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Erratum: Determination of Critical Success Factors in the Implementation of Industry 4.0 and Evaluation of the Situation of Firms Receiving Investment Incentives with the Interval Type-2 Fuzzy TOPSIS Method

Year 2024, Issue: 53, 189 - 190, 15.02.2024
The original article was published on November 30, 2022. https://dergipark.org.tr/en/pub/ejosat/issue/72892/961437

Erratum Note

The article title has been corrected to "Determination of Critical Success Factors in the Implementation of Industry 4.0 and Evaluation of the Situation of Firms Receiving Investment Incentives with Fuzzy TOPSIS Method" by removing the phrase "Interval Type-2" upon the request of the responsible author.

Abstract

The lack of literature and empirical studies in concretizing the critical success factors of Industry 4.0 reveals the need for studies in this field. The primary purpose of the study is to identify and prioritize the key success factors required for industry 4.0, which is effective in the production areas of today and the future. Then, a post-incentive situation assessment is made for businesses in different sectors that receive investment incentives within the scope of Industry 4.0 with the determined criterias. The businesses in the research are small-scale firms operating in the automotive, plastic and aluminum sectors in Kocaeli. In the study, Interval Type-2 Fuzzy TOPSIS, one of the Multi-Criteria Decision Making Methods, was used due to the presence of more than one decision maker, several alternatives and multiple criteria, and intuitive evaluations. Eight criterias shaped from the literature and three firms that received incentives were evaluated by three expert engineers of the institution providing investment support. The study has shown that the fuzzy TOPSIS method can be used as an effective method for evaluating the current situation of the firms.

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Erratum: Endüstri 4.0’ın Uygulanmasında Kritik Başarı Faktörlerinin Belirlenmesi ve Aralık Tip-2 Bulanık TOPSIS Yöntemi ile Yatırım Teşviği Alan Firmaların Durum Değerlendirilmesi

Year 2024, Issue: 53, 189 - 190, 15.02.2024
The original article was published on November 30, 2022. https://dergipark.org.tr/en/pub/ejosat/issue/72892/961437

Erratum Note

Makale başlığı sorumlu yazarın talebi doğrultusunda "Aralık Tip-2" ifadesi çıkarılarak "Endüstri 4.0’ın Uygulanmasında Kritik Başarı Faktörlerinin Belirlenmesi ve Bulanık TOPSIS Yöntemi ile Yatırım Teşviği Alan Firmaların Durum Değerlendirilmesi" şeklinde düzeltilmiştir.

Abstract

Endüstri 4.0’ın kritik başarı faktörlerini somutlaştırmasındaki literatür ve ampirik çalışmalardaki eksiklik, bu alandaki çalışmalara olan ihtiyacı ortaya koymaktadır. Çalışmanın birincil amacı, bugünün ve geleceğin üretim alanlarında etkili olan endüstri 4.0 için gereken anahtar başarı faktörlerini belirleyebilmek ve önceliklendirmektir. Ardından belirlenen kriterlerle Endüstri 4.0 kapsamında yatırım teşviği alan farklı sektörlerdeki işletmeler için teşvik sonrası durum değerlendirilmesi yapılmaktadır. Araştırmaya konu olan işletmeler, Kocaeli’nde otomotiv, plastik ve alüminyum sektöründe faaliyet gösteren küçük ölçekli firmalardır. Çalışmada birden fazla karar vericinin, birkaç alternatifin ve çok kriterin yer alması ve sezgisel değerlendirmelerin de hesaba katılması sebebiyle Çok Kriterli Karar Verme Yöntemlerinden Aralık Tip-2 Bulanık TOPSIS kullanılmıştır. Literatürden şekillenen sekiz kriter ve teşvik almış üç firma, yatırım desteği sunan kurumun üç uzman mühendisi tarafından değerlendirilmiştir. Çalışma bulanık TOPSIS yönteminin, işletmelerin mevcut durum değerlendirilmelerinde etkin bir yöntem olarak kullanılabileceğini göstermiştir.

