Simulation optimization has received considerable attention due to the increased growth of manufacturing networks as well as global competition in the industry. Multi-objective Evolutionary Algorithms are developed to tackle these multi-objective optimization problems. Replication of simulation instances are required so that the evolutionary algorithms can determine the optimal solutions with high confidence. The current process of determining the number of replications is only empirically selecting an arbitrarily value. Thus, the main goal of this project is to implement an algorithm to determine the number of replications required dynamically. A multi-objective computing budget allocation (MOCBA) procedure is chosen as it can determine t...
We present a simulation run allocation scheme for improving efficiency in simulation experiments for...
International audienceEvolutionary algorithms (EA) are recently used to explore the parameter space ...
Optimization of production systems often involves numerous simulations of computationally expensive ...
Discrete-event systems (DES) simulation is a popular tool for analyzing systems and evaluating decis...
Simulation optimisation offers great opportunities in the design and optimisation of complex systems...
GKN Aerospace in Trollhättan manufactures different components for aircraft engines and aero derivat...
Simulation optimisation offers great opportunities in the design and optimisation of complex systems...
Many real-world manufacturing problems are too complex to be modelled analytically. For these proble...
This paper presents a hybrid simulation optimisation algorithm that integrates a multi-objective gen...
This paper develops a multi-objective simulationbased genetic algorithm (MOSGA) for multi-echelon su...
This paper develops a multi-objective simulation-based genetic algorithm (MOSGA) for multi-echelon s...
Ordinal Optimization offers an efficient approach for simulation optimization by focusing on ranking...
Many real-world manufacturing problems are too complex to be modelled analytically. For these proble...
Abstract: This paper develops a multi-objective simulation-based genetic algorithm (MOSGA) for multi...
This is the author accepted manuscript. The final version is available from ACM via the DOI in this ...
We present a simulation run allocation scheme for improving efficiency in simulation experiments for...
International audienceEvolutionary algorithms (EA) are recently used to explore the parameter space ...
Optimization of production systems often involves numerous simulations of computationally expensive ...
Discrete-event systems (DES) simulation is a popular tool for analyzing systems and evaluating decis...
Simulation optimisation offers great opportunities in the design and optimisation of complex systems...
GKN Aerospace in Trollhättan manufactures different components for aircraft engines and aero derivat...
Simulation optimisation offers great opportunities in the design and optimisation of complex systems...
Many real-world manufacturing problems are too complex to be modelled analytically. For these proble...
This paper presents a hybrid simulation optimisation algorithm that integrates a multi-objective gen...
This paper develops a multi-objective simulationbased genetic algorithm (MOSGA) for multi-echelon su...
This paper develops a multi-objective simulation-based genetic algorithm (MOSGA) for multi-echelon s...
Ordinal Optimization offers an efficient approach for simulation optimization by focusing on ranking...
Many real-world manufacturing problems are too complex to be modelled analytically. For these proble...
Abstract: This paper develops a multi-objective simulation-based genetic algorithm (MOSGA) for multi...
This is the author accepted manuscript. The final version is available from ACM via the DOI in this ...
We present a simulation run allocation scheme for improving efficiency in simulation experiments for...
International audienceEvolutionary algorithms (EA) are recently used to explore the parameter space ...
Optimization of production systems often involves numerous simulations of computationally expensive ...