A systematic review of machine learning in logistics and supply chain management: current trends and future directions

Journal Publication ResearchOnline@JCU
Akbari, Mohammadreza;Do, Thu Nguyen Anh
Abstract

Purpose – This paper presents a review of the existing state-of-the-art literature on machine learning (ML) in logistics and supply chain management (LSCM) by analyzing the current literature, contemporary concepts, data and gaps and suggesting potential topics for future research. Design/methodology/approach – A systematic/structured literature review in the subject discipline and a bibliometric analysis were organized. Information regarding industry involvement, geographic location, research design and methods, data analysis techniques, university, affiliation, publishers, authors, year of publications is documented. A wide collection of eight databases from 1994 to 2019 were explored using the keywords “Machine Learning” and “Logistics“, “Transportation” and “Supply Chain” in the title and/or abstract. A total of 110 articles were found, and information on a chain of variables was gathered. Findings – Over the last few decades, the application of emerging technologies has attracted significant interest all around the world. Analysis of the collected data shows that only nine literature reviews have been published in this area. Further, key findings show that 53.8 per cent of publications were closely clustered on transportation and manufacturing industries and 54.7 per cent were centred on mathematical models and simulations. Neural network is applied in 22 papers as their exclusive algorithms. Finally, the main focuses of the current literature are on prediction and optimization, where detection is contributed by only seven articles. Research limitations/implications – This review is limited to examining only academic sources available from Scopus, Elsevier, Web of Science, Emerald, JSTOR, SAGE, Springer, Taylor and Francis and Wiley which contain the words “Machine Learning” and “Logistics“,“Transportation” and “Supply Chain”in the title and/or abstract. Originality/value – This paper provides a systematic insight into research trends in ML in both logistics and the supply chain.

Journal

Benchmarking

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Volume

28

ISBN/ISSN

1758-4094

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Issue

10

Pages Count

29

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Publisher

Emerald

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Date

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EISSN

N/A

DOI

10.1108/BIJ-10-2020-0514