Fractal and Fractional (Aug 2023)

Finite Time Stability Results for Neural Networks Described by Variable-Order Fractional Difference Equations

  • Tareq Hamadneh,
  • Amel Hioual,
  • Omar Alsayyed,
  • Yazan Alaya Al-Khassawneh,
  • Abdallah Al-Husban,
  • Adel Ouannas

DOI
https://doi.org/10.3390/fractalfract7080616
Journal volume & issue
Vol. 7, no. 8
p. 616

Abstract

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Variable-order fractional discrete calculus is a new and unexplored part of calculus that provides extraordinary capabilities for simulating multidisciplinary processes. Recognizing this incredible potential, the scientific community has been researching variable-order fractional discrete calculus applications to the modeling of engineering and physical systems. This research makes a contribution to the topic by describing and establishing the first generalized discrete fractional variable order Gronwall inequality that we employ to examine the finite time stability of nonlinear Nabla fractional variable-order discrete neural networks. This is followed by a specific version of a generalized variable-order fractional discrete Gronwall inequality described using discrete Mittag–Leffler functions. A specific version of a generalized variable-order fractional discrete Gronwall inequality represented using discrete Mittag–Leffler functions is shown. As an application, utilizing the contracting mapping principle and inequality approaches, sufficient conditions are developed to assure the existence, uniqueness, and finite-time stability of the equilibrium point of the suggested neural networks. Numerical examples, as well as simulations, are provided to show how the key findings can be applied.

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