ÜRETİM YÖNETİMİNDE DİJİTAL DÖNÜŞÜM: BİBLİYOMETRİK TEMELLİ SİSTEMATİK BİR İNCELEME
Year 2023,
Volume: 19 Issue: 1, 123 - 150, 24.03.2023
Fatma Demircan Keskin
,
Ural Gökay Çiçekli
Abstract
Dijital dönüşümün en çok etkilediği alanlarının başında şüphesiz ki Üretim/İşlemler Yönetimi disiplini gelmektedir. Üretim/İşlemler Yönetimindeki bu etkileri ortaya çıkarmak ve gelecekteki araştırma yönlerini yorumlayabilmek için alandaki bilimsel literatürün derinlemesine incelenmesi ve analiz edilmesi gerekmektedir. Bu çalışmada, dijital dönüşüm ve Üretim/İşlemler Yönetimi arasındaki ilişki hakkında geniş bir perspektif çizmek, bu araştırma alanının tematik evrimini ortaya çıkarmak ve gelecekteki potansiyel araştırma yönleri hakkında çıkarım yapmak için sistematik literatür taraması ve bibliyometrik analizi içeren iki aşamalı bir yaklaşım kullanılmıştır. Analize, 2007-2021 yılları arasında bu araştırma alanında Web of Science (Wos) ve Scopus veri tabanlarında taranan dergilerde yayınlanan makaleler dahil edilmiştir. Araştırma örneklemine seçilen 3021 makalenin tanımlayıcı analizleri ile bu araştırma alanında öne çıkan makaleler, yazarlar, ülkeler, dergiler ve anahtar kelimeler belirlenmiştir. Verilerin tanımlayıcı analizlerinin ardından anahtar kelimelerin birlikte oluşum analizi, tematik evrim ve tematik harita analizi RStudio ve VOSviewer kullanılarak gerçekleştirilmiştir. Tüm bibliyometrik analizler R Bibliometrix paketi kullanılarak yapılmıştır.
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DIGITAL TRANSFORMATION IN OPERATIONS MANAGEMENT: A BIBLIOMETRIC-BASED SYSTEMATIC REVIEW
Year 2023,
Volume: 19 Issue: 1, 123 - 150, 24.03.2023
Fatma Demircan Keskin
,
Ural Gökay Çiçekli
Abstract
Digital transformation undoubtedly has important implications on the discipline of Operations Management. To unveil these effects and interpret the future research directions requires an in-depth review and analysis of the scientific literature on this research area. This study uses a two-stage approach including Systematic Literature Review and bibliometric analysis to draw a broad perspective on the relationship between DT and OM, reveal the thematic evolution of this research area, and inference about potential future research directions. The scope of the analysis includes the articles drawn from the Web of Science and Scopus databases published between 2007 and 2021 in this research area. With the descriptive analysis of 3021 selected articles to the research sample, top articles, authors, countries, journals, and keywords in this research field were determined. Following the descriptive analysis of the data, the co-occurrence analysis of keywords, thematic evolution, and thematic map analysis was conducted using RStudio and VOSviewer.. All bibliometric analyzes were performed using the R Bibliometrix package.
References
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- Civerchia, F., Bocchino, S., Salvadori, C., Rossi, E., Maggiani, L., & Petracca, M. (2017). Industrial Internet of Things monitoring solution for advanced predictive maintenance applications. Journal of Industrial Information Integration,
7, 4-12.
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- Culot, G., Nassimbeni, G., Orzes, G., & Sartor, M. (2020). Behind the definition of Industry 4.0: Analysis and open questions. International Journal of Production Economics, 226, 107617.
- Davis, J., Edgar, T., Porter, J., Bernaden, J., & Sarli, M. (2012). Smart manufacturing, manufacturing intelligence and demand-dynamic performance. Computers & Chemical Engineering, 47, 145-156.
- Denyer, D. and Tranfield, D. (2009). Producing a systematic review. In Buchanan, D. and Bryman, A. (Eds.), The Sage Handbook of Organizational Research Methods (pp.671–689), London: Sage.
- Dhamija, P. and Bag, S. (2020). Role of artificial intelligence in operations environment: a review and bibliometric analysis, The TQM Journal, 32(4), 869-896.
- Dougherty, D., & Dunne, D. D. (2012). Digital science and knowledge boundaries in complex innovation. Organization Science, 23(5), 1467-1484.
- Ebert, C., & Duarte, C. H. C. (2018). Digital transformation. IEEE Software, 35(4), 16-21.
