Industrial 4.0 (I4.0) is believed to revolutionize supply chain (SC) management and the articles in this domain have experienced remarkable increments in recent years. However, the existing insights are scattered over different sub-topics and most of the existing review papers have ignored the underground decision-making process using OR methods. This paper aims to depict the current state of the art of the articles on SC optimization in I4.0 and identify the frontiers and limitations as well as the promising research avenue in this arena. In this study, the systematic literature review methodology combined with the content analysis is adopted to survey the literature between 2013 and 2022. It contributes to the literature by identifying the four OR innovations to typify the recent advances in SC optimization: new modeling conditions, new inputs, new decisions, and new algorithms. Furthermore, we recommend four promising research avenues in this interplay: (1) incorporating new decisions relevant to data-enabled SC decisions, (2) developing data-enabled modeling approaches, (3) preprocessing parameters, and (4) developing data-enabled algorithms. Scholars can take this investigation as a means to ignite collaborative research that tackles the emerging problems in business, whereas practitioners can glean a better understanding of how to employ their OR experts to support digital SC decision-making.

Xu, Z., Elomri, A., Baldacci, R., Kerbache, L., Wu, Z. (2024). Frontiers and trends of supply chain optimization in the age of industry 4.0: an operations research perspective. ANNALS OF OPERATIONS RESEARCH, 338(2-3), 1359-1401 [10.1007/s10479-024-05879-9].

Frontiers and trends of supply chain optimization in the age of industry 4.0: an operations research perspective

Baldacci R.;
2024

Abstract

Industrial 4.0 (I4.0) is believed to revolutionize supply chain (SC) management and the articles in this domain have experienced remarkable increments in recent years. However, the existing insights are scattered over different sub-topics and most of the existing review papers have ignored the underground decision-making process using OR methods. This paper aims to depict the current state of the art of the articles on SC optimization in I4.0 and identify the frontiers and limitations as well as the promising research avenue in this arena. In this study, the systematic literature review methodology combined with the content analysis is adopted to survey the literature between 2013 and 2022. It contributes to the literature by identifying the four OR innovations to typify the recent advances in SC optimization: new modeling conditions, new inputs, new decisions, and new algorithms. Furthermore, we recommend four promising research avenues in this interplay: (1) incorporating new decisions relevant to data-enabled SC decisions, (2) developing data-enabled modeling approaches, (3) preprocessing parameters, and (4) developing data-enabled algorithms. Scholars can take this investigation as a means to ignite collaborative research that tackles the emerging problems in business, whereas practitioners can glean a better understanding of how to employ their OR experts to support digital SC decision-making.
2024
Xu, Z., Elomri, A., Baldacci, R., Kerbache, L., Wu, Z. (2024). Frontiers and trends of supply chain optimization in the age of industry 4.0: an operations research perspective. ANNALS OF OPERATIONS RESEARCH, 338(2-3), 1359-1401 [10.1007/s10479-024-05879-9].
Xu, Z.; Elomri, A.; Baldacci, R.; Kerbache, L.; Wu, Z.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1006579
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