•  
  •  
 

Abstract

One of the widely used theories in the information processing is Professor Zadeh's fuzzy logic theory. Fuzzy implications form the basis of this theory. When processing information using fuzzy implication, the chosen judgment method and the type of implication affect the result. Referring to the review of the relevant literature on fuzzy implications, it can be noted that there are still unresolved problems and issues. For example, fuzzy implications cannot be used in processing imperfect information or information based on probabilistic and fuzzy uncertainty. Existing fuzzy implications face limitations in practical applications. Fuzzy implications only take into account inaccuracy, but do not sufficiently cover reliability of information. Therefore, there is a need to study new types of implications that take into account the inaccuracy and probabilistic nature of information and to investigate their use in various fields. This article examines the problem of using ALI-4 Z-implication in controller design.

First Page

83

Last Page

89

References

  1. Rescher, N. (1969). Many-Valued Logic. N. Rescher. New York: McGraw-Hill Inc., 359 p.
  2. Grzegorzewski, P. (2013). Probabilistic implications. Fuzzy Sets and Systems, 226, 53-66.
  3. Zadeh, L.A. (2011). A Note on Z-numbers. Information Sciences. 181(14). 2923–2932.
  4. Grabowski, A. (2017). Formal introduction to Fuzzy implications. Journal of Formalized Mathematics. 25(3). 241–248.
  5. Aliev, R.A., Guirimov, B.G., Huseynov, O.H., et al. (2021). A consistency-driven approach to construction of Z-number-valued pairwise comparison matrices. Iranian Journal of Fuzzy Systems. 18(4). 37–49.
  6. Aliev, R.A., Aliyev, R.R., Guirimov, B.G. (2013). Decision making under Z-information using Z-interpolation. Information Sciences. 250. 100–115.
  7. Saner, T., Gardashova, L.A., Allahverdiyev, R.A., et al. (2017). Analysis of the job satisfaction index problem by using fuzzy inference. Procedia Computer Science. 102. 45–50.
  8. Aliev, R., Tserkovny, A. (2011). Systemic approach to fuzzy logic formalization for approximate reasoning. Information Sciences. 181(6). 1045–1059.
  9. Baczynski, M., Jayaram, B., Massanet, S., et al. (2015). Fuzzy Implications: Past, Present, and Future. Springer Handbook of Computational Intelligence. 1. 183–202.
  10. Bentkowska, U. (2019). Properties of fuzzy relations and aggregation process in decision making. Iranian Journal of Fuzzy Systems. 16(3). 1–15.
  11. Drewniak, J., Dudziak, U. (2005). Aggregations preserving classes of fuzzy relations. Kybernetika. 41(3). 265–284.
  12. Dutta, D., Sen, M., Deshpande, A. (2017). Type-2 Fuzzy G-Tolerance Relation and Its Properties. International Journal of Analysis and Applications. 15(2). 172–178.
  13. Latha Devi, R.A., Velammal, G. (2023). The Concept of Z-Fuzzy Relation. Utilitas Mathematica. 120. 1146–1154.
  14. Grzegorzewski, P. (2011). On the Properties of Probabilistic Implications. Advances in Intelligent and Soft Computing. 107. 67–78.
  15. Grzegorzewski, P. (2011). Probabilistic Implications. Proceedings of the 7th Conference on European Society for Fuzzy Logic and Technology. Aix-les-Bains. 254–258.
  16. Jaroszewicz, S., Korzen, A. (2012). Arithmetic Operations on Independent Random Variables: A Numerical Approach. SIAM Journal on Scientific Computing. 34(3). 1241–1265.
  17. Aliev, R.A., Ahmadov, S.A., Gardashova, L.A., et al. (2025). Extension of Ali-1 logic to Z-situation. Lecture Notes in Networks and Systems. 1622. 304–311.
  18. Ahmadov, S.A. (2025). Z-implication and its application. III International Scientific-Practical Conference on Artificial Intelligence Technologies and Aerospace Issues. Baku. 3–9.
  19. Aliev, R., Aliyev, F., Babaev, M. (1991). Fuzzy Process Control and Knowledge Engineering in Petrochemical and Robotic Manufacturing. Köln: Verlag TÜV Rheinland. 166 p.

Share

COinS
 
 

To view the content in your browser, please download Adobe Reader or, alternately,
you may Download the file to your hard drive.

NOTE: The latest versions of Adobe Reader do not support viewing PDF files within Firefox on Mac OS and if you are using a modern (Intel) Mac, there is no official plugin for viewing PDF files within the browser window.