Skip to main content
Top
Published in: Artificial Intelligence Review 5/2023

30-09-2022

Applications of deep learning into supply chain management: a systematic literature review and a framework for future research

Authors: Fahimeh Hosseinnia Shavaki, Ali Ebrahimi Ghahnavieh

Published in: Artificial Intelligence Review | Issue 5/2023

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

In today’s complex and ever-changing world, Supply Chain Management (SCM) is increasingly becoming a cornerstone to any company to reckon with in this global era for all industries. The rapidly growing interest in the application of Deep Learning (a class of machine learning algorithms) in SCM, has urged the need for an up-to-date systematic review on the research development. The main purpose of this study is to provide a comprehensive vision by reviewing a set of 43 papers about applications of Deep Learning (DL) methods to the SCM, as well as the trends, perspectives, and potential research gaps. This review uses content analysis to answer three research questions namely: 1- What SCM problems have been solved by the use of DL techniques? 2- What DL algorithms have been used to solve these problems? 3- What alternative algorithms have been used to tackle the same problems? And do DL outperform these methods and through which evaluation metrics? This review also responds to this call by developing a conceptual framework in a value-adding perspective that provides a full picture of areas on where and how DL can be applied within the SCM context. This makes it easier to identify potential applications to corporations, in addition to potential future research areas to science. It might also provide businesses a competitive advantage over their competitors by allowing them to add value to their data by analyzing it quickly and precisely.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Appendix
Available only for authorised users
Literature
go back to reference Addo-Tenkorang RA (2016) Big data applications in operations/supply-chain management: a literature review. Comput Ind Eng 101:528–543CrossRef Addo-Tenkorang RA (2016) Big data applications in operations/supply-chain management: a literature review. Comput Ind Eng 101:528–543CrossRef
go back to reference Ahmadimanesh M, Tavakoli A, Pooya A, Dehghanian F (2020) Designing an optimal inventory management model for the blood supply chain. Medicine 99(29) Ahmadimanesh M, Tavakoli A, Pooya A, Dehghanian F (2020) Designing an optimal inventory management model for the blood supply chain. Medicine 99(29)
go back to reference Alom MZ, Taha TM, Yakopcic C, Westberg S, Sidike P, Nasrin MS, Asari VK (2019) A state-of-the-art survey on deep learning theory and architectures. Electronics 8(3):292CrossRef Alom MZ, Taha TM, Yakopcic C, Westberg S, Sidike P, Nasrin MS, Asari VK (2019) A state-of-the-art survey on deep learning theory and architectures. Electronics 8(3):292CrossRef
go back to reference Al-Sahaf H, Bi Y, Chen Q, Lensen A, Mei Y, Sun Y, Zhang M (2019) A survey on evolutionary machine learning. J R Soc N Z 49(2):205–228CrossRef Al-Sahaf H, Bi Y, Chen Q, Lensen A, Mei Y, Sun Y, Zhang M (2019) A survey on evolutionary machine learning. J R Soc N Z 49(2):205–228CrossRef
go back to reference Ariaa M, Cuccurullo C (2017) bibliometrix: an R-tool for comprehensive science mapping. J Informet 11(4):959–975CrossRef Ariaa M, Cuccurullo C (2017) bibliometrix: an R-tool for comprehensive science mapping. J Informet 11(4):959–975CrossRef
go back to reference Attaran M, Attaran S (2007) Collaborative supply chain management: the most promising practice for building efficient and sustainable supply chains. Bus Process Manag J Attaran M, Attaran S (2007) Collaborative supply chain management: the most promising practice for building efficient and sustainable supply chains. Bus Process Manag J
go back to reference Awah PC, Nam H, Kim S (2021) Short term forecast of container throughput: New variables application for the Port of Douala. J Mar Sci Eng 9(7):720CrossRef Awah PC, Nam H, Kim S (2021) Short term forecast of container throughput: New variables application for the Port of Douala. J Mar Sci Eng 9(7):720CrossRef
go back to reference Barbosa-Povoa AP, daSilva C, Carvalho A (2018) Opportunities and challenges in sustainable supply chain: an operations research perspective. Eur J Oper Res 268(2):399–431MathSciNetMATHCrossRef Barbosa-Povoa AP, daSilva C, Carvalho A (2018) Opportunities and challenges in sustainable supply chain: an operations research perspective. Eur J Oper Res 268(2):399–431MathSciNetMATHCrossRef
go back to reference Bertolinia M, Mezzogorib D, Neronib M, Zammorib F (2021) Machine Learning for industrial applications: a comprehensive literature review. Expert Syst Appl 175:114820CrossRef Bertolinia M, Mezzogorib D, Neronib M, Zammorib F (2021) Machine Learning for industrial applications: a comprehensive literature review. Expert Syst Appl 175:114820CrossRef
go back to reference Biggs EM, Bruce E, Boruff B, Duncan JM, Horsley J, Pauli N, Imanari Y (2015) Sustainable development and the water–energy–food nexus: a perspective on livelihoods. Environ Sci Policy 54:389–397CrossRef Biggs EM, Bruce E, Boruff B, Duncan JM, Horsley J, Pauli N, Imanari Y (2015) Sustainable development and the water–energy–food nexus: a perspective on livelihoods. Environ Sci Policy 54:389–397CrossRef