- Esmaeilian, B., Sarkis, J., Lewis, K., & Behdad, S. (2020). Blockchain for the future of sustainable supply chain management in Industry 4.0. Resources, Conservation and Recycling, 163, 105064.
- Evangelista, R., Guerrieri, P., & Meliciani, V. (2014). The economic impact of digital technologies in Europe. Economics of Innovation and new technology, 23(8), 802-824.
- Fatorachian, H., & Kazemi, H. (2021). Impact of Industry 4.0 on supply chain performance. Production Planning & Control, 32(1), 63-81.
- Fry, T. D., Donohue, J. M., Saladin, B. A., & Shang, G. (2013). The origins of research and patterns of authorship in the International Journal of Production Research. International Journal of Production Research, 51(23-24), 7470-7500.
- Fu, B., Shu, Z., & Liu, X. (2018). Blockchain enhanced emission trading framework in fashion apparel manufacturing industry. Sustainability, 10(4), 1105.
- Heizer, J. & Render, B. (2014). Operations management (7th ed.), Prentice Hall
- Helu, M., Morris, K., Jung, K., Lyons, K., & Leong, S. (2015). Identifying performance assurance challenges for smart
manufacturing. Manufacturing letters, 6, 1-4.
- Henfridsson, O., Mathiassen, L., & Svahn, F. (2014). Managing technological change in the digital age: the role of architectural frames. Journal of Information Technology, 29(1), 27-43.
- Hirsch, J. E. (2005). An index to quantify an individual's scientific research output. Proceedings of the National academy of Sciences, 102(46), 16569-16572.
- Hofmann, E., & Rüsch, M. (2017). Industry 4.0 and the current status as well as future prospects on logistics. Computers in industry, 89, 23-34.
- Hosseini, S., Baziyad, H., Norouzi, R., Khiabani, S. J., Gidófalvi, G., Albadvi, A., Alimohammadi, A. and Seyedabrishami, S. (2021). Mapping the intellectual structure of GIS-T field (2008–2019): a dynamic co-word analysis. Scientometrics, 126(4), 2667-2688.
- Hovanec, M., Píľa, J., Korba, P., & Pačaiová, H. (2015). Plant simulation as an instrument of logistics and transport of materials in a digital factory. NAŠE MORE: znanstveni časopis za more i pomorstvo, 62(3 Special Issue), 187-192.
- Hsieh, P. N., & Chang, P. L. (2009). An assessment of world-wide research productivity in production and operations management. International Journal of Production Economics, 120(2), 540-551.
- Ivanov, D., Dolgui, A., & Sokolov, B. (2019). The impact of digital technology and Industry 4.0 on the ripple effect and supply chain risk analytics. International Journal of Production Research, 57(3), 829-846.
- Ivanov, D., Tang, C. S., Dolgui, A., Battini, D., & Das, A. (2021). Researchers' perspectives on Industry 4.0: multi-disciplinary analysis and opportunities for operations management. International Journal of Production Research, 59(7), 2055-2078.
- Kang, H. S., Lee, J. Y., Choi, S., Kim, H., Park, J. H., Son, J. Y., Kim, B.H. and Do Noh, S. (2016). Smart manufacturing: Past research, present findings, and future directions. International journal of precision engineering and manufacturing-green technology, 3(1), 111-128.
- Kettunen, P., & Laanti, M. (2017). Future software organizations–agile goals and roles. European Journal of Futures Research, 5(1), 1-15.
- Kiel, D., Müller, J. M., Arnold, C. & Voigt, K. I. (2020). Sustainable industrial value creation: Benefits and challenges of industry 4.0, in Digital Disruptive Innovation, (pp. 231-270).
- Krajewski, L. J., Ritzman, L. P. & Malhotra, M. K. (2010). Operations management: Processes and supply chains, New Jersey: Pearson.
- Küsters, D., Praß, N., & Gloy, Y. S. (2017). Textile learning factory 4.0–preparing germany's textile industry for the digital future. Procedia Manufacturing, 9, 214-221.
- Lao, L., Ellis, M., Durand, H., & Christofides, P. D. (2015). Real‐time preventive sensor maintenance using robust moving horizon estimation and economic model predictive control. AIChE Journal, 61(10), 3374-3389.
- Lee, J. Y., Shin, S. J., Lee, Y. T., & Libes, D. (2015). Toward development of a testbed for sustainable manufacturing. Concurrent Engineering, 23(1), 64-73.
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