Intelligent Decision Support Algorithm for Uncertain Inventory Management

  • Le Ngoc Bao Long (Graduate school of Korea Maritime and Ocean University) ;
  • Sam-Sang You (Division of Mechanical Engineering, Korea Maritime and Ocean University) ;
  • Truong Ngoc Cuong (Dept. of Logistics, Korea Maritime and Ocean University) ;
  • Hwan-Seong Kim (Dept. of Logistics, Korea Maritime and Ocean University)
  • Published : 2023.05.02

Abstract

This paper discovers a robust managerial strategy for a stochastic inventory of perishable products, where the model experiences changing factors including inner parameters and an external disturbance with unknown form. An analytical solution for the optimization problem can be obtained by applying the Hamilton-Bellman-Jacobi equation, however the policy result cannot completely suppress the oscillation from the external disturbance. Therefore, an intelligent approach named Radial Basis Function Neural Networks is applied to estimate the unknown disturbance and provide a robust controller to manipulate the inventory level more effective. The final results show the outstanding performance of RBFNN controller, where both the estimation error and control error are guaranteed in the predefined limit.

Keywords