go back to reference Biswas S, Sen J (2017) A proposed architecture for big data driven supply chain analytics. arXiv preprint arXiv, 1705.04958 Biswas S, Sen J (2017) A proposed architecture for big data driven supply chain analytics. arXiv preprint arXiv, 1705.04958
go back to reference Bousqaoui H, Slimani I, Achchab S (2021) Comparative analysis of short-term demand predicting models using ARIMA and deep learning. Int J Electr Comput Eng 11(4):3319–3328 Bousqaoui H, Slimani I, Achchab S (2021) Comparative analysis of short-term demand predicting models using ARIMA and deep learning. Int J Electr Comput Eng 11(4):3319–3328
go back to reference Cachon GP (2001) Contracting to assure supply: how to share demand forecasts in a supply chain. Manag Sci 47(5):629–646MATHCrossRef Cachon GP (2001) Contracting to assure supply: how to share demand forecasts in a supply chain. Manag Sci 47(5):629–646MATHCrossRef
go back to reference Cai Y, Guan K, Peng J, Wang S, Seifert C (2018) A high-performance and in-season classification system of field-level crop types using time-series Landsat data and a machine learning approach. Rem Sens Environ 210:35–47CrossRef Cai Y, Guan K, Peng J, Wang S, Seifert C (2018) A high-performance and in-season classification system of field-level crop types using time-series Landsat data and a machine learning approach. Rem Sens Environ 210:35–47CrossRef
go back to reference Cavallo DP, Cefola M, Pace B, Logrieco AF, Attolico G (2018) Non-destructive automatic quality evaluation of fresh-cut iceberg lettuce through packaging material. J Food Eng 223:46–52CrossRef Cavallo DP, Cefola M, Pace B, Logrieco AF, Attolico G (2018) Non-destructive automatic quality evaluation of fresh-cut iceberg lettuce through packaging material. J Food Eng 223:46–52CrossRef
go back to reference Chakraborty S, Moore M, Parrillo-Chapman L (2021) Automatic defect detection for fabric printing using a deep convolutional neural network. Int J Fashion Des Technol Educ Chakraborty S, Moore M, Parrillo-Chapman L (2021) Automatic defect detection for fabric printing using a deep convolutional neural network. Int J Fashion Des Technol Educ
go back to reference Charmchi AS, Ifaei P, Yoo C (2021) Smart supply-side management of optimal hydro reservoirs using the water/energy nexus concept: a hydropower pinch analysis. Appl Energy 281:116136CrossRef Charmchi AS, Ifaei P, Yoo C (2021) Smart supply-side management of optimal hydro reservoirs using the water/energy nexus concept: a hydropower pinch analysis. Appl Energy 281:116136CrossRef
go back to reference Chen T, Yin H, Chen H, Wu L, Wang H, Zhou X, Li X (2018) TADA: trend alignment with dual-attention multi-task recurrent neural networks for sales prediction. IEEE Int Conf Data Mining 2018:49–58 Chen T, Yin H, Chen H, Wu L, Wang H, Zhou X, Li X (2018) TADA: trend alignment with dual-attention multi-task recurrent neural networks for sales prediction. IEEE Int Conf Data Mining 2018:49–58
go back to reference Chen H, Chen Z, Lin F, Zhuang P (2021) Effective management for blockchain-based agri-food supply chains using deep reinforcement learning. IEEE Access 9:36008–36018CrossRef Chen H, Chen Z, Lin F, Zhuang P (2021) Effective management for blockchain-based agri-food supply chains using deep reinforcement learning. IEEE Access 9:36008–36018CrossRef
go back to reference Chien C-F, Lin Y-S, Lin S-K (2020) Deep reinforcement learning for selecting demand forecast models to empower Industry 3.5 and an empirical study for a semiconductor component distributor. Int J Prod Res 58(9):2784–2804CrossRef Chien C-F, Lin Y-S, Lin S-K (2020) Deep reinforcement learning for selecting demand forecast models to empower Industry 3.5 and an empirical study for a semiconductor component distributor. Int J Prod Res 58(9):2784–2804CrossRef
go back to reference Cho K, Merrienboer BV, Gulcehre C, Bahdanau D, Bougares F, Schwenk H (2014) Learning phrase representations using RNN encoder–decoder. arXiv preprint arXiv:1406.1078 Cho K, Merrienboer BV, Gulcehre C, Bahdanau D, Bougares F, Schwenk H (2014) Learning phrase representations using RNN encoder–decoder. arXiv preprint arXiv:​1406.​1078
go back to reference Chuaysi B, Kiattisin S (2020) Fishing vessels behavior identification for combating IUU fishing: enable traceability at sea. Wirel Pers Commun 115:2971–2993CrossRef Chuaysi B, Kiattisin S (2020) Fishing vessels behavior identification for combating IUU fishing: enable traceability at sea. Wirel Pers Commun 115:2971–2993CrossRef
go back to reference Creswell A, White T, Dumoulin V, Arulkumaran K, Sengupta B, Bharath AA (2018) Generative adversarial networks: an overview. IEEE Signal Process Mag 35(1):53–65CrossRef Creswell A, White T, Dumoulin V, Arulkumaran K, Sengupta B, Bharath AA (2018) Generative adversarial networks: an overview. IEEE Signal Process Mag 35(1):53–65CrossRef
go back to reference Demir SP (2020) Logistics 4.0: SCM in Industry 4.0 Era:(Changing Patterns of Logistics in Industry 4.0 and role of digital transformation in SCM). In Logistics 4.0, pp 15–26 Demir SP (2020) Logistics 4.0: SCM in Industry 4.0 Era:(Changing Patterns of Logistics in Industry 4.0 and role of digital transformation in SCM). In Logistics 4.0, pp 15–26
