TY - JOUR
T1 - Sustainable manufacturing of FDM-manufactured composite impellers using hybrid machine learning and simulation-based optimization
AU - Raja, Subramani
AU - Iliyas, Ahamed Jalaludeen Mohammad
AU - Vishnu, Paneer Selvam
AU - Rajan, Amaladas John
AU - Rusho, Maher Ali
AU - Refaai, Mohamad Reda
AU - Adebimpe, Oluseye Adewale
N1 - Publisher Copyright:
© 2025 Author(s).
PY - 2025
Y1 - 2025
N2 - Conventional optimization of fused deposition modeling (FDM) often relies on trial-and-error or heuristic approaches, which lack scalability and precision, especially for complex geometries such as impellers. While prior studies have integrated artificial intelligence (AI) or multi-criteria decision-making (MCDM) techniques for process optimization, their combined application remains limited, particularly in scenarios that prioritize energy-efficient and sustainable manufacturing. This study introduces a novel hybrid AI-MCDM framework for the multi-objective optimization of FDM-printed composite impellers, integrating mechanical performance, energy consumption, and material utilization within a unified decision-making model. A key feature of the approach is the real-time tracking of energy usage, enabling dynamic evaluation of process efficiency. Experimental validation demonstrates a 7% enhancement in tensile strength, a 25% reduction in energy consumption, and a 30% decrease in material wastage compared to baseline configurations. These results underscore the potential of AI-driven simulation and optimization frameworks to support sustainable additive manufacturing, with significant implications for aerospace, biomedical, and energy sector applications.
AB - Conventional optimization of fused deposition modeling (FDM) often relies on trial-and-error or heuristic approaches, which lack scalability and precision, especially for complex geometries such as impellers. While prior studies have integrated artificial intelligence (AI) or multi-criteria decision-making (MCDM) techniques for process optimization, their combined application remains limited, particularly in scenarios that prioritize energy-efficient and sustainable manufacturing. This study introduces a novel hybrid AI-MCDM framework for the multi-objective optimization of FDM-printed composite impellers, integrating mechanical performance, energy consumption, and material utilization within a unified decision-making model. A key feature of the approach is the real-time tracking of energy usage, enabling dynamic evaluation of process efficiency. Experimental validation demonstrates a 7% enhancement in tensile strength, a 25% reduction in energy consumption, and a 30% decrease in material wastage compared to baseline configurations. These results underscore the potential of AI-driven simulation and optimization frameworks to support sustainable additive manufacturing, with significant implications for aerospace, biomedical, and energy sector applications.
KW - Fused deposition modeling
KW - Machine learning
KW - Mechanical characterization
KW - Multi-criteria decision-making
KW - Optimization algorithms
KW - Rapid prototyping
KW - SDG Goals
KW - Sustainable manufacturing
UR - https://www.scopus.com/pages/publications/105013096290
U2 - 10.36922/MSAM025200033
DO - 10.36922/MSAM025200033
M3 - Article
AN - SCOPUS:105013096290
SN - 2810-9635
VL - 4
JO - Materials Science in Additive Manufacturing
JF - Materials Science in Additive Manufacturing
IS - 3
M1 - 025200033
ER -