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A state space augmentation algorithm for the replenishment cycle inventory policy
Authors:Roberto Rossi  S. Armagan Tarim
Affiliation:a Logistics, Decision and Information Sciences, Wageningen UR, Hollandseweg 1, 6706 KN Wageningen, The Netherlands
b Department of Management, Hacettepe University, Turkey
c Faculty of Computer Science, Izmir University of Economics, Izmir, Turkey
d Cork Constraint Computation Centre, University College, Cork, Ireland
Abstract:In this work we propose an efficient dynamic programming approach for computing replenishment cycle policy parameters under non-stationary stochastic demand and service level constraints. The replenishment cycle policy is a popular inventory control policy typically employed for dampening planning instability. The approach proposed in this work achieves a significant computational efficiency and it can solve any relevant size instance in trivial time. Our method exploits the well known concept of state space relaxation. A filtering procedure and an augmenting procedure for the state space graph are proposed. Starting from a relaxed state space graph our method tries to remove provably suboptimal arcs and states (filtering) and then it tries to efficiently build up (augmenting) a reduced state space graph representing the original problem. Our experimental results show that the filtering procedure and the augmenting procedure often generate a small filtered state space graph, which can be easily processed using dynamic programming in order to produce a solution for the original problem.
Keywords:Inventory control   Non-stationary stochastic demand   Replenishment cycle policy   Dynamic programming   State space relaxation   State space filtering   State space augmentation
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