go back to reference Deng Ge YP-J (2019) Retail supply chain management: a review of theories and practices. J Data Inf Manag 1:45–64CrossRef Deng Ge YP-J (2019) Retail supply chain management: a review of theories and practices. J Data Inf Manag 1:45–64CrossRef
go back to reference Dolgui AI (2018) Ripple effect in the supply chain: an analysis and recent literature. Int J Prod Res 56(1–2):414–430CrossRef Dolgui AI (2018) Ripple effect in the supply chain: an analysis and recent literature. Int J Prod Res 56(1–2):414–430CrossRef
go back to reference Francois-Lavet V, Henderson P, Islam R, Bellemare MG, Pineau J (2018) An Introduction to deep reinforcement learning. arXiv:1811.12560, 11(3–4) Francois-Lavet V, Henderson P, Islam R, Bellemare MG, Pineau J (2018) An Introduction to deep reinforcement learning. arXiv:​1811.​12560, 11(3–4)
go back to reference Gardner JT, Cooper MC (2003) Strategic supply chain mapping approaches. J Bus Logist 24(2):37–64CrossRef Gardner JT, Cooper MC (2003) Strategic supply chain mapping approaches. J Bus Logist 24(2):37–64CrossRef
go back to reference Garillos-Manliguez CA, Chiang JY (2021) Multimodal deep learning and visible-light and hyperspectral imaging for fruit maturity estimation. Sensors 21(4):1288CrossRef Garillos-Manliguez CA, Chiang JY (2021) Multimodal deep learning and visible-light and hyperspectral imaging for fruit maturity estimation. Sensors 21(4):1288CrossRef
go back to reference Girshick R (2015) Fast R-CNN. In: Proceedings of the IEEE International Conference on Computer Vision (ICCV), pp 1440–1448 Girshick R (2015) Fast R-CNN. In: Proceedings of the IEEE International Conference on Computer Vision (ICCV), pp 1440–1448
go back to reference Girshick R, Donahue FJ, Darrell T, Malik J (2014) Rich feature hierarchies for accurate object detection and semantic segmentation. In: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR), pp 580–587 Girshick R, Donahue FJ, Darrell T, Malik J (2014) Rich feature hierarchies for accurate object detection and semantic segmentation. In: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR), pp 580–587
go back to reference Goodfellow IJ, Pouget-Abadie J, Mirza M, Xu B, Warde-Farley D, Ozair S, Bengio Y (2014) Generative adversarial nets. Adv Neural Inf Process Syst 27 Goodfellow IJ, Pouget-Abadie J, Mirza M, Xu B, Warde-Farley D, Ozair S, Bengio Y (2014) Generative adversarial nets. Adv Neural Inf Process Syst 27
go back to reference Goodfellow I, Pouget-Abadie J, Mirza M, Xu B, Warde-Farley D, Ozair S, Bengio Y (2020) Generative adversarial networks. Commun ACM 63(11):139–144MathSciNetCrossRef Goodfellow I, Pouget-Abadie J, Mirza M, Xu B, Warde-Farley D, Ozair S, Bengio Y (2020) Generative adversarial networks. Commun ACM 63(11):139–144MathSciNetCrossRef
go back to reference Guo YL (2016) Deep learning for visual understanding: a review. Neurocomputing 187:27–48CrossRef Guo YL (2016) Deep learning for visual understanding: a review. Neurocomputing 187:27–48CrossRef
go back to reference Guo L (2020) Cross-border e-commerce platform for commodity automatic pricing model based on deep learning. Electron Commerce Res Guo L (2020) Cross-border e-commerce platform for commodity automatic pricing model based on deep learning. Electron Commerce Res
go back to reference Guo L, Wang T, Wu Z, Wang J, Wang M, Cui Z, Chen X (2020) Portable food-freshness prediction platform based on colorimetric barcode combinatorics and deep convolutional neural networks. Adv Mater 32(45):2004805CrossRef Guo L, Wang T, Wu Z, Wang J, Wang M, Cui Z, Chen X (2020) Portable food-freshness prediction platform based on colorimetric barcode combinatorics and deep convolutional neural networks. Adv Mater 32(45):2004805CrossRef
go back to reference Halawi L, Clarke A, George K (2022) Data types structure and data preparation process. In: Harnessing the power of analytics, pp 13–27 Halawi L, Clarke A, George K (2022) Data types structure and data preparation process. In: Harnessing the power of analytics, pp 13–27
go back to reference He K, Gkioxari G, Dollar P, Girshick R (2017) Mask R-CNN. In: Proceedings of the IEEE International Conference on Computer Vision (ICCV), pp 2961–2969 He K, Gkioxari G, Dollar P, Girshick R (2017) Mask R-CNN. In: Proceedings of the IEEE International Conference on Computer Vision (ICCV), pp 2961–2969
go back to reference Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural Comput 9(8):1735–1780CrossRef Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural Comput 9(8):1735–1780CrossRef
go back to reference Hossein Nia Shavaki F, Jolai F (2021) A rule-based heuristic algorithm for joint order batching and delivery planning of online retailers with multiple order pickers. Appl Intell 51:3917–3935CrossRef Hossein Nia Shavaki F, Jolai F (2021) A rule-based heuristic algorithm for joint order batching and delivery planning of online retailers with multiple order pickers. Appl Intell 51:3917–3935CrossRef
