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Crack path predictions in heterogeneous media by machine learning
M. Worthington,
H. B. Chew
Aerospace Engineering
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Keyphrases
Heterogeneous Media
100%
Artificial Neural Network
100%
Machine Learning
100%
Crack Path Prediction
100%
Crack Path
75%
Crack Tip
50%
Crack Pattern
50%
Crack Growth
50%
Micromechanics
25%
Damage Zone
25%
Stress Field
25%
Initial Voids
25%
Fracture Process
25%
Size Scaling
25%
By Design
25%
Structural Heterogeneity
25%
Steady-state Crack Growth
25%
Ductile Fracture
25%
Growth Sequence
25%
Defect Distribution
25%
Process Zone
25%
Effective Fracture Toughness
25%
Crack Advance
25%
Zone Diameter
25%
Neural Network Architecture
25%
Complex Crack
25%
Primary Cracks
25%
Pre-existing Void
25%
Ductile Fracture Model
25%
Void Defect
25%
Growth Mechanics
25%
Engineering
Crack Path
100%
Learning System
100%
Crack Growth
60%
Artificial Neural Network
60%
Crack Tip
40%
Ductile Fracture
40%
Damage Zone
20%
Stress Field
20%
Micromechanics
20%
Size Scale
20%
Process Zone
20%
Multiplicity
20%
Crack Advance
20%
Neural Network Architecture
20%
Primary Crack
20%
Fracture Strength
20%
Material Science
Crack Growth
100%
Crack Tip
66%
Ductile Fracture
66%
Micromechanics
33%
Fracture Toughness
33%
Stress Field
33%