de Assis, Rodrigo Furlan, Faria, Alexandre Frias, Thomasset-Laperriere, Vincent, Santa-Eulalia, Luis Antonio, Ouhimmou, Mustapha and de Paula Ferreira, William.
2024.
« Machine learning in warehouse management: A survey ».
In 5th International Conference on Industry 4.0 and Smart Manufacturing, ISM 2023 (Lisbon, Portugal, Nov. 22-24, 2023)
Coll. « Procedia Computer Science », vol. 232.
pp. 2790-2799.
Elsevier B.V..
Compte des citations dans Scopus : 10.
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Abstract
Warehouse design and planning involve complex decisions on receiving, storage, order picking and shipping products (i.e., stock-keeping units - SKUs) and can affect the performance of entire supply chains. With the advancement of Industry 4.0 and increased data availability, high-computing power, and ample storage capacity, Machine Learning (ML) has become an appealing technology to address warehouse planning challenges such as Storage Location Assignment Problems (SLAP) and Order Picking Problems (OPP) for intelligent warehousing management. This paper presents a state-of-the-art review of ML applied to Warehouse Management Systems (WMS) through the analysis of recent research application articles. A mapping to classify the scientific literature in this new research area, including ML methods, algorithms, data sources and use cases of ML-aided WMS, as well as further research perspectives and challenges, are introduced. Preliminary results suggest that the possible research areas in ML-WMS are still incipient and need to be further explored.
| Item Type: | Conference proceeding |
|---|---|
| ISBN: | 18770509 |
| Professor: | Professor Ouhimmou, Mustapha de Paula Ferreira, William |
| Affiliation: | Génie des systèmes, Génie des systèmes |
| Date Deposited: | 29 Apr 2024 20:25 |
| Last Modified: | 13 May 2024 14:54 |
| URI: | https://espace2.etsmtl.ca/id/eprint/28603 |
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