go back to reference Hu Z (2020) Statistical optimization of supply chain financial credit based on deep learning and fuzzy algorithm. J Intell Fuzzy Syst 38(6):7191–7202CrossRef Hu Z (2020) Statistical optimization of supply chain financial credit based on deep learning and fuzzy algorithm. J Intell Fuzzy Syst 38(6):7191–7202CrossRef
go back to reference Jagtap S, Bhatt C, Thik J, Rahimifard S (2019) Monitoring potato waste in food manufacturing using image processing and internet of things approach. Sustainability 11(11):3173CrossRef Jagtap S, Bhatt C, Thik J, Rahimifard S (2019) Monitoring potato waste in food manufacturing using image processing and internet of things approach. Sustainability 11(11):3173CrossRef
go back to reference Jayabalan JD (2021) Reshaping higher educational institutions through frugal open innovation. J Open Innov 7(2):145CrossRef Jayabalan JD (2021) Reshaping higher educational institutions through frugal open innovation. J Open Innov 7(2):145CrossRef
go back to reference Khan PW, Byun Y-C, Park N (2020) IoT-blockchain enabled optimized provenance system for food industry 4.0 using advanced deep learning. Sensors 20(10):2990CrossRef Khan PW, Byun Y-C, Park N (2020) IoT-blockchain enabled optimized provenance system for food industry 4.0 using advanced deep learning. Sensors 20(10):2990CrossRef
go back to reference Khaw YM, Jahromi AA, Arani MF, Sanner S, Kundur D, Kassouf M (2021) A deep learning-based cyberattack detection system for transmission protective relays. IEEE Trans Smart Grid 12(3):2554–2565CrossRef Khaw YM, Jahromi AA, Arani MF, Sanner S, Kundur D, Kassouf M (2021) A deep learning-based cyberattack detection system for transmission protective relays. IEEE Trans Smart Grid 12(3):2554–2565CrossRef
go back to reference Kilimci ZH, Akyuz AO, Uysal M, Akyokus S, Uysal MO, Bulbul BA, Ekmis MA (2019) An improved demand forecasting model using deep learning approach and proposed decision integration strategy for supply chain. Complexity Kilimci ZH, Akyuz AO, Uysal M, Akyokus S, Uysal MO, Bulbul BA, Ekmis MA (2019) An improved demand forecasting model using deep learning approach and proposed decision integration strategy for supply chain. Complexity
go back to reference Klaus D, Franz K-P (1994) Von der Kostenrechnung zum Kostenmanagement. Neuere Entwicklungen Im Kostenmanagement 1:15–30 Klaus D, Franz K-P (1994) Von der Kostenrechnung zum Kostenmanagement. Neuere Entwicklungen Im Kostenmanagement 1:15–30
go back to reference Koç E, Türkoğlu M (2021) Forecasting of medical equipment demand and outbreak spreading based on deep long short-term memory network: the COVID-19 pandemic in Turkey. Signal Image Video Process Koç E, Türkoğlu M (2021) Forecasting of medical equipment demand and outbreak spreading based on deep long short-term memory network: the COVID-19 pandemic in Turkey. Signal Image Video Process
go back to reference Kong J, Wang H, Wang X, Jin X, Fang X, Lind S (2021) Multi-stream hybrid architecture based on cross-level fusion strategy for fine-grained crop species recognition in precision agriculture. Comput Electron Agric 185:106134CrossRef Kong J, Wang H, Wang X, Jin X, Fang X, Lind S (2021) Multi-stream hybrid architecture based on cross-level fusion strategy for fine-grained crop species recognition in precision agriculture. Comput Electron Agric 185:106134CrossRef
go back to reference Kotsiopoulos T, Sarigiannidis P, Ioannidis D, Tzovaras D (2021) Machine learning and deep learning in smart manufacturing: the smart grid paradigm. Comput Sci Rev 40:100341MathSciNetCrossRef Kotsiopoulos T, Sarigiannidis P, Ioannidis D, Tzovaras D (2021) Machine learning and deep learning in smart manufacturing: the smart grid paradigm. Comput Sci Rev 40:100341MathSciNetCrossRef
go back to reference Kumar R, Verma R (2012) Classification algorithms for data mining: a survey. Int J Innov Eng Technol 1(2):7–14 Kumar R, Verma R (2012) Classification algorithms for data mining: a survey. Int J Innov Eng Technol 1(2):7–14
go back to reference LeCun Y, Bengio Y (1995) Convolutional networks for images, speech, and time series. Handb Brain Theory Neural Netw 3361(10):1995 LeCun Y, Bengio Y (1995) Convolutional networks for images, speech, and time series. Handb Brain Theory Neural Netw 3361(10):1995
go back to reference LeCun Y, Bottou L, Bengio Y, Haffner P (1998) Gradient-based learning applied to document recognition. Proc IEEE 86(11):2278–2324CrossRef LeCun Y, Bottou L, Bengio Y, Haffner P (1998) Gradient-based learning applied to document recognition. Proc IEEE 86(11):2278–2324CrossRef
go back to reference Liu W, Wang Z, Liu X, Zeng N, Liu Y, Alsaadi FE (2017) A survey of deep neural network architectures and their applications. Neurocomputing 234:11–26CrossRef Liu W, Wang Z, Liu X, Zeng N, Liu Y, Alsaadi FE (2017) A survey of deep neural network architectures and their applications. Neurocomputing 234:11–26CrossRef
go back to reference Liu Y, Feng L, Jin B (2020) Future-aware trend alignment for sales predictions. Information 11(12):558CrossRef Liu Y, Feng L, Jin B (2020) Future-aware trend alignment for sales predictions. Information 11(12):558CrossRef
go back to reference Louw JJ, Pienaar WJ (2011) Framework for advanced supply chain planning: large-scale petrochemical companies. Corporate Ownersh Control 8(4) Louw JJ, Pienaar WJ (2011) Framework for advanced supply chain planning: large-scale petrochemical companies. Corporate Ownersh Control 8(4)
