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Systematic literature review of machine learning for manufacturing supply chain

Smita Abhijit Ganjare (Department of Mechanical Engineering, Lokmanya Tilak College of Engineering, Navi Mumbai, India)
Sunil M. Satao (Department of Mechanical Engineering, Lokmanya Tilak College of Engineering, Navi Mumbai, India)
Vaibhav Narwane (Department of Mechanical Engineering, K J Somaiya College of Engineering, Mumbai, India)

The TQM Journal

ISSN: 1754-2731

Article publication date: 8 August 2023

448

Abstract

Purpose

In today's fast developing era, the volume of data is increasing day by day. The traditional methods are lagging for efficiently managing the huge amount of data. The adoption of machine learning techniques helps in efficient management of data and draws relevant patterns from that data. The main aim of this research paper is to provide brief information about the proposed adoption of machine learning techniques in different sectors of manufacturing supply chain.

Design/methodology/approach

This research paper has done rigorous systematic literature review of adoption of machine learning techniques in manufacturing supply chain from year 2015 to 2023. Out of 511 papers, 74 papers are shortlisted for detailed analysis.

Findings

The papers are subcategorised into 8 sections which helps in scrutinizing the work done in manufacturing supply chain. This paper helps in finding out the contribution of application of machine learning techniques in manufacturing field mostly in automotive sector.

Practical implications

The research is limited to papers published from year 2015 to year 2023. The limitation of the current research that book chapters, unpublished work, white papers and conference papers are not considered for study. Only English language articles and review papers are studied in brief. This study helps in adoption of machine learning techniques in manufacturing supply chain.

Originality/value

This study is one of the few studies which investigate machine learning techniques in manufacturing sector and supply chain through systematic literature survey.

Highlights

  1. A comprehensive understanding of Machine Learning techniques is presented.

  2. The state of art of adoption of Machine Learning techniques are investigated.

  3. The methodology of (SLR) is proposed.

  4. An innovative study of Machine Learning techniques in manufacturing supply chain.

Keywords

Citation

Ganjare, S.A., Satao, S.M. and Narwane, V. (2023), "Systematic literature review of machine learning for manufacturing supply chain", The TQM Journal, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/TQM-12-2022-0365

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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