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D Sai Ganesh,
S. N. Padhi,
- M.Tech Student, Department of Mechanical Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Guntur District, Andhra Pradesh, India
- Professor, Department of Mechanical Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Guntur District, Andhra Pradesh, India
Abstract
Functionally graded composites (FGCs) improve lightweight structural performance by allowing material properties to change smoothly across a component. Polymer-based FGCs (P-FGCs), in particular, are gaining prominence in aerospace, automotive, and biomedical industries due to their excellent strength-to-weight ratio, tunability, and ease of processing. However, optimizing these materials for lightweight structural applications requires addressing conflicting design objectives, such as maximizing stiffness while minimizing weight or enhancing thermal resistance while maintaining manufacturability. This study explores the application of multi-objective optimization (MOO) methods to polymer-based FGCs. Techniques such as genetic algorithms (GA), particle swarm optimization (PSO), and multi-objective evolutionary algorithms (MOEAs) are employed to balance trade-offs between weight reduction, stiffness, and durability. The optimization framework combines analytical models, micromechanical analysis, and finite element simulations to predict stress, deflection, and failure under mechanical and thermal loads. Experimental data on graded polymer composites are used to validate computational results. Case studies demonstrate that optimized P-FGCs achieve up to 25% weight reduction and 30% increase in stiffness compared to conventional composites. Pareto-front analyses reveal optimal trade-offs between mechanical strength, thermal efficiency, and manufacturability. Despite progress, challenges remain in incorporating uncertainties from manufacturing defects, material variability, and cost constraints into optimization frameworks. The paper concludes with future perspectives on combining machine learning, additive manufacturing, and real-time digital twin systems to accelerate optimization and deployment of P-FGCs in next-generation lightweight structural applications.
Keywords: functionally graded composites, polymer composites, lightweight structures, multi-objective optimization, Pareto front.
D Sai Ganesh, S. N. Padhi. Multi-Objective Optimization of Polymer-Based Functionally Graded Composites for Lightweight Structures. Journal of Polymer & Composites. 2026; 14(02):-.
D Sai Ganesh, S. N. Padhi. Multi-Objective Optimization of Polymer-Based Functionally Graded Composites for Lightweight Structures. Journal of Polymer & Composites. 2026; 14(02):-. Available from: https://journals.stmjournals.com/jopc/article=2026/view=243647
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Journal of Polymer & Composites
| Volume | 14 |
| 02 | |
| Received | 28/10/2025 |
| Accepted | 25/11/2025 |
| Published | 13/05/2026 |
| Publication Time | 197 Days |
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