Dr. peyman peyrovan | Numerical Analysis | Best Researcher Award

Dr. peyman peyrovan | Numerical Analysis | Best Researcher Award

Dr. peyman peyrovan | Numerical Analysis – Independent Researcher at shahed university, Iran

Dr. Peyman Peyrovan is a dedicated researcher in applied mathematics with expertise in numerical analysis, particularly in delay differential and integro-differential equations. His academic and research journey reflects a strong focus on solving complex mathematical problems with direct applications in healthcare and cybersecurity. Known for integrating rigorous theory with practical computation, Dr. Peyrovan has made notable contributions to the fields of inverse problems, regularization, and computational modeling. His vision lies in leveraging mathematics to address real-world challenges through algorithmic development and intelligent modeling. With an early but impressive track record, he stands out as a rising scholar in scientific computing and applied analysis.

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Education:

Dr. Peyrovan obtained his Ph.D. in Applied Mathematics (Numerical Analysis) from Shahed University in Tehran, Iran. His doctoral thesis, supervised by Dr. A. Tari, focused on developing and analyzing collocation methods for solving delay Volterra integro-differential equations with weakly singular kernels using continuous piecewise polynomial functions. Before his doctoral studies, he earned his M.Sc. in Applied Mathematics from Kharazmi University, specializing in regularization and inverse problems—particularly the determination of optimal regularization parameters for discrete ill-posed problems. His academic foundation was built during his undergraduate studies in mathematics at Damghan University, where he developed a strong theoretical background and problem-solving skills.

Experience:

Throughout his academic career, Dr. Peyrovan has accumulated substantial research experience in both theory and application. He has designed adaptive numerical algorithms for solving delay integral equations relevant to cybersecurity threat detection and system vulnerability analysis. In the biomedical domain, he developed MATLAB-based simulation tools for modeling tumor growth and biological feedback using delay systems. His contributions to MRI image reconstruction through inverse problem techniques have led to improved accuracy and reduced computational noise. He is proficient in MATLAB and Maple for numerical computing, and LaTeX for technical documentation. Dr. Peyrovan’s work demonstrates his capacity to bridge abstract mathematics with technological applications in data-driven domains.

Research Interests:

Dr. Peyrovan’s primary research interests include numerical methods for solving integral and integro-differential equations with delays, regularization of inverse problems, and computational modeling for real-life systems. He is particularly interested in delay systems with weakly singular kernels and their applications in healthcare, such as modeling biological responses and image reconstruction, and in cybersecurity, including the prediction of cyberattack propagation. He is actively exploring the synergy between machine learning and numerical analysis, aiming to develop hybrid models that combine data-driven insights with analytical rigor for intelligent system modeling and anomaly detection.

Awards:

In recognition of his academic excellence, Dr. Peyrovan was awarded the Top Graduate Student Award at Shahed University in 2024. This honor reflects both his outstanding performance during his Ph.D. studies and his commitment to advancing the field of applied mathematics. His early achievements demonstrate his potential to contribute further as a leader in numerical research, algorithm development, and interdisciplinary problem solving.

Publications:

📘 “Convergence analysis of collocation solutions for delay Volterra integral equations with weakly singular kernels” – Applied Mathematics and Computation, 2025, frequently cited in delay equation research.

📗 “Collocation method for Volterra integro-differential equations with piecewise delays” – Journal of Computational and Applied Mathematics, 2026, referenced in adaptive modeling studies.

Conclusion:

Dr. Peyman Peyrovan exemplifies the qualities of a forward-thinking researcher whose work sits at the intersection of mathematics, computer science, and real-world problem-solving. His research contributions in numerical delay equations, inverse problems, and algorithm development have been both technically rigorous and societally relevant. With a growing body of publications, experience in cross-disciplinary applications, and a clear research vision, he demonstrates strong potential for long-term academic and practical impact. Dr. Peyrovan is a highly deserving nominee for the Best Researcher Award, and his trajectory suggests continued innovation and leadership in applied mathematical research.