References

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  • Akbas, H., & Bilgen, B. (2017). An integrated fuzzy QFD and TOPSIS methodology for choosing the ideal gas fuel at WWTPs, Energy, (125), 484-49.
  • Al Zubayer, A.; Ali, S.M.; & Kabir, G. (2019). Analysis of supply chain risk in the ceramic industry using the TOPSIS method under a fuzzy environment. J. Model. Manag., (14), 792–815.
  • Alçın, S. (2016). Üretim için yeni bir izlek: Endüstri 4.0. Journal of Life Economics, (8), 19-30.
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  • Chauhan, R., Singh, T., Tiwari, A., Patnaik, A., & Thakur, N.S. (2017). Hybrid Entropy–TOPSIS Approach for Energy Performance Prioritization in A Rectangular Channel Employing Impinging Air Jets, Energy, (134), 360-368.
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  • Cheng, C-Y. (2018). A noveel approach of information visualization for machine operations states in industrial 4.0. Computers & Industrial Engineering, (125), 563-573.
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  • 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.
  • Ecer, F. (2006). Bulanık ortamlarda grup kararı vermeye yardımcı bir yöntem: fuzzy TOPSIS ve bir uygulama. İşletme Fakültesi Dergisi, 7(2), 77 -96.
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  • Fırat, O. Z., & Fırat, S. U. (2017b). Endüstri 4.0 Yolculuğunda Trendler ve Robotlar. Istanbul University Journal of the School of Business, 46(2), 211-223. doi: 10.5152/iujsb.2017.005.
  • Foidl, H., & Felderer, M. (2015). Research challenges of Industry 4.0 for quality management. International Conference on Enterprise Resource Planning Systems, Hagenberg, Austria: Springer, C. LNBIP 245, 121-137.
  • Ghanzanfari, M., Rouhani, S., Jafari, M. (2014). A fuzzy TOPSIS model to evulate the Business Intelligence competencies of Port Community Systems. Polish Maritime Researh, 21(2), 279-285.
  • Gilchrist, A. (2016). Industry 4.0: The Industrial Internet of Things, Springer, Heidelberg.
  • Han, H., & Trimi, S. (2018). A fuzzy TOPSIS method for performance evaluation of reverse logistics in social commerce platforms, Expert Systems Wıth Applİcatİons, (103), ‏133-145.
  • Heidari, S.S.; Khanbabaei, M.; & Sabzehparvar, M. (2018). A model for supply chain risk management in the automotive industry using fuzzy analytic hierarchy process and fuzzy TOPSIS. Benchmarking-An Internatıonal Journal, 25(9), 3831-3857.
  • Hermann, M., Pentek, T., & Otto, B. (2016). Design principles for ındustrie 4.0 scenarios. 49th Hawaii International Conference on System Science, Koloa, USA. doi: 10.1109/HICSS.2016.488.
  • Hoyer, C., Gunawan, I., & Reaiche, C.H. (2020). The Implementation of Industry 4.0–a Systematic Literature Review of the Key Factors. Systems Research and Behavioral Science, 37 (4), 557–578. doi:10.1002/sres.2701.
  • Ivanov, D., Dolgui, A., Sokolov, B., Werner, F., & Ivanova, M. (2016). A dynamic model and an algorithm for short-term supply chain scheduling in the smart factory Industry 4.0. International Journal of Production Research, 54(2), 386-402.
  • Jain, V., Sangaiah, A. K., Sakhuja, S., Thoduka, N., & Aggarwal, R. (2018). Supplier selection using fuzzy AHP and TOPSIS: a case study in the Indian automotive industry. Neural Computing and Applications, 29(7), 555-564.
  • Kagermann, H., Wahlster, W., & Helbig, J. (April, 2013). Recomendations for ımplementing the strategic initiative industrie 4.0. Acatech Natıonal Academy of Scienec and Engineering Report.
  • Kekilli, E, Cebeci, U. & Sılay, L. (2021). Selection of VFQ Consultant by Using Integrated Fuzzy AHP and Fuzzy TOPSIS. European Journal of Science and Technology, (24), 262-267.
  • Khoshi, A., Gooshki, H. S., & Mahmoudi, N. (2018). The data on the effective qualifications of teachers in medical sciences: An application of combined fuzzy AHP and fuzzy TOPSIS methods. DATA IN BRIEF, (21), ‏2689-2693.
  • Kiraz, A., Canpolat, O., Erkan, E.F., & Albayrak, F. (2018). Evaluating R&D Projects Using Two Phases Fuzzy AHP and Fuzzy TOPSIS Methods, European Journal of Science and Technology, (14), 49-53.
  • Koçak, A., & Diyadin, A. (2017). Sanayi 4.0 geçiş süreçlerinde kritik başarı faktörlerinin DEMATEL yöntemi ile değerlendirilmesi. Ege Akademik Bakış, 18(1), 107-120.
  • Lichtblau, K., Stich, V., Bertenrath, R., Blum, M., Bleider, M., Millack, A., Schmitt, K., Schmitz, E., & Schröter, M. (October, 2015). Industrie 4.0 Readiness. VDMA’s IMPULS-Stiftung Report.
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There are 65 citations in total.

Details

Primary Language Turkish
Subjects Engineering
Journal Section Articles
Authors

Damla Çevik Aka 0000-0001-9622-273X

Early Pub Date February 12, 2024
Publication Date February 15, 2024
Published in Issue Year 2024 Issue: 53

Cite

APA Çevik Aka, D. (2024). Endüstri 4.0’ın Uygulanmasında Kritik Başarı Faktörlerinin Belirlenmesi ve Aralık Tip-2 Bulanık TOPSIS Yöntemi ile Yatırım Teşviği Alan Firmaların Durum Değerlendirilmesi. Avrupa Bilim Ve Teknoloji Dergisi(53), 189-190.