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The Extended MOORA Method Based on Fermatean Fuzzy Information

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  • Gulfam Shahzadi
  • Anam Luqman
  • Mohammed M. Ali Al-Shamiri
  • Dragan PamuÄ ar

Abstract

The intelligent manufacturing system (IMS) is a framework that improves productivity by organizing the logical features involved in manufacturing. The procedure of intelligent manufacturing owns the capability to self-control the manufacturing of the products according to the specifications of design. Different IMSs are designed to deal with continuous changes in market which can adjust to make the modified environment easier. The central idea of this research article is to select an IMS that can adapt the updated situations faster than the existing competing systems and provide higher benefits in utilizing new possibilities. To select such IMS, the applicability of multiobjective optimization on the basis of the ratio analysis (MOORA) method has been explored using Fermatean fuzzy sets. The Fermatean fuzzy aggregated weighted operators are used to construct the decision matrices. Then, the ratio analysis-based MOORA method is developed to accomplish the ranking of under consideration IMSs. Furthermore, the conversion of qualitative attributes into quantitative attributes has been performed using Fermatean fuzzy numbers (FFNs). Finally, a brief comparative analysis of the developed technique with existing models is narrated to reveal the flexibility of the Fermatean fuzzy MOORA method.

Suggested Citation

  • Gulfam Shahzadi & Anam Luqman & Mohammed M. Ali Al-Shamiri & Dragan PamuÄ ar, 2022. "The Extended MOORA Method Based on Fermatean Fuzzy Information," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-15, September.
  • Handle: RePEc:hin:jnlmpe:7595872
    DOI: 10.1155/2022/7595872
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