Inventory control problems arise in various industries, and each single real-world inventory is replete with non-standard factors and subtleties. Practical stochastic inventory control problems are often analytically intractable, because of their complexity. In this regard, simulation-optimization is becoming more and more popular tool for solving complicated business-driven problems. Unfortunately, simulation, especially detailed, is both time and memory consuming. In the light of this fact, it may be more reasonable to use an alternative cheaper-to-compute metamodel, which is specifically designed in order to approximate an original simulation. In this research we discus metamodelling of stochastic multiproduct inventory control system wi...
The optimal calibration of inventory management policies in a multi-echelon linear supply chain (SC)...
The paper describes an eventual combination of discrete-event simulation and genetic algorithm to de...
Greedy Randomized Adaptive Search Procedures (GRASP) are among the most popular metaheuristics for t...
Inventory control problems arise in various industries, and each single real-world inventory is repl...
In order to tailor inventory control to urgent needs of grocery retail, the discrete-event simulatio...
Simulation optimization is increasingly popular for solving complicated and mathematically intractab...
All companies are challenged to match supply and demand, and the way the company tackles this challe...
Stochastic inventory control in multi-echelon systems poses hard problems in optimisation under unce...
Simulation is a representation of reality through the use of a model or other device which will reac...
International audienceThis paper investigates the inventory control of perishable products with a li...
This paper describes an experiment exploring the potential of kriging metamodeling for multi-objecti...
Inventory creates a significant cost to a firm in the form of the ordering cost, shortage cost, hold...
Simulation optimization is increasingly popular for solving complicated and mathematically intractab...
Research has been carried out to study the issue of multi-items inventory replenishment of a warehou...
The inventory systems are highly variable and uncertain due to market demand instability, increased ...
The optimal calibration of inventory management policies in a multi-echelon linear supply chain (SC)...
The paper describes an eventual combination of discrete-event simulation and genetic algorithm to de...
Greedy Randomized Adaptive Search Procedures (GRASP) are among the most popular metaheuristics for t...
Inventory control problems arise in various industries, and each single real-world inventory is repl...
In order to tailor inventory control to urgent needs of grocery retail, the discrete-event simulatio...
Simulation optimization is increasingly popular for solving complicated and mathematically intractab...
All companies are challenged to match supply and demand, and the way the company tackles this challe...
Stochastic inventory control in multi-echelon systems poses hard problems in optimisation under unce...
Simulation is a representation of reality through the use of a model or other device which will reac...
International audienceThis paper investigates the inventory control of perishable products with a li...
This paper describes an experiment exploring the potential of kriging metamodeling for multi-objecti...
Inventory creates a significant cost to a firm in the form of the ordering cost, shortage cost, hold...
Simulation optimization is increasingly popular for solving complicated and mathematically intractab...
Research has been carried out to study the issue of multi-items inventory replenishment of a warehou...
The inventory systems are highly variable and uncertain due to market demand instability, increased ...
The optimal calibration of inventory management policies in a multi-echelon linear supply chain (SC)...
The paper describes an eventual combination of discrete-event simulation and genetic algorithm to de...
Greedy Randomized Adaptive Search Procedures (GRASP) are among the most popular metaheuristics for t...