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AI-Based Prediction and Numerical Analysis of Mechanical and Microstructural Parameters of Carbon Fiber Reinforced 3D Printed Composites (2025-12)

10.1016/j.mtcomm.2025.114566

 Eisazadeh Hamid, Chatroudi Narges, Alizadeh Roozbeh
Journal Article - Materials Today Communications, No. 114566

Abstract

This study introduces a hybrid CNN-DNN-ensemble FEA framework for predicting mechanical and microstructural properties of 3D-printed carbon fiber-reinforced thermoplastic (CFRTP) composites via synthetic data generation. Representative volume elements (RVEs) with randomized fiber positions/orientations (volume fraction: 10–30%) and porosity (<5%) were created using DCGANs trained on CT datasets. Synthetic RVEs were meshed and subjected to uniaxial tensile loading in ABAQUS/COMSOL, yielding mean tensile strength of 582.4 MPa and elastic modulus of 48.2 GPa. Microstructural features (porosity, fiber orientation tensors, voids) were extracted via CNN-based segmentation and used in multitask DNNs enhanced with CNNs, Random Forest, and XGBoost; physics-informed regularization enforced constitutive laws. Multitask DNN and ensemble predictions achieved R² > 0.989, RMSE < 6.27 MPa, and errors < 2.1% against FEA for mechanical properties; microstructural errors were < 3.2%. SHAP analysis identified fiber volume fraction (importance: 0.314) as the key driver of tensile strength. Parametric studies revealed optimal fiber volume fraction (~60%) and alignment (<15°), with multitask DNN–FEA discrepancies < 2.4%. ASTM D3039 validation showed deviations < 1.1% (strength) and < 0.7% (modulus). This framework addresses data scarcity in additive manufacturing, enabling rapid, physics-constrained multiscale analysis for aerospace and automotive design optimization.

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BibTeX
@article{eisa_chat_aliz.2025.ABPaNAoMaMPoCFR3PC,
  author            = "Hamid Eisazadeh and Narges Hosseini Chatroudi and Roozbeh Alizadeh",
  title             = "AI-Based Prediction and Numerical Analysis of Mechanical and Microstructural Parameters of Carbon Fiber Reinforced 3D Printed Composites",
  doi               = "10.1016/j.mtcomm.2025.114566",
  year              = "2025",
  journal           = "Materials Today Communications",
  pages             = "114566",
}
Formatted Citation

H. Eisazadeh, N. H. Chatroudi and R. Alizadeh, “AI-Based Prediction and Numerical Analysis of Mechanical and Microstructural Parameters of Carbon Fiber Reinforced 3D Printed Composites”, Materials Today Communications, p. 114566, 2025, doi: 10.1016/j.mtcomm.2025.114566.

Eisazadeh, Hamid, Narges Hosseini Chatroudi, and Roozbeh Alizadeh. “AI-Based Prediction and Numerical Analysis of Mechanical and Microstructural Parameters of Carbon Fiber Reinforced 3D Printed Composites”. Materials Today Communications, 2025, 114566. https://doi.org/10.1016/j.mtcomm.2025.114566.