go back to reference Manavalan E, Jayakrishna K (2019) A review of Internet of Things (IoT) embedded sustainable supply chain for industry 4.0 requirements. Comput Ind Eng 127:925–953CrossRef Manavalan E, Jayakrishna K (2019) A review of Internet of Things (IoT) embedded sustainable supply chain for industry 4.0 requirements. Comput Ind Eng 127:925–953CrossRef
go back to reference Mao D, Wang F, Hao Z, Li H (2018) Credit evaluation system based on blockchain for multiple stakeholders in the food supply chain. Environ Res Public Health 15(8):1627CrossRef Mao D, Wang F, Hao Z, Li H (2018) Credit evaluation system based on blockchain for multiple stakeholders in the food supply chain. Environ Res Public Health 15(8):1627CrossRef
go back to reference Meisheri H, Sultana NN, Baranwal M, Baniwal V, Nath S, Verma S, Khadilkar H (2021) Scalable multi-product inventory control with lead time constraints using reinforcement learning. Neural Comput Appl Meisheri H, Sultana NN, Baranwal M, Baniwal V, Nath S, Verma S, Khadilkar H (2021) Scalable multi-product inventory control with lead time constraints using reinforcement learning. Neural Comput Appl
go back to reference Meixell MJ, Gargeya VB (2005) Global supply chain design: a literature review and critique. Transp Res Part E 41(6):531–550CrossRef Meixell MJ, Gargeya VB (2005) Global supply chain design: a literature review and critique. Transp Res Part E 41(6):531–550CrossRef
go back to reference Melamed B, Rogers DS (2015) Equilibrium rate analysis in supply chain financial management. Supply Chain Forum 16(3):52–68CrossRef Melamed B, Rogers DS (2015) Equilibrium rate analysis in supply chain financial management. Supply Chain Forum 16(3):52–68CrossRef
go back to reference Michelberger P, Lábodi C (2009) Development of information security management system at the members of supply chain. Ann Univ Petroşani Econ 9(4):69–78 Michelberger P, Lábodi C (2009) Development of information security management system at the members of supply chain. Ann Univ Petroşani Econ 9(4):69–78
go back to reference Mnih V, Larochelle H, Hinton GE (2012) Conditional restricted boltzmann machines for structured output prediction. arXiv:1202.3748 Mnih V, Larochelle H, Hinton GE (2012) Conditional restricted boltzmann machines for structured output prediction. arXiv:​1202.​3748
go back to reference Mnih V, Kavukcuoglu K, Silver D, Rusu AA, Veness J, Bellemare MG, Hassabis D (2015) Human-level control through deep reinforcement learning. Nature 518:529–533CrossRef Mnih V, Kavukcuoglu K, Silver D, Rusu AA, Veness J, Bellemare MG, Hassabis D (2015) Human-level control through deep reinforcement learning. Nature 518:529–533CrossRef
go back to reference Mocanu E, Nguyen PH, Gibescu M, Kling WL (2016) Deep learning for estimating building energy consumption. Sustain Energy Grids Netw 6:91–99CrossRef Mocanu E, Nguyen PH, Gibescu M, Kling WL (2016) Deep learning for estimating building energy consumption. Sustain Energy Grids Netw 6:91–99CrossRef
go back to reference Montreuil B (2011) Toward a Physical Internet: meeting the global logistics sustainability grand challenge. Logist Res 3:71–87CrossRef Montreuil B (2011) Toward a Physical Internet: meeting the global logistics sustainability grand challenge. Logist Res 3:71–87CrossRef
go back to reference Mousavi SS, Schukat M, Howley E (2016). Deep reinforcement learning: an overview. In: Proceedings of SAI Intelligent Systems Conference (IntelliSys), pp 426–440 Mousavi SS, Schukat M, Howley E (2016). Deep reinforcement learning: an overview. In: Proceedings of SAI Intelligent Systems Conference (IntelliSys), pp 426–440
go back to reference Negash S, Gray P (2008) Business intelligence. Handbook on decision support systems 2. Springer, Berlin, pp 175–193CrossRef Negash S, Gray P (2008) Business intelligence. Handbook on decision support systems 2. Springer, Berlin, pp 175–193CrossRef
go back to reference Nguyen T, Li ZH, Spiegler V, Ieromonachou P, Lin Y (2018) Big data analytics in supply chain management: a state-of-the-art literature review. Comput Oper Res 98:254–264MathSciNetMATHCrossRef Nguyen T, Li ZH, Spiegler V, Ieromonachou P, Lin Y (2018) Big data analytics in supply chain management: a state-of-the-art literature review. Comput Oper Res 98:254–264MathSciNetMATHCrossRef
go back to reference Nikolopoulos K, Punia S, Schafers A, Tsinopoulos C, Vasilakis C (2021) Forecasting and planning during a pandemic: COVID-19 growth rates, supply chain disruptions, and governmental decisions. Eur J Oper Res 290(1):99–115MathSciNetMATHCrossRef Nikolopoulos K, Punia S, Schafers A, Tsinopoulos C, Vasilakis C (2021) Forecasting and planning during a pandemic: COVID-19 growth rates, supply chain disruptions, and governmental decisions. Eur J Oper Res 290(1):99–115MathSciNetMATHCrossRef
go back to reference Nti IK, Adekoya A, Weyori B, Nyarko-Boateng O (2021) Applications of artificial intelligence in engineering and manufacturing: a systematic review. J Intell Manuf Nti IK, Adekoya A, Weyori B, Nyarko-Boateng O (2021) Applications of artificial intelligence in engineering and manufacturing: a systematic review. J Intell Manuf
