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Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry

Year 2025, Volume: 9 Issue: 1, 26 - 39
https://doi.org/10.30939/ijastech..1522257

Abstract

To succeed in the rapidly advancing technological environment driven by Industry 4.0, automotive manufacturers need to swiftly embrace new technologies. Moreover, the ability to introduce innovations to the market more quickly and sustainably hinges on the integration of Industry 4.0 technologies. The automotive industry plays a crucial role in boosting the economy, generating a multiplier impact in Türkiye, much like it does in various countries around the world. Therefore, keeping a close eye on the digital transformation of the automotive industry is critical for establishing a cost-efficient, productive, and competitive market in a rapidly developing market. This study aims to indicate the importance level of Industry 4.0 technologies for automotive manufacturers operating in Türkiye. The Analytic Hierarchy Process (AHP) method based on Pythagorean fuzzy sets was employed to achieve this aim. Pythagorean fuzzy sets are a contemporary fuzzy approach that gives experts more freedom to express their judgments regarding uncertainty and ambiguity in decision-making problems. The study results reveal that the top three most important technologies in the automotive manufacturing industry are “simulation and modeling”, “autonomous robots”, and “big data and analytics”, respectively. However, blockchain technology ranked lowest in terms of importance level. The proposed approach will serve as a guide for decision-makers in selecting the appropriate Industry 4.0 technology in the automotive industry.

References

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Year 2025, Volume: 9 Issue: 1, 26 - 39
https://doi.org/10.30939/ijastech..1522257

Abstract

References

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There are 66 citations in total.

Details

Primary Language English
Subjects Automotive Engineering (Other)
Journal Section Articles
Authors

Sinan Çıkmak 0000-0002-4704-3409

Publication Date
Submission Date July 25, 2024
Acceptance Date January 7, 2025
Published in Issue Year 2025 Volume: 9 Issue: 1

Cite

APA Çıkmak, S. (n.d.). Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry. International Journal of Automotive Science And Technology, 9(1), 26-39. https://doi.org/10.30939/ijastech..1522257
AMA Çıkmak S. Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry. IJASTECH. 9(1):26-39. doi:10.30939/ijastech.1522257
Chicago Çıkmak, Sinan. “Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry”. International Journal of Automotive Science And Technology 9, no. 1 n.d.: 26-39. https://doi.org/10.30939/ijastech. 1522257.
EndNote Çıkmak S Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry. International Journal of Automotive Science And Technology 9 1 26–39.
IEEE S. Çıkmak, “Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry”, IJASTECH, vol. 9, no. 1, pp. 26–39, doi: 10.30939/ijastech..1522257.
ISNAD Çıkmak, Sinan. “Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry”. International Journal of Automotive Science And Technology 9/1 (n.d.), 26-39. https://doi.org/10.30939/ijastech. 1522257.
JAMA Çıkmak S. Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry. IJASTECH.;9:26–39.
MLA Çıkmak, Sinan. “Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry”. International Journal of Automotive Science And Technology, vol. 9, no. 1, pp. 26-39, doi:10.30939/ijastech. 1522257.
Vancouver Çıkmak S. Pythagorean Fuzzy AHP Approach for Evaluating the Importance Level of Industry 4.0 Technologies in the Automotive Manufacturing Industry. IJASTECH. 9(1):26-39.


International Journal of Automotive Science and Technology (IJASTECH) is published by Society of Automotive Engineers Turkey

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