Publication | Closed Access
Exploring Elastoplastic Constitutive Law of Microstructured Materials Through Artificial Neural Network—A Mechanistic-Based Data-Driven Approach
63
Citations
27
References
2020
Year
Artificial IntelligenceEngineeringMachine LearningMechanical EngineeringStructural OptimizationFracture ModelingMechanics ModelingElastoplastic Constitutive LawMechanicsPlasticity TheoryDeformation ModelingMaterial NonlinearitiesMaterials ScienceMicrostructured MaterialsMechanical ModelingSolid MechanicsMaterial MechanicsPlasticityMechanical DeformationDynamic Constitutive BehaviorMechanical PropertiesCivil EngineeringConstitutive ModelingStructural MechanicsMechanics Of Materials
Abstract In this paper, a data-driven approach for constructing elastoplastic constitutive law of microstructured materials is proposed by combining the insights from plasticity theory and the tools of artificial intelligence (i.e., constructing yielding function through ANN) to reduce the required amount of data for machine learning. Illustrative examples show that the constitutive laws constructed by the present approach can be used to solve the boundary value problems (BVPs) involving elastoplastic materials with microstructures under complex loading paths (e.g., cyclic/reverse loading) effectively. The limitation of the proposed approach is also discussed.
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