go back to reference Oliver RK, Webber MD (1982) Supply-chain management: logistics catches up with strategy. Outlook 5(1):42–47 Oliver RK, Webber MD (1982) Supply-chain management: logistics catches up with strategy. Outlook 5(1):42–47
go back to reference Pechmann A, Zarte M (2017) Procedure for generating a basis for PPC systems to schedule the. Procedia CIRP 64:393–398CrossRef Pechmann A, Zarte M (2017) Procedure for generating a basis for PPC systems to schedule the. Procedia CIRP 64:393–398CrossRef
go back to reference Piccialli F, Giampaolo F, Prezioso E, Camacho D, Acampora G (2021) Artificial intelligence and healthcare: forecasting of medical bookings through multi-source time-series fusion. Inf Fusion 74:1–16CrossRef Piccialli F, Giampaolo F, Prezioso E, Camacho D, Acampora G (2021) Artificial intelligence and healthcare: forecasting of medical bookings through multi-source time-series fusion. Inf Fusion 74:1–16CrossRef
go back to reference Portugal I, Alencar P, Cowan D (2018) The use of machine learning algorithms in recommender systems: a systematic review. Expert Syst Appl 97:205–227CrossRef Portugal I, Alencar P, Cowan D (2018) The use of machine learning algorithms in recommender systems: a systematic review. Expert Syst Appl 97:205–227CrossRef
go back to reference Pouyanfar S, Sadiq S, Yan Y, Tian H, Tao Y, Reyes MP, Iyengar SS (2018) A survey on deep learning: Algorithms, techniques, and applications. ACM Comput Surv 51(5):1–36CrossRef Pouyanfar S, Sadiq S, Yan Y, Tian H, Tao Y, Reyes MP, Iyengar SS (2018) A survey on deep learning: Algorithms, techniques, and applications. ACM Comput Surv 51(5):1–36CrossRef
go back to reference Punia S, Singh SP, Madaan JK (2020) A cross-temporal hierarchical framework and deep learning for supply chain forecasting. Comput Ind Eng 149:106796CrossRef Punia S, Singh SP, Madaan JK (2020) A cross-temporal hierarchical framework and deep learning for supply chain forecasting. Comput Ind Eng 149:106796CrossRef
go back to reference Ren S, He K, Girshick R, Sun J (2015) Faster R-CNN: towards real-time object detection. Adv Neural Inf Process Syst 28:91–99 Ren S, He K, Girshick R, Sun J (2015) Faster R-CNN: towards real-time object detection. Adv Neural Inf Process Syst 28:91–99
go back to reference Ribeiro J, Barbosa-Povoa A (2018) Supply Chain Resilience: definitions and quantitative modelling approaches—a literature review. Comput Ind Eng 115:109–122CrossRef Ribeiro J, Barbosa-Povoa A (2018) Supply Chain Resilience: definitions and quantitative modelling approaches—a literature review. Comput Ind Eng 115:109–122CrossRef
go back to reference Robinson CJ, Malhotra MK (2005) Defining the concept of supply chain quality management and its relevance to academic and industrial practice. Int J Prod Econ 96(3):315–337CrossRef Robinson CJ, Malhotra MK (2005) Defining the concept of supply chain quality management and its relevance to academic and industrial practice. Int J Prod Econ 96(3):315–337CrossRef
go back to reference Roggeveen AL, Sethuraman R (2020) How the COVID-19 pandemic may change the world of retailing. J Retail 96(2):169–171CrossRef Roggeveen AL, Sethuraman R (2020) How the COVID-19 pandemic may change the world of retailing. J Retail 96(2):169–171CrossRef
go back to reference Roth AV, Tsay AA, Pullman ME, Gray JV (2008) Unraveling the food supply chain: strategic insights from China and the 2007 recalls. J Supply Chain Manag 44(1):22–39CrossRef Roth AV, Tsay AA, Pullman ME, Gray JV (2008) Unraveling the food supply chain: strategic insights from China and the 2007 recalls. J Supply Chain Manag 44(1):22–39CrossRef
go back to reference Schlüter FF, Hetterscheid E, Henke M (2019) A simulation-based evaluation approach for digitalization scenarios in smart supply chain risk management. J Ind Eng Manag Sci 1:179–206 Schlüter FF, Hetterscheid E, Henke M (2019) A simulation-based evaluation approach for digitalization scenarios in smart supply chain risk management. J Ind Eng Manag Sci 1:179–206
go back to reference Schmidhuber J (2015) Deep learning in neural networks: an overview. Neural Netw 61:85–117CrossRef Schmidhuber J (2015) Deep learning in neural networks: an overview. Neural Netw 61:85–117CrossRef
go back to reference Shajalal M, Hajek P, Abedin MZ (2021) Product backorder prediction using deep neural network on imbalanced data. Anal Mach Learn Scheduling Routing Optim Shajalal M, Hajek P, Abedin MZ (2021) Product backorder prediction using deep neural network on imbalanced data. Anal Mach Learn Scheduling Routing Optim
go back to reference Shankar S, Ilavarasan PV, Punia S, Singh SP (2020) Forecasting container throughput with long short-term memory networks. Ind Manag Data Syst 120(3):425–441CrossRef Shankar S, Ilavarasan PV, Punia S, Singh SP (2020) Forecasting container throughput with long short-term memory networks. Ind Manag Data Syst 120(3):425–441CrossRef
go back to reference Shavaki FH, Jolai F (2021) Formulating and solving the integrated online order batching and delivery planning with specific due dates for orders. J Intell Fuzzy Syst 40(3):4877–4903CrossRef Shavaki FH, Jolai F (2021) Formulating and solving the integrated online order batching and delivery planning with specific due dates for orders. J Intell Fuzzy Syst 40(3):4877–4903CrossRef
