Publication | Closed Access
A dynamic programming-based particle swarm optimization algorithm for an inventory management problem under uncertainty
28
Citations
49
References
2012
Year
Supply Chain OptimizationEngineeringLogistics OptimizationIndustrial EngineeringSmart ManufacturingInventory TheoryOperations ResearchInventory ManagementHybrid Crisp ApproachInventory ControlSystems EngineeringLogisticsFuzzy OptimizationFuzzy Random EnvironmentManagement AlgorithmQuantitative ManagementSupply Chain DesignSupply Chain ManagementFuzzy Random ParametersRobust Fuzzy ProgrammingBusinessField Inventory ManagementInventory Management Problem
This article presents a dynamic programming-based particle swarm optimization (DP-based PSO) algorithm for solving an inventory management problem for large-scale construction projects under a fuzzy random environment. By taking into account the purchasing behaviour and strategy under rules of international bidding, a multi-objective fuzzy random dynamic programming model is constructed. To deal with the uncertainties, a hybrid crisp approach is used to transform fuzzy random parameters into fuzzy variables that are subsequently defuzzified by using an expected value operator with optimistic–pessimistic index. The iterative nature of the authors’ model motivates them to develop a DP-based PSO algorithm. More specifically, their approach treats the state variables as hidden parameters. This in turn eliminates many redundant feasibility checks during initialization and particle updates at each iteration. Results and sensitivity analysis are presented to highlight the performance of the authors’ optimization method, which is very effective as compared to the standard PSO algorithm.
| Year | Citations | |
|---|---|---|
Page 1
Page 1