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Modeling of determining the degree of obesity using the fuzzy logical inference method

https://doi.org/10.21122/2309-4923-2025-3-41-46

Abstract

The article is devoted to computer modeling of the social and medical problem of determining the degree of obesity of body mass. An analysis was conducted, the significance of the solution to the problem was revealed. Using modern mathematical methods based on the theory of fuzzy sets and the method of fuzzy logical deduction, an approach is presented to determining the degree of obesity of body weight. Based on a short review, it was concluded that the body mass index, waist circumference size, degrees of abdominal obesity are recognized as direct factors in measuring the degree of obesity of body weight. Since all three factors are fuzzy parameters, the method of fuzzy logic inference is used to make a decision. The revealed universes of fuzzy variables of obesity of body weight, body mass index, waist circumference size, degrees of abdominal obesity. With the help of vague production rules, the answer options are provided for various situations. Fuzzy logical inference is implemented by the Mamdani method. The constructed model allows to calculate obesity rates for a large number of people in a short period of time objectively and accurately. Due to this feature, the developed approach can be used in population studies when defining specific categories of body weight as a health problem. The accumulated data of this kind are significant in life insurance. The results are related not only to adverse health problems, but also to social problems, such as determining the fatness of the population of different regions.

About the Authors

S. S. Huseynzade
Sumgayit State University
Azerbaijan

Huseynzade Shahla Surkhay –
Doctor of Technical Sciences, Associate Professor.

Sumgayit



G. Y. Abbasova
Sumgayit State University
Azerbaijan

Abbasova Gulnara Yusif –
PhD in Engineering, Associate Professor.

Sumgayit



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Huseynzade S.S., Abbasova G.Y. Modeling of determining the degree of obesity using the fuzzy logical inference method. «System analysis and applied information science». 2025;(3):41-46. https://doi.org/10.21122/2309-4923-2025-3-41-46

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ISSN 2309-4923 (Print)
ISSN 2414-0481 (Online)