go back to reference Shrestha A, Mahmood A (2019) Review of deep learning algorithms and architectures. IEEE Access 7:53040–53065CrossRef Shrestha A, Mahmood A (2019) Review of deep learning algorithms and architectures. IEEE Access 7:53040–53065CrossRef
go back to reference Shukla RK, Garg D, Agarwal A (2011) Understanding of supply chain: a literature review. Int J Eng Sci Technol 3(3):2059–2072 Shukla RK, Garg D, Agarwal A (2011) Understanding of supply chain: a literature review. Int J Eng Sci Technol 3(3):2059–2072
go back to reference Simatupang TM, Sridharan R (2002) The collaborative supply chain. Int J Logistics Manag 13(1):15–30CrossRef Simatupang TM, Sridharan R (2002) The collaborative supply chain. Int J Logistics Manag 13(1):15–30CrossRef
go back to reference Singh D, Verma A (2018) Inventory management in supply chain. Mater Today 5(2):3867–3872MathSciNet Singh D, Verma A (2018) Inventory management in supply chain. Mater Today 5(2):3867–3872MathSciNet
go back to reference Skjott-Larsen T, Schary PB, Kotzab H, Mikkola JH (2007) Managing the global supply chain. Copenhagen Business School Press DK, Copenhagen Skjott-Larsen T, Schary PB, Kotzab H, Mikkola JH (2007) Managing the global supply chain. Copenhagen Business School Press DK, Copenhagen
go back to reference Stockman AC (1987) Economic theory and exchange rate forecasts. Int J Forecast 3(1):3–15CrossRef Stockman AC (1987) Economic theory and exchange rate forecasts. Int J Forecast 3(1):3–15CrossRef
go back to reference Tang Z, Ge Y (2021) CNN model optimization and intelligent balance model for material demand forecast. Int J Syst Assur Eng Manag Tang Z, Ge Y (2021) CNN model optimization and intelligent balance model for material demand forecast. Int J Syst Assur Eng Manag
go back to reference Taylor GW, Hinton GE, Roweis ST (2011) Two distributed-state models for generating high-dimensional time series. J Mach Learn Res 12(3) Taylor GW, Hinton GE, Roweis ST (2011) Two distributed-state models for generating high-dimensional time series. J Mach Learn Res 12(3)
go back to reference Thomopoulos NT (2015) Demand forecasting for inventory control. In: Demand forecasting for inventory control. Springer, Cham, pp 1–10) Thomopoulos NT (2015) Demand forecasting for inventory control. In: Demand forecasting for inventory control. Springer, Cham, pp 1–10)
go back to reference Thota M, Kollias S, Swainson M, Leontidis G (2020) Multi-source domain adaptation for quality control in retail food packaging. Comput Ind 123:103293CrossRef Thota M, Kollias S, Swainson M, Leontidis G (2020) Multi-source domain adaptation for quality control in retail food packaging. Comput Ind 123:103293CrossRef
go back to reference Tirkolaee EB, Sadeghi S, Mooseloo FM, Vandchali HR, Aeini S (2021) Application of machine learning in supply chain management: a comprehensive overview of the main areas. Math Probl Eng Tirkolaee EB, Sadeghi S, Mooseloo FM, Vandchali HR, Aeini S (2021) Application of machine learning in supply chain management: a comprehensive overview of the main areas. Math Probl Eng
go back to reference Tosida ET, Wahyudin I, Andria F, Wihartiko FD, Hoerudin A (2020) Optimizing the classification assistance through supply chain management for telematics SMEs in Indonesia using deep learning approach. Int J Supply Chain Manag 9(3):18 Tosida ET, Wahyudin I, Andria F, Wihartiko FD, Hoerudin A (2020) Optimizing the classification assistance through supply chain management for telematics SMEs in Indonesia using deep learning approach. Int J Supply Chain Manag 9(3):18
go back to reference Vanvuchelen N, Gijsbrechts J, Boute R (2020) Use of proximal policy optimization for the joint replenishment problem. Comput Ind 119:103239CrossRef Vanvuchelen N, Gijsbrechts J, Boute R (2020) Use of proximal policy optimization for the joint replenishment problem. Comput Ind 119:103239CrossRef
go back to reference Vlachopoulou M, Manthou V (2005) Supply chain and relationship management systems supporting the responsive enterprise: an empirical research. Int J Serv Oper Manag 1(4):358–371 Vlachopoulou M, Manthou V (2005) Supply chain and relationship management systems supporting the responsive enterprise: an empirical research. Int J Serv Oper Manag 1(4):358–371
go back to reference Vo SA, Scanlan J, Turner P (2020) An application of convolutional neural network to lobster grading in the Southern Rock Lobster supply chain. Food Control 113:107184CrossRef Vo SA, Scanlan J, Turner P (2020) An application of convolutional neural network to lobster grading in the Southern Rock Lobster supply chain. Food Control 113:107184CrossRef
go back to reference Wang M (2020) Applying Internet information technology combined with deep learning to tourism collaborative recommendation system. PLoS ONE 15(12):e0240656CrossRef Wang M (2020) Applying Internet information technology combined with deep learning to tourism collaborative recommendation system. PLoS ONE 15(12):e0240656CrossRef
