Samenvatting
We study an inventory optimization problem for a retailer that faces stochastic online and in-store demand in a selling season of fixed length. The retailer has to decide the initial inventory levels and an order fulfillment policy such that the expected total costs are minimized. We approximate the problem by a two-stage stochastic optimization on a reduced number of scenarios. For deciding the representative scenarios, we propose a new similarity measure and a novel technique that combines the framework of Good–Turing sampling and Linear Programming. On randomly generated instances, the proposed algorithm obtains an average cost reduction of 7.56% compared to a state-of-the-art algorithm in the literature. The proposed algorithm works considerably better for short time horizons and a relatively large proportion of in-store customers.
Originele taal-2 | Engels |
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Artikelnummer | 108723 |
Aantal pagina's | 15 |
Tijdschrift | Computers & Industrial Engineering |
Volume | 173 |
DOI's | |
Status | Gepubliceerd - 1 nov. 2022 |
Financiering
This publication is based upon work supported by the Khalifa University of Science and Technology under Award No. RC2 DSO and Grant Number FSU2019-11 . Abdo Abouelrous is supported by the AI Planner of the Future program, which is supported by the European Supply Chain Forum (ESCF) , The Eindhoven Artificial Intelligence Systems Institute (EAISI) , the Logistics Community Brabant (LCB) , and the Department of Industrial Engineering and Innovation Sciences (IE&IS) . We thank Andrei Sleptchenko for the help with the parallel implementation of Benders decomposition.
Financiers | Financiernummer |
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Eindhoven University of Technology | |
Khalifa University of Science and Technology | FSU2019-11 |