TY - JOUR
T1 - Advancements in Physics-Informed Neural Networks for Laminated Composites
T2 - A Comprehensive Review
AU - Khalid, Salman
AU - Yazdani, Muhammad Haris
AU - Azad, Muhammad Muzammil
AU - Elahi, Muhammad Umar
AU - Raouf, Izaz
AU - Kim, Heung Soo
N1 - Publisher Copyright:
© 2024 by the authors.
PY - 2025/1
Y1 - 2025/1
N2 - Physics-Informed Neural Networks (PINNs) integrate physics principles with machine learning, offering innovative solutions for complex modeling challenges. Laminated composites, characterized by their anisotropic behavior, multi-layered structures, and intricate interlayer interactions, pose significant challenges for traditional computational methods. PINNs address these issues by embedding governing physical laws directly into neural network architectures, enabling efficient and accurate modeling. This review provides a comprehensive overview of PINNs applied to laminated composites, highlighting advanced methodologies such as hybrid PINNs, k-space PINNs, Theory-Constrained PINNs, optimal PINNs, and disjointed PINNs. Key applications, including structural health monitoring (SHM), structural analysis, stress-strain and failure analysis, and multi-scale modeling, are explored to illustrate how PINNs optimize material configurations and enhance structural reliability. Additionally, this review examines the challenges associated with deploying PINNs and identifies future directions to further advance their capabilities. By bridging the gap between classical physics-based models and data-driven techniques, this review advances the understanding of PINN methodologies for laminated composites and underscores their transformative role in addressing modeling complexities and solving real-world problems.
AB - Physics-Informed Neural Networks (PINNs) integrate physics principles with machine learning, offering innovative solutions for complex modeling challenges. Laminated composites, characterized by their anisotropic behavior, multi-layered structures, and intricate interlayer interactions, pose significant challenges for traditional computational methods. PINNs address these issues by embedding governing physical laws directly into neural network architectures, enabling efficient and accurate modeling. This review provides a comprehensive overview of PINNs applied to laminated composites, highlighting advanced methodologies such as hybrid PINNs, k-space PINNs, Theory-Constrained PINNs, optimal PINNs, and disjointed PINNs. Key applications, including structural health monitoring (SHM), structural analysis, stress-strain and failure analysis, and multi-scale modeling, are explored to illustrate how PINNs optimize material configurations and enhance structural reliability. Additionally, this review examines the challenges associated with deploying PINNs and identifies future directions to further advance their capabilities. By bridging the gap between classical physics-based models and data-driven techniques, this review advances the understanding of PINN methodologies for laminated composites and underscores their transformative role in addressing modeling complexities and solving real-world problems.
KW - composite material optimization
KW - laminated composites
KW - multi-scale modeling
KW - physics-informed neural networks
KW - structural analysis
KW - structural health monitoring
UR - http://www.scopus.com/inward/record.url?scp=85214485467&partnerID=8YFLogxK
U2 - 10.3390/math13010017
DO - 10.3390/math13010017
M3 - Review article
AN - SCOPUS:85214485467
SN - 2227-7390
VL - 13
JO - Mathematics
JF - Mathematics
IS - 1
M1 - 17
ER -