An analysis of fractional piecewise derivative models of dengue transmission using deep neural network

This manuscript investigates a fractional piecewise dengue transmission model using singular and non-singular kernels. The existence results and uniqueness of the solution are established by using the approach of fixed point and in the framework of piecewise derivative and integral. To obtain the ap...

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Bibliographic Details
Main Authors: Mati ur Rahman, Saira Tabassum, Ali Althobaiti, Waseem, Saad Althobaiti
Format: Article
Language:English
Published: Taylor & Francis Group 2024-12-01
Series:Journal of Taibah University for Science
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Online Access:https://www.tandfonline.com/doi/10.1080/16583655.2024.2340871
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Summary:This manuscript investigates a fractional piecewise dengue transmission model using singular and non-singular kernels. The existence results and uniqueness of the solution are established by using the approach of fixed point and in the framework of piecewise derivative and integral. To obtain the approximate solution of the considered models we apply a piecewise numerical iteration scheme which is based on Newton interpolation polynomials. Furthermore, the numerical scheme for piecewise derivatives encompasses singular and non-singular kernels. This study aims to enhance our understanding of dengue internal transmission dynamics by using a novel piecewise derivative approach that considers both singular and non-singular kernels. This work contributes to clarifying the concept of piecewise derivatives and their significance in understanding crossover dynamics. Moreover, a deep neural network approach is employed with high accuracy in training, testing, and validation of data to investigate the specified disease problem. This methodology is employed to thoroughly investigate the intricacies of the specified disease problem.
ISSN:1658-3655