Mathematical Modeling of Self-Healing Materials for Next-Generation Structural Components
DOI:
https://doi.org/10.63671/ijsesr.v1i1.7Keywords:
Self-healing materials, mathematical modeling, structural components, finite element analysis, molecular dynamics, sustainability, infrastructure, machine learning, healing kinetics, crack propagationAbstract
Self-healing materials (SHMs) have garnered considerable attention in recent years for their potential to revolutionize the field of structural engineering. These materials, capable of autonomously repairing damage, can significantly enhance the durability, sustainability, and cost-effectiveness of next-generation structural components. This research focuses on the development and application of mathematical models to predict and optimize the behavior of SHMs in critical infrastructure systems. The paper explores various mathematical approaches, including deterministic, stochastic, and multi-scale models, to simulate the self-healing process and assess the influence of material properties, healing agents, and environmental factors. By integrating advanced computational methods such as finite element analysis (FEA) and molecular dynamics simulations, this study aims to provide insights into the healing kinetics, crack propagation, and mechanical performance of SHMs under real-world conditions. Furthermore, the research emphasizes the importance of incorporating machine learning techniques to optimize the design of self-healing systems and improve their efficiency. Despite the significant advancements, challenges remain in scaling these models for large-scale applications, especially for infrastructure projects. This paper highlights the need for continued interdisciplinary research to refine mathematical models and facilitate the widespread adoption of SHMs in structural engineering. The findings suggest that self-healing materials, driven by advanced mathematical modeling, hold great promise for enhancing the sustainability and resilience of future infrastructure.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2025 International Journal of Science and Engineering Science Research

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.