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Main Authors: Aibinu, M. O., Shoukat, A., Mahomed, F. M.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.20389
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author Aibinu, M. O.
Shoukat, A.
Mahomed, F. M.
author_facet Aibinu, M. O.
Shoukat, A.
Mahomed, F. M.
contents The logistic growth model is a classical framework for describing constrained growth phenomena, widely applied in areas such as population dynamics, epidemiology, and resource management. This study presents a generalized extension using Atangana-Baleanu in Caputo sense (ABC)-type fractional derivatives. Proportional time delay is also included, allowing the model to capture memory-dependent and nonlocal dynamics not addressed in classical formulations. Free parameters provide flexibility for modeling complex growth in industrial, medical, and social systems. The Hybrid Sumudu Variational (HSV) method is employed to efficiently obtain semi-analytical solutions. Results highlight the combined effects of fractional order and delay on system behavior. This approach demonstrates the novelty of integrating ABC-type derivatives, proportional delay, and HSV-based solutions for real-world applications.
format Preprint
id arxiv_https___arxiv_org_abs_2509_20389
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Fractional Logistic Growth with Memory Effects: A Tool for Industry-Oriented Modeling
Aibinu, M. O.
Shoukat, A.
Mahomed, F. M.
Systems and Control
The logistic growth model is a classical framework for describing constrained growth phenomena, widely applied in areas such as population dynamics, epidemiology, and resource management. This study presents a generalized extension using Atangana-Baleanu in Caputo sense (ABC)-type fractional derivatives. Proportional time delay is also included, allowing the model to capture memory-dependent and nonlocal dynamics not addressed in classical formulations. Free parameters provide flexibility for modeling complex growth in industrial, medical, and social systems. The Hybrid Sumudu Variational (HSV) method is employed to efficiently obtain semi-analytical solutions. Results highlight the combined effects of fractional order and delay on system behavior. This approach demonstrates the novelty of integrating ABC-type derivatives, proportional delay, and HSV-based solutions for real-world applications.
title Fractional Logistic Growth with Memory Effects: A Tool for Industry-Oriented Modeling
topic Systems and Control
url https://arxiv.org/abs/2509.20389