Genetic algorithms (GAs) are one of the many optimisation methodologies that have been used in conjunction with simulation modelling. The most critical step with a GA is the assignment of the selective probabilities to the alternatives. Selective probabilities are assigned based on the alternatives\u27 estimated performances which are obtained using simulation. An accurate estimate should be obtained to reduce the number of cases in which the search is oriented towards the wrong direction. Furthermores, it is important to obtain this estimate without many replications. This study proposes a simulation optimisation methodology that combines the GA and an indifference-zone (IZ) ranking and selection procedure under common random numbers (CRN)...
Optimization methods in discrete-event simulation have become widespread in numerous applications. H...
This paper investigates the robustness of a Genetic Algorithm (GA) search method in solving an uncon...
We describe the performance of two population based search algorithms (genetic algorithms and partic...
Genetic algorithms (GAs) are one of the many optimisation methodologies that have been used in conju...
A methodology for optimization of simulation models is presented. The methodology is based on a gene...
Genetic algorithms (GAs) are stochastic search methods that mimic natural biological evolution. Gene...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
The genetic algorithm can be applied to selecting theoretical probability distributions so as to be ...
The resource levels required for operation and support of reusable launch vehicles are typically def...
This paper proposes an open-source algorithm for simulation optimization. The intent is to permit ma...
Genetic Algorithms (GAs) have been successfully applied to a wide range of engineering optimization ...
The resource levels required for operation and support of reusable launch vehicles are typically def...
A formalism for modelling the dynamics of genetic algorithms using methods from statistical physics,...
A simple but reliable model tuning method was developed in order to tune a flight model for a high-f...
The guided random search techniques, genetic algorithms and simulated annealing, are very promising ...
Optimization methods in discrete-event simulation have become widespread in numerous applications. H...
This paper investigates the robustness of a Genetic Algorithm (GA) search method in solving an uncon...
We describe the performance of two population based search algorithms (genetic algorithms and partic...
Genetic algorithms (GAs) are one of the many optimisation methodologies that have been used in conju...
A methodology for optimization of simulation models is presented. The methodology is based on a gene...
Genetic algorithms (GAs) are stochastic search methods that mimic natural biological evolution. Gene...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
The genetic algorithm can be applied to selecting theoretical probability distributions so as to be ...
The resource levels required for operation and support of reusable launch vehicles are typically def...
This paper proposes an open-source algorithm for simulation optimization. The intent is to permit ma...
Genetic Algorithms (GAs) have been successfully applied to a wide range of engineering optimization ...
The resource levels required for operation and support of reusable launch vehicles are typically def...
A formalism for modelling the dynamics of genetic algorithms using methods from statistical physics,...
A simple but reliable model tuning method was developed in order to tune a flight model for a high-f...
The guided random search techniques, genetic algorithms and simulated annealing, are very promising ...
Optimization methods in discrete-event simulation have become widespread in numerous applications. H...
This paper investigates the robustness of a Genetic Algorithm (GA) search method in solving an uncon...
We describe the performance of two population based search algorithms (genetic algorithms and partic...