Phase-field modeling of fracture with physics-informed deep learning
DOI10.1016/j.cma.2024.117104MaRDI QIDQ6588261
Laura De Lorenzis, Siddhartha Mishra, M. Manav, Roberto Molinaro
Publication date: 15 August 2024
Published in: Computer Methods in Applied Mechanics and Engineering (Search for Journal in Brave)
non-convex optimizationcrack nucleationcrack propagationphase-field fracturedeep Ritz methodphysics-informed machine learning
Brittle fracture (74R10) Dynamics of phase boundaries in solids (74N20) Spectral, collocation and related methods for initial value and initial-boundary value problems involving PDEs (65M70) Numerical and other methods in solid mechanics (74S99) Mathematical modeling or simulation for problems pertaining to mechanics of deformable solids (74-10)
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