2021
DOI: 10.1108/jeim-09-2020-0361
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Machine learning applications for sustainable manufacturing: a bibliometric-based review for future research

Abstract: PurposeThe role of data analytics is significantly important in manufacturing industries as it holds the key to address sustainability challenges and handle the large amount of data generated from different types of manufacturing operations. The present study, therefore, aims to conduct a systematic and bibliometric-based review in the applications of machine learning (ML) techniques for sustainable manufacturing (SM).Design/methodology/approachIn the present study, the authors use a bibliometric review approa… Show more

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Cited by 57 publications
(30 citation statements)
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References 59 publications
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“…The objective of this study is to present an implementation model of Industry 4.0. A holistic model for implementing Industry 4.0 was proposed, based on cleaner production as a fundamental tool for the development of production systems that meet the Sustainable Development Goals (SDGs) and social stakeholders considered pillars for this implementation process, helping to develop sustainable infrastructure [74][75][76][77][78][79], processes [18,80] and technologies [16][17][18][19][20]47,[74][75][76]79,84] to increase the sustainable transformation of these companies towards Industry 4.0. The model was evaluated and improved by specialists through the Delphi technique.…”
Section: Discussionmentioning
confidence: 99%
See 2 more Smart Citations
“…The objective of this study is to present an implementation model of Industry 4.0. A holistic model for implementing Industry 4.0 was proposed, based on cleaner production as a fundamental tool for the development of production systems that meet the Sustainable Development Goals (SDGs) and social stakeholders considered pillars for this implementation process, helping to develop sustainable infrastructure [74][75][76][77][78][79], processes [18,80] and technologies [16][17][18][19][20]47,[74][75][76]79,84] to increase the sustainable transformation of these companies towards Industry 4.0. The model was evaluated and improved by specialists through the Delphi technique.…”
Section: Discussionmentioning
confidence: 99%
“…It is expected that the implementation of the concepts of Industry 4.0 will bring great opportunities, such as: (1) Provide better production and planning control, through the integration of technologies and communication between customers, suppliers, production and other relevant stakeholders, (2) Increase the company's global competitiveness, (3) Become or be seen as a modern company, (4) Improve the quality of the production lines, (5) Become or be seen as a company that provides products with superior performance, (6) Reach a better customer/business interaction (pre-sales/sales/after-sales), (7) Increase market share, (8) Deliver products in less time than competitors, (9) Become or be seen as a trustworthy company, (10) Delivery within the initial forecast [18,[74][75][76][77][78].…”
Section: Opportunitiesmentioning
confidence: 99%
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“…Deep learning helps improve the quality control tasks of a manufacturing unit, as it helps to detect quality-related issues. Deep learning can optimize quality processes (Kannan & Garad, 2021 ) and detect problems in quality with high levels of precision, which is difficult to achieve through traditional quality control mechanisms (Jamwal et al, 2021 ; Naoui et al, 2021 ). One of the main impacts of deep learning technology is to improve the QCC of a manufacturing unit (Hassan, 2017 ).…”
Section: Theoretical Background and Development Of Conceptual Modelmentioning
confidence: 99%
“…ML develop accurate models for a variety of complex problems [18]. In the case of the Blast Furnace, very complex chemical and thermodynamic issues arise.…”
Section: Artificial Intelligence and Machine Learning (Ai/ml) And Traditional Data Analyticsmentioning
confidence: 99%