Paper ID: 2501.00016 • Published Dec 15, 2024
Predicting Crack Nucleation and Propagation in Brittle Materials Using Deep Operator Networks with Diverse Trunk Architectures
TL;DR
Get AI-generated summaries with premium
Get AI-generated summaries with premium
Phase-field modeling reformulates fracture problems as energy minimization
problems and enables a comprehensive characterization of the fracture process,
including crack nucleation, propagation, merging, and branching, without
relying on ad-hoc assumptions. However, the numerical solution of phase-field
fracture problems is characterized by a high computational cost. To address
this challenge, in this paper, we employ a deep neural operator (DeepONet)
consisting of a branch network and a trunk network to solve brittle fracture
problems. We explore three distinct approaches that vary in their trunk network
configurations. In the first approach, we demonstrate the effectiveness of a
two-step DeepONet, which results in a simplification of the learning task. In
the second approach, we employ a physics-informed DeepONet, whereby the
mathematical expression of the energy is integrated into the trunk network's
loss to enforce physical consistency. The integration of physics also results
in a substantially smaller data size needed for training. In the third
approach, we replace the neural network in the trunk with a Kolmogorov-Arnold
Network and train it without the physics loss. Using these methods, we model
crack nucleation in a one-dimensional homogeneous bar under prescribed end
displacements, as well as crack propagation and branching in single
edge-notched specimens with varying notch lengths subjected to tensile and
shear loading. We show that the networks predict the solution fields
accurately, and the error in the predicted fields is localized near the crack.