A physics-informed neural network for modeling fracture without gradient damage: formulation, application, and assessment
Aditya Konale, Vikas Srivastava

TL;DR
This paper develops a meshless physics-informed neural network (PINN) framework for modeling fracture in elastomers under large deformation without using gradient damage, validated against FEM benchmarks and offering a simplified approach.
Contribution
It introduces a novel PINN-based fracture modeling method that does not rely on gradient damage, simplifying computational complexity and broadening applicability.
Findings
PINNs can accurately predict crack paths without gradient damage.
Crack predictions are insensitive to collocation point distribution.
The method performs well across various defect configurations.
Abstract
Accurate computational modeling of damage and fracture remains a central challenge in solid mechanics. The finite element method (FEM) is widely used for numerical modeling of fracture problems; however, classical damage models without gradient regularization yield mesh-dependent and usually inaccurate predictions. The use of gradient damage with FEM improves numerical robustness but introduces significant mathematical and numerical implementation complexities. Physics-informed neural networks (PINNs) can encode the governing partial differential equations, boundary conditions, and constitutive models into the loss functions, offering a new method for fracture modeling. Prior applications of PINNs have been limited to small-strain problems and have incorporated gradient damage formulation without a critical evaluation of its necessity. Since PINNs in their basic form are meshless, this…
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