Muhammad Farhan | Mathematics | Best Researcher Award

Best Researcher Award

Muhammad Farhan — Yangzhou University

Muhammad Farhan
Affiliation Yangzhou University
Country Pakistan
Scopus ID 59432913900
Documents 41
Citations 477
h-index 11
Subject Area Mathematics
Event Top Teachers Awards
ORCID 0000-0002-2235-0015
Google Scholar IBTzbUAAAAJ

Muhammad Farhan is a mathematician and researcher affiliated with Yangzhou University whose work focuses on infectious disease dynamics, nonlinear mathematical systems, artificial intelligence integration, and computational epidemiology. His academic profile includes research contributions involving fractional-order differential equations, neural network frameworks, and data-driven disease modeling methodologies within applied mathematics and computational science.[1]

Abstract

This article summarizes the academic profile, scientific contributions, and research activities of Muhammad Farhan in the field of mathematics and computational disease modeling. His work combines nonlinear differential equations, stochastic artificial intelligence approaches, deep learning methodologies, and epidemiological simulations for infectious disease analysis and applied scientific computation.[2]

Keywords

Mathematics, infectious disease modeling, fractional differential equations, computational epidemiology, artificial intelligence, deep learning, neural networks, stochastic systems, nonlinear dynamics, numerical simulations.

Introduction

Muhammad Farhan has contributed to interdisciplinary mathematical research involving infectious disease transmission systems, computational analysis, and artificial intelligence-assisted scientific modeling. His studies integrate theoretical mathematics with numerical computation to investigate epidemiological behavior, stability analysis, and real-world disease dynamics using advanced computational frameworks.[3]

Research Profile

Farhan completed his doctoral studies in mathematics at Abdul Wali Khan University in 2024 following earlier graduate and undergraduate training in mathematical sciences. His academic specialization focuses on infectious disease dynamics, integer-order and fractional-order systems, neural computational frameworks, and data-driven epidemiological analysis.[1]

His professional experience includes research and teaching activities at Yangzhou University, Abdul Wali Khan University, and ANSI Institute of Management Sciences. These roles involved scientific research, mathematical instruction, computational modeling, and collaborative academic work in applied mathematics and engineering-related studies.[2]

Research Contributions

  • Development of mathematical models integrating fractional-order differential equations with disease-informed neural network methodologies for epidemiological analysis.
  • Application of artificial intelligence and deep learning techniques to infectious disease prediction, stability analysis, and nonlinear computational systems.
  • Research on computational frameworks for analyzing Chikungunya virus, Hepatitis B dynamics, cancer chemotherapy systems, and epidemic transmission structures.
  • Contribution to numerical simulation methods and data-driven mathematical approaches supporting modern computational epidemiology research.

Publications

Muhammad Farhan has published research on infectious disease modeling, neural network computation, fractional differential systems, and artificial intelligence-assisted epidemiological analysis. His studies in Results in Engineering, Computational Biology and Chemistry, and related journals examine nonlinear dynamics, deep learning frameworks, and mathematical simulations for complex biomedical and computational applications.[1] [2]

  • Farhan, M., Ling, Z., Ullah, S., Riaz, M.B., and Khan, M. “Advancing nonlinear dynamics of coffee berry disease through robust dual-network framework: Deep learning and random projection neural networks.” Results in Engineering. DOI: https://doi.org/10.1016/j.rineng.2026.110184
  • Farhan, M., Waseem, Thaljaoui, A., and Rahman, M. “Data-driven investigation of an epidemic model under saturated incidence rate using deep neural networks.” Journal of Applied Mathematics and Computing. https://link.springer.com/article/10.1007/s12190-025-02639-1
  • Farhan, M., Ling, Z., Ding, J., Shah, Z., and Dobrotă, R.D. “A novel fractional computational neural framework for analyzing cancer model under chemotherapy drug.” Computer Methods in Biomechanics and Biomedical Engineering. DOI: https://doi.org/10.1080/10255842.2025.2508227
  • Farhan, M., Ling, Z., Ullah, S., Mostafa, A.M., and AlQahtani, S.A. “A novel intelligent framework for assessing within-host transmission dynamics of Chikungunya virus using an unsupervised stochastic neural network approach.” Computational Biology and Chemistry. DOI: https://doi.org/10.1016/j.compbiolchem.2025.108380
  • Farhan, M., Ling, Z., Shah, Z., Islam, S., Alshehri, M.H., and Antonescu, E. “A multi-layer neural network approach for the stability analysis of the Hepatitis B model.” Computational Biology and Chemistry. DOI: https://doi.org/10.1016/j.compbiolchem.2024.108256

Research Impact

The research profile of Muhammad Farhan reflects active scholarly participation in computational mathematics, epidemiological modeling, and artificial intelligence applications. His Scopus metrics indicate consistent publication activity and citation performance within applied mathematical sciences and interdisciplinary computational research domains.[1]

Award Suitability

Muhammad Farhan’s academic profile demonstrates sustained engagement in mathematical research, scientific publication, computational innovation, and interdisciplinary collaboration. His contributions to infectious disease modeling and artificial intelligence-assisted mathematical analysis align with evaluation criteria commonly associated with academic recognition programs and research excellence initiatives.[2]

Conclusion

Muhammad Farhan has established a research profile centered on computational mathematics, infectious disease systems, and artificial intelligence methodologies. His scholarly publications, academic training, and interdisciplinary scientific activities contribute to ongoing developments in mathematical epidemiology and computational research applications.[3]

References

  1. Elsevier. (n.d.). Scopus author details: Muhammad Farhan, Author ID 59432913900. Scopus. https://www.scopus.com/authid/detail.uri?authorId=59432913900
  2. ORCID. (n.d.). Muhammad Farhan researcher profile and academic activities. https://orcid.org/0000-0002-2235-0015
  3. Farhan, M., Ling, Z., Shah, Z., Islam, S., Alshehri, M.H., and Antonescu, E. “A multi-layer neural network approach for the stability analysis of the Hepatitis B model.” Computational Biology and Chemistry. https://doi.org/10.1016/j.compbiolchem.2024.108256
  4. Farhan, M., Ling, Z., Ullah, S., Mostafa, A.M., and AlQahtani, S.A. “A novel intelligent framework for assessing within-host transmission dynamics of Chikungunya virus using an unsupervised stochastic neural network approach.” Computational Biology and Chemistry. https://doi.org/10.1016/j.compbiolchem.2025.108380
  5. Farhan, M., Ling, Z., Ullah, S., Riaz, M.B., and Khan, M. “Advancing nonlinear dynamics of coffee berry disease through robust dual-network framework: Deep learning and random projection neural networks.” Results in Engineering. https://doi.org/10.1016/j.rineng.2026.110184