Abstract
Industry 4.0 represents the fourth industrial revolution in production; manufacturing and industry. Industry 4.0 connects new technologies providing flexibility in manufacturing where the conditions change rapidly. Companies need to use Industry 4.0 technologies to take their place in a competitive environment. Evaluating companies’ performance based on Industry 4.0 is a complex multi criteria problem including both quantitative and qualitative factors. In this chapter, we propose a novel fuzzy MULTIMOORA method based on interval-valued spherical fuzzy sets to evaluate companies that are using Industry 4.0 technologies. Five different alternatives are evaluated according to seven conflicting criteria by three decision makers. The results are compared with single-valued spherical fuzzy MULTIMOORA method. The results indicate that Industry 4.0 performance evaluating problem can be tackled by using the proposed methodology effectively.
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Aydın, S., Kutlu Gündoğdu, F. (2021). Interval-Valued Spherical Fuzzy MULTIMOORA Method and Its Application to Industry 4.0. In: Kahraman, C., Kutlu Gündoğdu, F. (eds) Decision Making with Spherical Fuzzy Sets. Studies in Fuzziness and Soft Computing, vol 392. Springer, Cham. https://doi.org/10.1007/978-3-030-45461-6_13
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