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Data-driven rate-dependent fracture mechanics

Pietro Carrara, M. Ortíz, Laura De Lorenzis

2021Journal of the Mechanics and Physics of Solids33 citationsDOIOpen Access PDF

Abstract

We extend the model-free data-driven paradigm for rate-independent fracture mechanics proposed in Carrara et al. (2020), to rate-dependent fracture and sub-critical fatigue. The problem is formulated by combining the balance governing equations stemming from variational principles with a set of data points that encodes the fracture constitutive behavior of the material. The solution is found as the data point that best satisfies the meta-stability condition as given by the variational procedure and following a distance minimization approach based on closest-point-projection. The approach is tested on different setups adopting different types of rate-dependent fracture and fatigue models affected or not by white noise.

Topics & Concepts

Fracture (geology)Fracture mechanicsPoint (geometry)Stability (learning theory)MathematicsData setMinificationSet (abstract data type)Applied mathematicsMathematical analysisComputer scienceMechanicsMaterials sciencePhysicsMathematical optimizationGeometryThermodynamicsStatisticsMachine learningComposite materialProgramming languageModel Reduction and Neural NetworksFatigue and fracture mechanicsNumerical methods in engineering
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