Publication | Closed Access
CNN-Based Surrogate for the Phase Field Damage Model: Generalization across Microstructure Parameters for Composite Materials
10
Citations
31
References
2023
Year
Convolutional Neural NetworkEngineeringMachine LearningMultiscale MechanicsMechanical EngineeringFracture ModelingMechanics ModelingDamage MechanismImage AnalysisComputational ImagingDeformation ModelingMaterials SciencePhase Field ModelCnn-based SurrogateMaterial MechanicsDeep LearningMicrostructure ParametersComposite MaterialsMaterial ModelingPeak LoadConstitutive ModelingDamage EvolutionMechanics Of MaterialsMultiscale Modeling
We investigate the generalization of a convolutional neural network (CNN)-based surrogate for the phase field model in predicting both damage and peak load under uniaxial tension, given the two-dimensional (2D) microstructure image of a unidirectional fiber–reinforced composite. We first discuss the phase field model and the numerical procedure to generate training and test data from synthetic microstructures with different volume fractions and fiber radiuses. We next present a two-stage approach for predicting peak load, achieved by first transforming a given fiber-encoded microstructure image to a continuous damage field; and second, predicting peak load from the damage field. A key finding is that the direct approach for predicting peak load from the microstructure image using a standard regression model fails to generalize. Instead, the damage field, even if imperfectly predicted, provides valuable cues for the CNN in generalizing across new microstructures within the range of parameters used in training. We describe several case studies to demonstrate the capability of the surrogate model to predict damage and peak load, and to interpolate over fiber radiuses and volume fractions.
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