On Variable-Order Fractional Discrete Neural Networks: Solvability and Stability
Abstract
:1. Introduction
2. Background on Fractional Discrete Calculus
- Discrete Leibniz integral law:
- Fractional Caputo difference of a constant c:
- Delta difference of the h–falling factorial function:
- (i)
- S is a contraction;
- (ii)
- For any ;
- (iii)
- T is continuous, and is relatively compact.
3. Variable-Order Fractional Discrete Neural Network
4. Existence of the Solution
- For all represents a continuous function with respect to x, and there exists a constant such that:
- There exists a constant such that , where:
- We show that S maps into . For any , we have:This implies ;
- We need to prove that S is continuous. Let be a sequence of satisfying as . Then, we can obtain:Then, we can conclude that when which implies that S is continuous;
- We show that S is relatively compact. We choose , and . Then, we have:This implies that is a bounded and uniformly Cauchy subset and together with Arzela–Ascoli’s lemma 2, we obtain that is relatively compact;
- We choose a fixed and for all . Then, we have:Therefore, . Finally, we prove that the operator T is the contraction mapping. For taking the norm of yields:According to , it can be concluded that the operator T is a contraction mapping. From Lemma (3), has a fixed point in , which is a solution of (1).
5. Ulam–Hyers Stability of a Variable-Order Fractional Discrete Neural Network
6. Numerical Simulations
- Let and:Here, from the given data, we obtain and . Clearly, the assumptions () and () hold with . Thus, all the conditions of Theorem 1 and Theorem 2 are satisfied. Therefore, the system (7) has at least one solution that is Ulam–Hyers stable for and ;
- We admit that and:As observed, () and are valid for , and . With , Theorem 1 is valid, which implies the existence of the solution. We can easily confirm that the neural network (7) is Ulam–Hyers stable, as there is a constant where , and hence, Theorem 2 accurately holds.
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Hioual, A.; Ouannas, A.; Oussaeif, T.-E.; Grassi, G.; Batiha, I.M.; Momani, S. On Variable-Order Fractional Discrete Neural Networks: Solvability and Stability. Fractal Fract. 2022, 6, 119. https://doi.org/10.3390/fractalfract6020119
Hioual A, Ouannas A, Oussaeif T-E, Grassi G, Batiha IM, Momani S. On Variable-Order Fractional Discrete Neural Networks: Solvability and Stability. Fractal and Fractional. 2022; 6(2):119. https://doi.org/10.3390/fractalfract6020119
Chicago/Turabian StyleHioual, Amel, Adel Ouannas, Taki-Eddine Oussaeif, Giuseppe Grassi, Iqbal M. Batiha, and Shaher Momani. 2022. "On Variable-Order Fractional Discrete Neural Networks: Solvability and Stability" Fractal and Fractional 6, no. 2: 119. https://doi.org/10.3390/fractalfract6020119
APA StyleHioual, A., Ouannas, A., Oussaeif, T. -E., Grassi, G., Batiha, I. M., & Momani, S. (2022). On Variable-Order Fractional Discrete Neural Networks: Solvability and Stability. Fractal and Fractional, 6(2), 119. https://doi.org/10.3390/fractalfract6020119