A Regularized Ensemble Kalman Filter for Stochastic Phase Field Models of Brittle Fracture
Lucas Hermann, Ralf J\"anicke, Knut Andreas Meyer, Ulrich R\"omer

TL;DR
This paper introduces a Bayesian ensemble Kalman filter approach with phase-field regularization for updating stochastic fracture models using sensor data, improving crack prediction accuracy in brittle fracture simulations.
Contribution
It presents a novel regularized ensemble Kalman filter method that updates the entire model state, including phase-field and displacements, based on sensor data, enhancing fracture modeling accuracy.
Findings
The method accurately updates the model state in 1D and 2D examples.
The approach effectively infers the phase-field from displacement data.
Regularization ensures model-consistent state updates.
Abstract
The phase-field approach to brittle fracture provides a continuum framework for modeling crack initiation and propagation without explicit representation of discrete crack surfaces, provided the spatial discretization is fine enough to resolve the regularization length scale. However, uncertain local material parameters due to material defects can strongly influence simulation results, such as crack paths and remaining structural strength. At the same time, the ability to continuously monitor structures using sensors allows complementing modeling predictions with, e.g., displacement measurements. In this contribution, we connect these two complementary sources of information and present a Bayesian inference procedure that allows updating the current model state with incoming sensor data. We construct a Bayesian prior for the model state (both displacements and phase-field) and employ an…
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Taxonomy
TopicsNumerical methods in engineering · Numerical methods in inverse problems · Ultrasonics and Acoustic Wave Propagation
