International audienceThis technical note addresses the discrete optimization of stochastic discrete event systems for which both the performance function and the constraint function are not known but can be evaluated by simulation and the solution space is either finite or unbounded. Our method is based on random search in a neighborhood structure called the most promising area proposed in [7] and a moving observation area. The simulation budget is allocated dynamically to promising solutions. Simulation-based constraints are taken into account in an augmented performance function via an increasing penalty factor. We prove that under some assumptions, the algorithm converges with probability 1 to a set of true local optimal solutions. Thes...
We consider optimizing the expected value of some performance measure of a dynamic stochastic simula...
Over the past twenty years, a significant body of work has been undertaken on the topic of methods a...
It is frequently the case that deterministic optimization models could be made more practical by exp...
Many systems in logistics can be adequately modeled using stochastic discrete event simulation model...
We consider a discrete optimization via simulation problem with stochastic constraints on secondary ...
The goal of this article is to provide a general framework for locally convergent random-search algo...
Approximate solutions for discrete stochastic optimization problems are often obtained via simulatio...
Approximate solutions for discrete stochastic optimization problems are often obtained via simulatio...
We present a general framework for applying simulation to optimize the behavior of discrete event sy...
The problem is maximizing or minimizing the expected value of a stochastic performance measure that ...
With the growing use of computer modeling and simulation, in all aspects of engineering, the scope o...
The optimization of stochastic Discrete Event Systems (DESs) is a critical and diffcult task. Beside...
With the growing use of computer modeling and simulation, in all aspects of engineering, the scope o...
Discrete event simulation is widely used to analyse and improve the performance of manufacturing sys...
Approximate solutions for discrete stochastic optimization problems are often obtained via simulati...
We consider optimizing the expected value of some performance measure of a dynamic stochastic simula...
Over the past twenty years, a significant body of work has been undertaken on the topic of methods a...
It is frequently the case that deterministic optimization models could be made more practical by exp...
Many systems in logistics can be adequately modeled using stochastic discrete event simulation model...
We consider a discrete optimization via simulation problem with stochastic constraints on secondary ...
The goal of this article is to provide a general framework for locally convergent random-search algo...
Approximate solutions for discrete stochastic optimization problems are often obtained via simulatio...
Approximate solutions for discrete stochastic optimization problems are often obtained via simulatio...
We present a general framework for applying simulation to optimize the behavior of discrete event sy...
The problem is maximizing or minimizing the expected value of a stochastic performance measure that ...
With the growing use of computer modeling and simulation, in all aspects of engineering, the scope o...
The optimization of stochastic Discrete Event Systems (DESs) is a critical and diffcult task. Beside...
With the growing use of computer modeling and simulation, in all aspects of engineering, the scope o...
Discrete event simulation is widely used to analyse and improve the performance of manufacturing sys...
Approximate solutions for discrete stochastic optimization problems are often obtained via simulati...
We consider optimizing the expected value of some performance measure of a dynamic stochastic simula...
Over the past twenty years, a significant body of work has been undertaken on the topic of methods a...
It is frequently the case that deterministic optimization models could be made more practical by exp...