a review of methods for optimizing stochastic systems using simulation. The focus is on g...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
This article investigates simulation-based optimization problems with a stochastic objective functio...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
International audienceThis technical note addresses the discrete optimization of stochastic discrete...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
Optimization problems are considered for which objective function and constraints are defined as exp...
A sequential approximate optimization approach is proposed for simulation models with discrete desig...
Discrete event simulation is widely used to analyse and improve the performance of manufacturing sys...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
This dissertation introduces a new class of stochastic programming algorithms that find solutions fo...
Systems whose performance can only be evaluated through expensive numerical or physical simulation a...
We develop four algorithms for simulation-based optimization under multiple inequality constraints. ...
Many systems in logistics can be adequately modeled using stochastic discrete event simulation model...
A number of researchers have successfully integrated stochastic computer simulation models with comb...
We present a review of methods for optimizing stochastic systems using simulation. The focus is on g...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
This article investigates simulation-based optimization problems with a stochastic objective functio...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
International audienceThis technical note addresses the discrete optimization of stochastic discrete...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...