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Deep learning applications in manufacturing operations: a review of trends and ways forward

Saumyaranjan Sahoo Orcid Logo, Satish Kumar Orcid Logo, Abedin Abedin, Weng Marc Lim Orcid Logo, Suresh Kumar Jakhar Orcid Logo

Journal of Enterprise Information Management, Volume: 36, Issue: 1, Pages: 221 - 251

Swansea University Author: Abedin Abedin

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Abstract

Purpose: Deep learning (DL) technologies assist manufacturers to manage their business operations. This research aims to present state-of-the-art insights on the trends and ways forward for DL applications in manufacturing operations. Design/methodology/approach: Using bibliometric analysis and the...

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Published in: Journal of Enterprise Information Management
ISSN: 1741-0398
Published: Emerald 2023
Online Access: Check full text

URI: https://cronfa.swan.ac.uk/Record/cronfa64251
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Abstract: Purpose: Deep learning (DL) technologies assist manufacturers to manage their business operations. This research aims to present state-of-the-art insights on the trends and ways forward for DL applications in manufacturing operations. Design/methodology/approach: Using bibliometric analysis and the SPAR-4-SLR protocol, this research conducts a systematic literature review to present a scientific mapping of top-tier research on DL applications in manufacturing operations. Findings: This research discovers and delivers key insights on six knowledge clusters pertaining to DL applications in manufacturing operations: automated system modelling, intelligent fault diagnosis, forecasting, sustainable manufacturing, environmental management, and intelligent scheduling. Research limitations/implications: This research establishes the important roles of DL in manufacturing operations. However, these insights were derived from top-tier journals only. Therefore, this research does not discount the possibility of the availability of additional insights in alternative outlets, such as conference proceedings, where teasers into emerging and developing concepts may be published. Originality/value: This research contributes seminal insights into DL applications in manufacturing operations. In this regard, this research is valuable to readers (academic scholars and industry practitioners) interested to gain an understanding of the important roles of DL in manufacturing operations as well as the future of its applications for Industry 4.0, such as Maintenance 4.0, Quality 4.0, Logistics 4.0, Manufacturing 4.0, Sustainability 4.0, and Supply Chain 4.0.
Keywords: Deep learning, Industry 4.0, Manufacturing, Operations, Maintenance, Quality, Logistics, Sustainability, Supply chain
College: Faculty of Humanities and Social Sciences
Issue: 1
Start Page: 221
End Page: 251