go back to reference Wang Y, Luo YJ, Peng YL (2008) Study the logistics financial management of supply chain system engineering based on the fractal theory. In: 2008 4th International Conference on Wireless Communications, Networking and Mobile Computing. Dalian, China Wang Y, Luo YJ, Peng YL (2008) Study the logistics financial management of supply chain system engineering based on the fractal theory. In: 2008 4th International Conference on Wireless Communications, Networking and Mobile Computing. Dalian, China
go back to reference Wang J, Ma Y, Zhang L, Gao RX, Wu D (2018) Deep learning for smart manufacturing: methods and applications. J Manuf Syst 48:144–156CrossRef Wang J, Ma Y, Zhang L, Gao RX, Wu D (2018) Deep learning for smart manufacturing: methods and applications. J Manuf Syst 48:144–156CrossRef
go back to reference Wang K, Kumar V, Zeng X, Koehl L, Tao X, Chen Y (2019) Development of a textile coding tag for the traceability in textile supply chain by using pattern recognition and robust deep learning. Int J Comput Intell Syst 12(2):713–722CrossRef Wang K, Kumar V, Zeng X, Koehl L, Tao X, Chen Y (2019) Development of a textile coding tag for the traceability in textile supply chain by using pattern recognition and robust deep learning. Int J Comput Intell Syst 12(2):713–722CrossRef
go back to reference Weng T, Liu W, Xiao J (2019a) Supply chain sales forecasting based on lightGBM and LSTM combination model. Ind Manag Data Syst 120(2):265–279CrossRef Weng T, Liu W, Xiao J (2019a) Supply chain sales forecasting based on lightGBM and LSTM combination model. Ind Manag Data Syst 120(2):265–279CrossRef
go back to reference Weng Y, Wang X, Hua J, Wang H, Kang M, Wang FY (2019b) Forecasting horticultural products price using ARIMA model and neural network based on a large-scale data set collected by Web crawler. IEEE Trans Comput Soc Syst 6(3):547–553CrossRef Weng Y, Wang X, Hua J, Wang H, Kang M, Wang FY (2019b) Forecasting horticultural products price using ARIMA model and neural network based on a large-scale data set collected by Web crawler. IEEE Trans Comput Soc Syst 6(3):547–553CrossRef
go back to reference Wichmann P, Brintrup A, Baker S, Woodall P, McFarlane D (2020) Extracting supply chain maps from news articles using deep neural networks. Int J Prod Res 58(17):5320–5336CrossRef Wichmann P, Brintrup A, Baker S, Woodall P, McFarlane D (2020) Extracting supply chain maps from news articles using deep neural networks. Int J Prod Res 58(17):5320–5336CrossRef
go back to reference Wu B, Wang L, Wang S, Zeng YR (2021) Forecasting the U.S. oil markets based on social media information during the COVID-19 pandemic. Energy 226:120403CrossRef Wu B, Wang L, Wang S, Zeng YR (2021) Forecasting the U.S. oil markets based on social media information during the COVID-19 pandemic. Energy 226:120403CrossRef
go back to reference Yalan Y, Wei T (2021) Deep logistic learning framework for E-commerce and supply chain management platform. Arab J Sci Eng Yalan Y, Wei T (2021) Deep logistic learning framework for E-commerce and supply chain management platform. Arab J Sci Eng
go back to reference Yasutomi AY, Enoki H (2020) Localization of inspection device along belt conveyors with multiple branches using deep neural networks. IEEE Robot Autom Lett 5(2):2921–2928CrossRef Yasutomi AY, Enoki H (2020) Localization of inspection device along belt conveyors with multiple branches using deep neural networks. IEEE Robot Autom Lett 5(2):2921–2928CrossRef
go back to reference Zhao S, You F (2020) Distributionally robust chance constrained programming with Generative Adversarial Networks (GANs). AIChE J 66(6):e16963CrossRef Zhao S, You F (2020) Distributionally robust chance constrained programming with Generative Adversarial Networks (GANs). AIChE J 66(6):e16963CrossRef
go back to reference Zhou L, Zhang C, Liu F, Qiu Z, He Y (2019) Application of deep learning in food: a review. Compr Rev Food Sci Food Saf 18(6):1793–1811CrossRef Zhou L, Zhang C, Liu F, Qiu Z, He Y (2019) Application of deep learning in food: a review. Compr Rev Food Sci Food Saf 18(6):1793–1811CrossRef
go back to reference Zhou H, Sun G, Fu S, Fan X, Jiang W, Hu S, Li L (2020) A distributed approach of big data mining for financial fraud detection in a supply chain. Comput Mater Continua 64(2):1091–1105CrossRef Zhou H, Sun G, Fu S, Fan X, Jiang W, Hu S, Li L (2020) A distributed approach of big data mining for financial fraud detection in a supply chain. Comput Mater Continua 64(2):1091–1105CrossRef
go back to reference Zhu L, Spachos P, Pensini E, Plataniotis KN (2021) Deep learning and machine vision for food processing: a survey. Curr Res Food Sci 4:233–249CrossRef Zhu L, Spachos P, Pensini E, Plataniotis KN (2021) Deep learning and machine vision for food processing: a survey. Curr Res Food Sci 4:233–249CrossRef
Metadata
Title
Applications of deep learning into supply chain management: a systematic literature review and a framework for future research
Authors
Fahimeh Hosseinnia Shavaki
Ali Ebrahimi Ghahnavieh
Publication date
30-09-2022
Publisher
Springer Netherlands
Published in
Artificial Intelligence Review / Issue 5/2023
Print ISSN: 0269-2821
Electronic ISSN: 1573-7462
DOI
https://doi.org/10.1007/s10462-022-10289-z

Other articles of this Issue 5/2023

Artificial Intelligence Review 5/2023 Go to the issue

Premium Partner