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  1. Home
  2. On Fuzzy Henstock-stieltjes Integral On Time Scales With Respect To Bounded Variation Function.
  1. Home
  2. On Fuzzy Henstock-stieltjes Integral On Time Scales With Respect To Bounded Variation Function.

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On fuzzy Henstock-Stieltjes integral on time scales with respect to bounded variation function.

Juan Li1, Yubing Li2, Yabin Shao2

  • 1School of Mathematics and Information Science, Baoji University of Arts and Sciences, Baoji, Shannxi, China.

Plos One
|September 26, 2024

View abstract on PubMed

Summary
This summary is machine-generated.

This study introduces the fuzzy Henstock-Stieltjes Δ-integral (FHS-Δ-integral) on time scales, establishing its fundamental properties and conditions for integrability. The findings advance fuzzy integral theory and discontinuous fuzzy dynamic equations on time scales.

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Area of Science:

  • Mathematics
  • Real Analysis
  • Fuzzy Mathematics

Background:

  • The theory of integrals on time scales is an active area of research, bridging differential and difference equations.
  • Fuzzy set theory provides tools to handle uncertainty and vagueness in mathematical models.
  • The integration of fuzzy concepts with time scale calculus is essential for modeling complex dynamic systems.

Purpose of the Study:

  • To define and investigate the fundamental theory of the fuzzy Henstock-Stieltjes Δ-integral (FHS-Δ-integral) on time scales.
  • To establish necessary and sufficient conditions for the integrability of fuzzy functions using the FHS-Δ-integral.
  • To contribute to the development of discontinuous fuzzy dynamic equations on time scales.

Main Methods:

  • Definition of the fuzzy Henstock-Stieltjes Δ-integral (FHS-Δ-integral) for functions on time scales.
  • Analysis of basic properties and characterization of FHS-Δ-integrable functions.
  • Application of the embedding theorem of fuzzy number space for function characterization.
  • Main Results:

    • The paper successfully defines the FHS-Δ-integral on time scales.
    • Key properties and integrability conditions for fuzzy functions are established.
    • A characterization theorem for FHS-Δ-integrable functions is presented using fuzzy number space embedding.

    Conclusions:

    • This work significantly complements and enriches the existing theory of fuzzy integrals.
    • The established results provide a foundation for future research in discontinuous fuzzy dynamic equations on time scales.
    • The study enhances the mathematical framework for analyzing fuzzy dynamic systems in various scientific domains.